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Comparing Treatment Options for Urea Cycle Disorders

, MD, , ScD, , PhD, , PhD, MHS, JD, , DrPH, , MPH, CCRP, , PhD, , , BSN, and , MD.

Author Information and Affiliations

Structured Abstract

Background:

Urea cycle disorders (UCDs) are rare genetic metabolic disorders resulting in deficiencies in liver enzymes required to detoxify ammonia. UCDs cause brain damage, cognitive delays, and death. There are 2 major treatment options for UCDs: (1) medical management (MM) with diet and medications and (2) liver transplantation (LT). Evidence comparing the outcomes of MM vs LT is sparse. Additionally, no research has been conducted on how families of patients with UCD choose between MM and LT.

Objectives

  • Aim 1: To study 2 UCD patient cohorts, 1 treated with MM and the other treated by LT, comparing survival rate, neurocognitive function, and patient-reported quality of life (QOL).
  • Aim 2: To examine, through a representative sample of patient families and their providers, how UCD treatment decisions are made, describing the factors that influence a family's decision to continue conservative MM or proceed to an LT.
  • Aim 3: To develop a strategy to disseminate the study findings from aim 1 that align with the decision-making process illustrated through aim 2 and that is responsive to the expressed needs of patients with UCDs and their families.

Methods:

We used a mixed-method comparative cohort study design using quantitative research methods in aim 1 and qualitative research methods in aim 2. Aim 1 data for MM and LT comparison were obtained primarily from the UCD Consortium natural history study. Eligible participants included neonatal-onset patients with LT-qualifying UCD subtypes. To maintain comparability and temporal alignment, we assigned an index age in the MM group that was comparable with the transplant age in the LT group. Data analyses relied on causal inference methods, covariate balanced propensity scoring, and risk-set matching to identify comparable MM and LT groups. These analyses estimated the average treatment effect in the treated (ATT) for survival, QOL, and neuropsychological development. In aim 2, individual and focus group interviews with caregivers and providers were used to determine drivers of treatment choice. Thematic content and framework analysis techniques were used to identify patterns within the data, explore relationships between key themes, and build a framework describing how UCD treatment decisions are reached. For aim 3, we developed a dissemination strategy after reviewing the aim 2 results and considering points to be emphasized for patients, families, and providers.

Results

  • Aim 1: Despite selecting 283 participants with neonatal-onset UCDs who we believed to be transplant candidates, severity in the LT cohort was greater than that in the MM cohort, leading to considerable nonoverlap. To provide fair comparisons, analyses were thus restricted to patients of comparable intermediate severity, resulting in the exclusion of up to 41.7% (78/187) of the original sample, depending on the method. The aim 1 results therefore lack the statistical power needed to adequately test our hypotheses; however, they are useful for generating better-informed hypotheses to be evaluated in future research. The main expected advantage of LT was the absence of hyperammonemic events (HAEs) following transplant, whereas the MM group continued to experience HAEs. This benefit came at a price: ~40% of the LT cohort experienced complications, and ~8% to 10% required retransplantation. Causal inference analyses found no comparable LT benefit in survival, patient QOL, or neuropsychological development. However, positive differences between the LT and MM cohorts were consistently observed across different analytical methods in family QOL (3.6-30.3) and in intelligence quotient and global performance scores, especially in older children (7.8-16.7), suggest a potential LT advantage.
  • Aim 2: We elucidated factors influencing treatment choices for families affected by UCD and developed a novel conceptual framework interlinking the factors that together inform each family's perception of the risks and benefits of MM vs LT.
  • Aim 3: Guided by a new understanding of the experience of patients with UCD, we developed a strategy to disseminate the complex evidence produced by this study.

Conclusions:

The aim 1 results confirmed that LT serves as a virtual cure for HAEs in neonatal-onset UCDs. However, this pronounced metabolic effect did not translate into evidence of the expected large posttransplant improvement in outcomes. Nevertheless, there were indications of beneficial effects on family QOL and on cognitive outcomes, including improved effects with earlier age of LT without evidence of increased mortality risk. The aim 2 results provided a clearer understanding of the factors that drive decision-making among UCD caregivers and providers. With an understanding of the aim 1 and 2 results, providers may be better positioned to anticipate and respond to the needs of families affected by UCD.

Limitations:

The aim 1 study sample was limited to comparisons of neonatal survivors of intermediate severity connected to main metabolic centers. Follow-up losses and low rates of participation in neuropsychological testing led to considerable missing data. We cannot rule out potential bias from unknown and potentially unbalanced markers of severity. For aims 2 and 3, caregivers were recruited primarily through a UCD patient advocacy organization and may not represent the perspectives of the broader UCD community, including those of families of deceased children, whom we were unable to interview.

Background

Overview of Urea Cycle Disorders

Urea cycle disorders (UCDs) are a group of rare inherited metabolic disorders caused by deficiencies in any 1 of 8 liver proteins required for ammonia detoxification and urea synthesis.1 Collectively, they result in hyperammonemia, which has devastating effects on the development and function of the central nervous system.2 This can manifest soon after birth (neonatal onset), later in childhood, or even in adulthood.3 The most severely affected patients may not survive infancy despite demanding, intensive, and expensive medical intervention.4,5 The classification, abbreviations, and estimated prevalence of the various UCD types are shown below. As a group, the combined prevalence is approximately 1:35 000.6

  • N-Acetylglutamate synthase deficiency (<1:2 000 000)
  • Carbamoyl phosphate synthetase I deficiency (CPS1D) (1:1 300 000)
  • Ornithine transcarbamylase deficiency (OTCD) (1:56 100)
  • Argininosuccinate synthetase deficiency (ASSD, causing citrullinemia) (1:250 000)
  • Argininosuccinate lyase deficiency (ASLD, causing argininosuccinic aciduria) (1:218 750)
  • Arginase deficiency (causing argininemia) (1:950 000)
  • Hyperornithinemia-hyperammonemia-homocitrullinuria (HHH) syndrome (or mitochondrial ornithine carrier deficiency-ornithine transporter) (<1:2 000 000)
  • Citrullinemia type II (mitochondrial aspartate/glutamate carrier deficiency-citrin) (<1:2 000 000, 1:21 000 in Japanese origin)

The age of onset generally correlates with the degree of residual enzyme activity.7 Patients with absent UCD enzyme activity present invariably in the newborn period8-10 because ammonia begins accumulating immediately once the patient is ex utero. Affected individuals who present with hyperammonemia in the newborn period are described as having “neonatal-onset UCD,” recognized as the most severe form of UCDs. However, this term is also applied to describe individuals who are diagnosed via enzymatic assays or DNA sequencing of UCD genes and are shown to have absent enzyme activity or DNA mutations that would result in an absent enzyme. As a result, an affected individual diagnosed prenatally may be described as having neonatal-onset UCD but may have avoided neonatal hyperammonemia because treatment was started soon after birth. Patients with neonatal-onset UCDs all require chronic therapy with both stringent protein restriction and high doses of ammonia scavengers, but they may nevertheless present with multiple episodes of hyperammonemia and may not survive infancy. Not surprisingly, those with neonatal-onset UCDs have the worst outcomes.11

Patients with reduced but not absent UCD enzyme activity often escape presentation in the newborn period. Instead, they may present months to years later when a confluence of environmental factors such as illness, excessive protein intake, stress, and medication use result in their limited UCD enzyme activity being overwhelmed, thereby precipitating hyperammonemia. These patients are often described as having “late-onset UCD” or “nonneonatal UCD.” This is a much more heterogeneous group of patients, as the severity of the disorder inversely correlates with the amount of residual UCD enzyme activity. Affected patients may require differing degrees of chronic therapy with gentle-to-moderate dietary protein restriction and/or ammonia scavengers. Although their outcomes are better than those in the neonatal-onset UCD group,11 patients with late-onset UCDs are still at risk of life-threatening hyperammonemic episodes.

Some patients ascertained by newborn screening or by family history are reported to be entirely asymptomatic and may not be at risk of hyperammonemia. However, even those who report being asymptomatic may have subtle changes in frontal white matter microstructure and subtle functional deficits.12

Hyperammonemia is a common feature of all UCDs. However, each type of UCD has unique secondary biochemical and phenotypic characteristics. In this project, we studied 4 of the most common UCDs: CPS1D, OTCD, ASSD, and ASLD. CPS1D and OTCD are often referred to as “proximal” UCDs because the metabolic block occurs early in the urea cycle pathway, upstream of citrulline, an amino acid that contains 3 nitrogens. Plasma levels of citrulline are therefore low in CPS1Dand OTCD. On the other hand, ASSD and ASLD are referred to as “distal” UCDs because the deficient enzymes are located in the urea cycle pathway after the production of citrulline. Therefore, plasma citrulline levels are often elevated in distal disorders, and in the case of ASLD, plasma argininosuccinate levels are also elevated. Citrulline and argininosuccinate are both water soluble and are excreted in the urine, thereby providing an additional mechanism for the elimination of nitrogen from the body in the distal UCDs, which does not exist in the proximal UCDs. As a result, plasma ammonia levels are often lower and easier to control in the distal disorders than in the proximal disorders.8 However, neurocognitive outcomes are not better in the distal disorders than in the proximal disorders.8,13 This is hypothesized to be due to the accumulation of the additional urea cycle substrates13,14 or the secondary disruption of other biochemical pathways, such as the nitric oxide pathway.15 These secondary effects are also thought to explain the higher incidence of liver dysfunction and hypertension16 in patients with ASLD. Because the argininosuccinate synthetase and lyase enzymes are expressed in many extrahepatic tissues, strictly liver-directed therapies, such as liver transplant, may prevent hyperammonemia but do not fully correct the biochemical abnormalities observed in ASSD and ASLD.15,17

Impact of Hyperammonemia on the Health of Patients With UCDs

Despite significant improvements in medical management, infants, children, and adults with UCDs remain at high risk of early and recurrent brain damage from hyperammonemia.11,18 The insult to the brain from high blood ammonia levels manifests as cytotoxic brain edema, which can frequently lead to intellectual and developmental disabilities.2,19-21 Moreover, clinical hyperammonemia recurs at variable intervals, increasing the cumulative damage to the brain and the chance of irreversible coma and death during hyperammonemia due to brain herniation. Because hyperammonemia can occur at any time, an increasing number of patients with UCDs who experience recurrent hyperammonemia have undergone orthotopic liver transplantation (LT), a curative procedure for hyperammonemia.22-24 However, LT is a complicated surgical procedure that carries a significant risk of both mortality and morbidity. Patients, families, and their providers therefore face a difficult dilemma: Should patients with UCDs be managed conservatively with diet, medications, and amino acid supplements (medical management [MM]), or should they consider undergoing LT?

Gap of Evidence With Respect to Best Treatment for Patients With UCDs

There are 2 major options in the management of severe UCDs. One is conventional conservative MM, and the second is LT. The goal of MM is to prevent or reverse the accumulation of toxic ammonia in the body. This can be accomplished by a combination of the following interventions: (1) reducing protein catabolism by providing a high caloric intake,25,26 (2) reducing dietary protein intake,25,26 and (3) providing substrates for alternate pathways of nitrogen excretion.18,25 In milder cases, the first 2 nutritional interventions may be sufficient. In severe cases, all these approaches may need to be employed plus the use of hemodialysis to remove nitrogen during life-threatening hyperammonemic crises.25,27 LT represents a curative approach for hyperammonemia by replacing the liver with the defective gene with a normal liver.25,27 This approach, however, carries considerable risks.

Conservative Management and Outcome

The primary source of ammonia is protein breakdown; therefore, the cornerstone of MM for chronic UCD is dietary protein restriction. Because of the limited daily protein allowance, some physicians administer amino acids not made by the human body, known as the essential amino acids (EAAs). However, there is no strong consensus for EAA use,5,25,28 and outcomes have not been studied.

The most important medical advances in the acute and chronic treatment of UCDs were the development of substrates to promote alternative pathways of waste nitrogen excretion.18,29 Sodium benzoate combines with the amino acid glycine to form hippurate, which can be readily excreted in the urine, removing 1 atom of nitrogen for each molecule of benzoate provided. Sodium phenylacetate combines with glutamine to form phenylacetylglutamine, which is also readily excreted, removing 2 atoms of nitrogen for each molecule of phenylacetate. The same phenylacetate pathway is exploited with the administration of sodium phenylbutyrate (Buphenyl) or its prodrug glycerol phenylbutyrate (Ravicti), which both have a much less noxious odor and taste than does phenylacetate itself. Intravenous infusion of combined sodium benzoate and sodium phenylacetate (Ammonul) is now used routinely for the treatment of acute hyperammonemia, whereas sodium benzoate, sodium phenylbutyrate, or glycerol phenylbutyrate is commonly used for chronic, long-term oral administration.25,30 With regard to outcomes, no oral medication has been shown to be superior,31 and all of these treatments unfortunately carry risks of adverse reactions. Dietary protein restriction combined with the employment of substrates to promote alternative pathways of waste nitrogen excretion is the most effective medical treatment for UCDs.18,29

The general consensus is that the development of alternative pathway therapies and their subsequent widespread availability by the mid-1990s has resulted in decreased mortality and morbidity from these disorders.18,29 However, even this is in dispute: The results from a meta-analysis of UCD articles published between 1978 and December 22, 2014 (Burgard et al4), reported no improvement in survival in more than 3 decades. Outcomes in patients with neonatal-onset UCDs are typically the worst; 24% to 50% of these patients have been reported to succumb to hyperammonemia.4,32 Additionally, most survivors show significant neurodevelopmental disabilities, often correlated with the severity of the enzyme deficiency. In a longitudinal natural history study (LS) performed by our NIH-funded Urea Cycle Disorders Consortium (UCDC), a member of the Rare Diseases Clinical Research Network (RDCRN),8 the proportion of patients with a poor cognitive outcome (intelligence quotient [IQ]/developmental quotient <70) was high, ranging from 47% to 68% in the various UCDs. This was observed in patients <4 and ≥4 years of age. Poor cognitive outcome was not fully explained by age of onset (<4 vs ≥4 years), peak ammonia level, or duration of the initial admission. At present, the variables associated with a poorer cognitive outcome in patients with UCDs who are managed medically are not well understood, making progress in improving this approach difficult. Duration of hyperammonemic coma,2 peak ammonia level,33 and the number of episodes of hyperammonemia33 have all been posited to correlate with cognitive outcome, but these studies were uncontrolled and oversimplified neurocognitive measures.

Although hyperammonemia appears to be the most important contributor to neurological injury, more recent evidence points to the effect of secondary toxic metabolites, which accumulate in specific UCD subtypes, on cognitive outcomes.14 Numerous studies demonstrate that the biomarkers glutamine,34 arginine,14 citrulline,14 and nitric oxide16 are also important correlates of neurocognitive functioning. These biomarkers may in part explain differences in neurocognitive outcomes between UCD subtypes.8,14

LT and Outcome

LT was initiated in the early 1990s before alternate pathway medical therapy was widely available.22-24 There were anecdotal case reports of LT in 4 of the UCDs (CPS1D, OTCD, ASSD, and ASLD).22,23,35 A larger survey of 16 US patients who had received LTs from 4 major transplant centers found that 14 of these patients had survived at least 1 to 6 years posttransplantatation.24 Their neurological status posttransplantation was in most cases moderately to severely impaired and correlated closely with their condition before transplantation. However, the quality of their lives seemed to have improved. Subsequently, to determine whether aggressive medical therapy could improve the outcome of severe neonatal-onset UCD, 5 such patients were monitored at Baylor College of Medicine before and after LT, including 2 male patients with OTCD, 2 male patients with CPS1D, and 1 female patient with OTCD and intractable hyperammonemia.36 Three of these infants had serial developmental testing (Griffiths scale) before and after transplantation. It was found that their pretransplantation overall developmental scales (51, 86, and 56, respectively) were stabilized posttransplantation (70-83, 80-76, and 51-47, respectively, at 2 subsequent evaluations). Therefore, the authors recommended that early transplantation be considered the treatment of choice in these severely affected infants.

As a result of the above-mentioned early successes in patients with UCDs, LT is now frequently performed to treat UCDs. A retrospective analysis from the United Network for Organ Sharing (UNOS) that included 186 patients with UCDs who underwent LT37 showed an increased frequency of LT for UCDs and organic acidemia over the last decade, with 5-year survival rates of 88% to 99% depending on age. A more recent review of the UNOS database38 identified 265 pediatric and 13 adult patients who underwent an LT for a UCD between 1987 and 2010. The majority (68%) of these patients were transplanted before age 5 years. Overall 1-, 5-, and 10-year survival rates of 93%, 89%, and 87%, respectively, were observed. Univariate and multivariate risk factor analyses did not reveal any significant demographic, anthropometric, or laboratory characteristics of donors or recipients that were predictive of posttransplant death or graft loss.

Transplanted livers may come from living related or deceased donors. Pediatric patients with UCDs may also be eligible for split LT, which involves the division of the donor liver from a deceased adult between a pediatric recipient and an adult recipient to maximize the benefit of each available donor organ. In the aforementioned recent UNOS review, approximately 95% of patients received livers from deceased donors,37,38 likely primarily because of the automatic high-priority status received by affected children with UCD. Among deceased-donor-liver recipients with UCD, only 15% received a split liver. One analysis suggested that posttransplant mortality was higher with split LT.37

Unfortunately, children who undergo transplantation typically continue to have cognitive and motor delays not associated with age or weight at transplant, sex, ethnicity, liver graft type, or the hospital where the transplant occurred. No prospective studies of LT vs MM in UCDs have been performed. A 2017 retrospective review of data collected from questionnaires sent to 928 Japanese institutions39 identified 177 patients with a UCD diagnosed between January 1999 and March 2009, including 42 recipients of living-donor LTs. Among patients for whom the maximum ammonia concentration (MAC) was ≥300 μmol/L and full-scale IQ (FSIQ) scores were available, 11 of 21 LT recipients had FSIQ scores ≥70 (which the authors report as “normal”), whereas only 11 of 54 MM patients had FSIQ scores ≥70 (P = .08). The authors concluded that LT may prevent further neurodevelopmental complications in children with a MAC ≥300 μmol/L. In a separate analysis employing data from the same questionnaire,40 these authors report that specifically among patients with neonatal-onset UCDs and a MAC ≥360 μmol/L, 8 of 18 LT patients had FSIQ scores ≥70, whereas among those receiving MM, only 4 of 28 patients had FSIQ scores ≥70. Additionally, among patients with neonatal-onset UCDs and a MAC <360 μmol/L, 5 of 5 patients who received LT had FSIQ scores ≥70, whereas among the patients receiving MM, only 2 of 7 patients had FSIQ scores ≥70 (P = .013). The authors conclude that a MAC ≥360 μmol/L is a marker of poor neurodevelopmental outcomes, that patients with neonatal-onset UCDs and a MAC ≥300 μmol/L at onset should undergo LT, and that even patients with neonatal-onset UCDs with a MAC <300 μmol/L should undergo LT to protect the brain.

Process of Making UCD Treatment Decisions

Patients UCDs who receive MM are always at elevated risk for serious disability or death, but this risk is not easily quantifiable and may change at various times in their lives.41 This ambiguity makes treatment decisions, such as if or when to pursue a high-risk procedure like LT, particularly challenging for the caregivers of children with UCDs. In other medical conditions, the decision to perform transplantation is often made because organ function has failed, and the choice is one of life or death. However, for patients with UCDs, the decision can be more complex, as outcomes from medical therapy vary widely and because transplantation is ideally initiated when patients are stable rather than critically ill. As described previously, there is also limited empirical evidence to support clinical guidance on treatment alternatives for patients with UCDs. This exposes these important treatment decisions to high levels of uncertainty and personal judgment, forcing patients and their families to pursue intervention in the absence of clear, evidence-based information. Despite the importance of, and complexity surrounding, the decision to continue MM or consider LT, no research has been conducted on how families of patients with UCDs make these treatment choices.

Gaps in Knowledge Addressed by This Project

The objectives of this study were to provide patients with UCDs and their families with evidence-based information that is currently lacking regarding management alternatives (conservative MM vs LT), including answers to the following questions:

  • What is the risk of mortality and morbidity in the 2 approaches?
  • What can patients expect in terms of cognitive development and/or other developmental outcomes?
  • What are the potential pros and cons in terms of considerations for quality of life (QOL)?

To maximize the utility of the information produced from this comparative effectiveness analysis, we integrated a qualitative component that examined the decision-making experience of families affected by UCDs to identify key factors that families consider in evaluating and reaching a treatment choice. From information collected directly from families and their providers, we built an original conceptual framework that explores how key factors interrelate to drive treatment decision-making in this population. These important insights into the UCD patient experience informed the efforts of our collaborators, the National Urea Cycle Disorders Foundation (NUCDF) and The George Washington University (GWU), to craft a dissemination strategy for the evidence produced from this study. This carefully developed strategy is both responsive to the expressed needs of patients and their families and aligns with the decision-making process described through the analysis. Our specific aims were as follows:

  • Aim 1: To study 2 UCD patient cohorts, 1 cohort treated with MM and the other treated by LT, comparing survival rate, neurocognitive function, and patient-reported QOL.
  • Aim 2: To examine, through a representative sample of patient families and their providers, how UCD treatment decisions are made, describing the factors that influence a family's decision to continue conservative MM or proceed to an LT.
  • Aim 3: To develop a strategy to disseminate the study findings from aim 1 that align with the decision-making process illustrated through aim 2 and that is responsive to the expressed needs of patients with UCDs and their families.

Participation of Patients and Other Stakeholders

This study used a patient-initiated engagement model, where objectives were developed in direct response to patient-reported concerns. NUCDF is a nonprofit patient advocacy organization dedicated to saving children and adults from the catastrophic effects of UCDs and is a primary resource of information for caregivers. NUCDF proposed the research question and was a key stakeholder and a major player in the engagement and recruitment of patients in this study. Through the patient-powered research team (PPRT), NUCDF proposed and helped develop this patient-centric study protocol. Some of the key roles of the PPRT included the following:

  • Providing patient/family perspectives about study goals and avenues for dissemination
  • Providing patient/family perspectives for improving the implementation and progress of the study to the NUCDF study team
  • Providing feedback regarding logistical considerations and barriers to study participation

The relationship between NUCDF and families affected by UCD was essential for enrollment and study engagement. NUCDF gauged preliminary interest among the UCD patient community and identified approximately 65 families with various levels of access to expert care, disease severity, and transplant status who expressed interest in participating in this study. Throughout the duration of this project, NUCDF ensured that patient perspectives and logistical considerations for the conduct of the study remained a priority. NUCDF was involved in research tool development, including interview and focus group guides, and ensured that questions were patient centered and addressed the issues that mattered most to the UCD community. This helped create a positive participant experience, measured by NUCDF through participant satisfaction surveys, which motivated families to remain engaged in research activities. The NUCDF team served as a resource during analysis, providing context for both qualitative and quantitative data, highlighting potential confounding issues, and discussing analytic solutions. NUCDF informed the development of the dissemination strategy by organizing multiple in-person and web-based caregiver focus group sessions and educating members of the research team on existing information-sharing initiatives. In addition, NUCDF partnered with GWU to develop qualitative interview and focus group guides and was paramount to the development of this study's dissemination strategy.

The innovative patient-initiated engagement model employed in this research study (Figure 1) has transferability to other organizations participating in research that involves patient groups advocating on behalf of families living with a rare disease. NUCDF is strategically focused on UCD research and has worked to create a long-term infrastructure for cooperative collaboration between patients, providers, and researchers that enables patients to more effectively drive the research agenda. This is an especially effective and mutually beneficial model for patient-centered outcomes research in ultrarare disorders with a small number of geographically diverse patients, enabling researchers and patients to partner in the development of new evidence to support improvements in the management of these conditions.

Figure 1. Stakeholder Engagement.

Figure 1

Stakeholder Engagement.

The UCDC42 is part of an NIH-funded RDCRN administered from the Children's National Research Institute at Children's National Hospital. The biostatistician of this project, Robert McCarter, ScD, is also the biostatistician of the UCDC, and Cynthia Le Mons, co-principal investigator (Co-PI) of this project, is also a Co-PI of the UCDC. The UCDC has been in existence for more than 15 years. The largest study in the UCDC portfolio is a natural history observational study called the Longitudinal Study of Urea Cycle Disorders, which has enrolled >800 patients with UCDs whose outcome data were used in this project. The UCDC consists of 16 clinical research sites at major academic institutions, each with a team of physician-scientists, neuropsychologists, nurses, genetic counselors, and other research staff. Of these, 13 sites are in the United States, distributed geographically across the country. The UCDC is primarily funded through an NIH U54 cooperative agreement; therefore, NIH scientific officers also provide input to this consortium. This project was branded as an NIH RDCRN study (protocol #5117), which allowed us to capitalize on existing RDCRN resources for data capture and management and for the data and safety monitoring board. The UCDC PIs, coordinators, and other staff were kept updated on study progress at monthly conference calls. UCDC members were asked to refer possibly eligible patients for enrollment in aims 1 and 2 of this study, and many UCDC members accepted an open invitation to participate in the aim 2 provider interviews and aim 2 and 3 focus groups. This study is a model of 1 federally funded program being leveraged for providing data and resources to make another program successful.

The Studies of Pediatric Liver Transplantation (SPLIT)–Emmes Corporation is a network of pediatric hepatologists, transplant surgeons, research coordinators, research nurses, and other health professionals across the United States working together to advance knowledge in pediatric LT. SPLIT was established in 1995 and has evolved from a research registry into a multifaceted organization focused on improving outcomes for children receiving LT. The mission of SPLIT is to gain new knowledge on pediatric LT through observational and translational research and clinical trials and to improve care delivery by application of new knowledge and by reducing variation in care through identification and dissemination of best practices. SPLIT PIs and statisticians worked with their UCDC counterparts to compare data sets and ascertain any SPLIT participants possibly not enrolled in the UCDC longitudinal study. SPLIT members were encouraged to refer possibly eligible patients with a UCD who had undergone LT to aims 1 and 2 of this study, and SPLIT providers were also invited to participate in the aim 2 interviews and aim 2 and 3 focus groups.

Methods

Study Overview

As summarized in Figure 2, this study was designed to generate empirical evidence to inform and guide the decision between continuing MM and opting for LT. Caregivers agreed that the outcomes of greatest interest were survival rate, neurocognitive function, and QOL (aim 1). Although a randomized controlled trial in UCDs would provide the best evidence, it was not an ethically feasible option to fill the information gap. Instead, a natural history observational trial design was employed, relying on existing historical and concurrently collected data from the UCDC of the RDCRN.

Figure 2. Original Study Design.

Figure 2

Original Study Design.

In addition to a detailed diagnostic and clinical history, the UCDC LS captures data regarding survival, neurocognitive status, and QOL. These data were deidentified and supplemented with data from patients enrolled directly through recruitment efforts at Children's National Health System (CNHS) and NUCDF. The use of data from the LS is permissible per the LS consent form. To study in aim 1 the aforementioned outcomes in the 2 UCD patient cohorts (MM and LT), covariate-balanced propensity score (PS) matching and risk-set (RS) matching were used to reduce treatment selection-driven bias in this nonrandomized study. Aim 2 focused on enhancing the understanding of the decision-making process from the perspective of the patient/caregiver and the medical provider. Aim 3 focused on crafting the message and disseminating the aim 1 and aim 2 results. The study protocol encompassing all 3 aims was approved by the CNHS institutional review board (IRB).

Study Time Frame

This study was activated in March 2016 and closed to enrollment in May 2018 after meeting all recruitment and enrollment milestones.

Aim 1

To study 2 UCD patient cohorts, 1 cohort treated with MM and the other treated by LT, comparing survival rate, neurocognitive function, and patient-reported QOL.

Participants

For aim 1 in the prospective cohort study design, we relied on the merger of uniform historically and prospectively collected data from (1) participants in the largest LS of the natural history of UCDs conducted by the NIH-funded UCDC,42 (2) patients referred by NUCDF, and (3) patients referred by SPLIT. Eligible participants included North Americans with neonatal-onset UCD diagnoses of CPS1D, OTCD, ASSD, or ASLD born primarily after July 1, 1996, the date after which alternative pathway medications became commercially available. Neonatal onset refers to the most severe subgroup of UCD, characterized by the complete absence of enzyme activity, thereby resulting in hyperammonemia in the neonatal period (<29 days of life), unless first ascertained by family history or newborn screening. These conditions often result in recurrent episodes of hyperammonemia and consideration for LT. Access to detailed natural history data provided the means to identify participants who had undergone LT and comparable participants who continued to rely on conventional MM, as well as the information necessary to create essentially unbiased comparisons of outcomes by treatment group.

Recruitment efforts were led by CNHS as the coordinating center for the study and facilitated by the UCDC network and NUCDF. Enrollment in the UCDC LS was initially offered to NUCDF and SPLIT participants who were not already enrolled in order to take advantage of the uniform LS research protocol, especially in capturing neurocognitive function and QOL information. Patients interested in participating in this study but who elected not to enroll in the UCDC LS were afforded similar follow-up options coordinated by experienced neuropsychologists.

Study Outcomes

In order to compare the 2 interventions (MM vs LT), NUCDF and those families receiving care at sites participating in the UCDC developed the primary outcomes representing their chief concerns: (1) survival, (2) neurocognitive development status, and (3) QOL. Because UCDs can prove lethal at any time, families identified survival as a top concern, as well as the cognitive function that is critically important for independence and the ability to realize one's potential. Validated measures already being collected from those participants enrolled in the UCDC LS were used for all participants in this study. These included neuropsychological measures of IQ, executive function, motor function, learning and memory, and mental and emotional/behavioral health outcomes, as well as QOL assessments based on validated instruments, the Pediatric Quality of Life Inventory (PedsQL) and the 36-item Short Form Health Survey (SF-36) (Table 1).

Table 1. Validated Tests and Scales.

Table 1

Validated Tests and Scales.

Sample Size Calculations and Power

PASS 12 (NCSS, LLC60) was used to evaluate statistical power based on a projected sample size of 90 MM and 80 LT participants, in 2-tailed testing at an α = .05. For neurodevelopmental and QOL assessments, the study was considered to provide 80% power to detect a modest 0.4 SD effect size difference between groups, assuming 2 repeated measurements per person correlating at a 70% intraclass correlation coefficient. A 0.4 SD effect size represents a moderate, 6-point score difference considered by colleagues with expertise in neuropsychology to represent a difference that could have clinical implications in standardized neuropsychological scores (mean [SD], 100 [15]). Similar and even smaller QOL differences are detectable, which tend to have lower mean standardized scores (80-87) and similar SDs (13-16). For mortality, assuming the rate in the MM group remained at 28%, the study had 80% power to detect an increase in mortality in the LT group of approximately 60%, which was robust to differences in sample size between 80 and 90 per group. Based on these considerations, the study was well powered to detect a clinically meaningful difference in neurocognitive outcomes and QOL and was adequately powered to detect a moderate difference in mortality between groups.

Data Collection and Sources

Deidentified data from the UCDC LS, including sociodemographic, clinical, laboratory, neuropsychological testing (NPT), QOL assessment, and vital records data, were supplemented with comparable data from participants in this study (PCORI) who were recruited and enrolled through NUCDF and CNHS (Figure 2). We used data from eligible LS participants for analysis, as permissible per the LS consent form. For those patients not enrolled in the LS and only participating in this study, we confirmed eligibility and enrolled participants either in person or via telephone. We then collected both historical and concurrent data, including those obtained from a review of medical records and from patients or their families through standard interviews. The study team administered a QOL assessment by telephone or in person, and a qualified neuropsychologist conducted NPT in the patient's home or in the clinic.

We selected NPT to measure key cognitive outcomes of interest. Study neuropsychologists conducted a battery of tests appropriate for each patient's age-matched norms (Table 1). These tests were the same or overlapped those currently used in the UCDC LS. The study team developed a brief report of the findings, which was delivered to the participant/caregivers shortly after testing.

For the QOL assessments, the PedsQL parent report or parent proxy report to caregivers of participants aged 1 month to 18 years was administered, as well as age-appropriate PedsQL child questionnaires to participants between 13 and 18 years of age. Participants >18 years of age responded to the SF-36v2 questionnaire and the PROMIS® questionnaires. The site neuropsychologist or the site PI reviewed PROMIS questionnaires within 30 days of administration and followed up with the participant and the family as appropriate.

Analytical and Statistical Approaches

To support a fair comparison of the study outcomes of survivorship, QOL, and neuropsychological function, the study relied on 2 analytic approaches to achieve requisite comparability between those who continued to receive MM and those who elected to receive LT. The 2 methods, PS and RS matching, seek to identify and bring into balance characteristics that may influence the outcome assessment and that differ between treatment groups at the time of the treatment decision. The principal differences between these approaches as applied to this study are that (1) PS matching focuses on making summary comparisons between study participants, whereas RS matching makes comparisons at time slices to make full use of the longitudinal data; and (2) RS matching also uses imputation to estimate missing covariate and outcome values, whereas PS matching relies on the last available assessment without imputation.

For PS analysis, we used the approach defined by Imbens and Rubin,61 creating comparable groups based on group member risk factor (covariate) profiles derived from their propensity (probability) to move from conservative MM to LT. First, covariate-balancing PSs were generated using “pscore62 in Stata 15 (StataCorp).63 This approach uses a logistic regression model that predicts treatment assignment (MM vs LT) from sociodemographic characteristics and indicators of UCD severity selected based on prior experience, especially in the UCDC.32,42,64 Severity indicators included UCD type (proximal vs distal [ie, a block in the urea cycle before or after the production of citrulline, respectively]); frequency and severity of hyperammonemic events (HAEs) in terms of ammonia level; and the frequency of extended hospitalizations. Sociodemographic characteristics included the patient's decade of birth and parental level of education. This process was used to achieve basic comparability between the MM and LT groups with covariate balance evaluated using “pstest” in Stata 15.63 Initial covariate balance permitted the assignment of age in the MM group comparable with the age of transplantation in the LT group (here, both ages are referred to as the index age).

Subsequently, more detailed covariable indicators of severity were used to achieve better balance before outcome analysis. The selection of comparable MM and LT groups and subgroups (PS blocks) during the period before the index age followed the procedures outlined in chapter 13 of Imbens and Rubin.61 The selection of covariables began with the choice of main effects, followed by the choice of higher-order and interactive effects based on the change in the diagnostic log-likelihood ratio (dLR) associated with the addition of a term to the logistic regression model estimating the probability of LT. Initially, at each step, the main effect variable with the greatest dLR of at least 1.0 was added to the model until all variables reflecting assessments made before the index age were evaluated. A similar process was used to select the second wave of squared terms and interactions of main effects based on the addition of the term with the highest dLR ≥2.71 to the evolving logistic model.

Finally, the PS was used to construct strata, the number of which is determined by sample size and the heterogeneity of the PSs. The degree of overlap between the MM and LT groups in each PS strata was evaluated by t tests, and participants with nonoverlapping PSs were excluded. These methods were used to achieve greater pre–index age covariate balance in the analysis, comparing outcomes of mortality, QOL, and NPT scores to estimate the average treatment effect in the LT treated (ATT). The degree of similarity between groups was evaluated using χ2 testing for discrete covariables and t tests for comparisons of measures of central tendency in continuous covariables.

In addition to estimating the crude ATT in the common support sample (CSS) based on information available as of the date each person was last seen, the study team employed 1 other method to improve covariate balance in evaluating the risk of mortality and 2 other methods when estimating the ATT in relation to QOL and NPT. For mortality analysis, we used Cox regression in Stata 15 to estimate the PS, index age, and pre–index age frequency of the HAE-adjusted hazard ratio (HR), secondarily also stratifying on PS blocks. For QOL and NPT outcomes,65 we first used the “teffects ra” command in Stata 15 to control for PS when estimating ATT. Second, we used the newly available “kmatch66,67 procedure to implement ridge matching on PS, followed by linear regression analysis to control for index age and age at the time of outcome assessment. The “kmatch” procedure was chosen because it supports both matching and statistical adjustment in the same analysis and because it provides advantages in terms of smaller mean squared errors.

In QOL and NPT analyses, not all patients/families provided assessments of these outcomes. Logistic regression analyses were implemented to evaluate whether those providing and not providing QOL and NPT assessments differed with respect to demographic and UCD severity indicators. The models included the presence/absence of QOL and NPT assessments, study group (MM/LT), and the interaction of these effects. Interactive differences would raise the potential for bias due to missing assessments, while the main effects of missing assessments would affect the generalizability of the results. P values were generated based on χ2 tests of differences in the aforementioned effects.

In addition to the PS method described above, we implemented an alternative way of defining the control group to LT using an RS-matching methodology.68 Recall that in the PS-matching methodology described above, the MM control group includes all those who have not undergone LT as ascertained at the last follow-up date, a time after the matched index date. RS matching defines the control group differently based on the patient's status at index date to avoid possible ascertainment time bias. In our implementation of RS matching, shown in Figure 3, the RS at a given index age included all those who had not undergone LT at that age but could have. Thus, the RS at a given index age included those patients who were alive at index age but either had not undergone LT at last follow-up or who received an LT but at a later age than the index age. Look-back for these patients started at birth and ended at the index age, while follow-up started at the index age and ended at LT or end of follow-up in the database, whichever came first. The control group in this RS included those patients matched to the LT group.

Figure 3. Example of RS Matching.

Figure 3

Example of RS Matching.

Matching at each index date took into account similarity in several characteristics, including important markers of a medical condition's severity and a medical condition's history up to the index age. It exactly matched on whether the UCD sequence variant was proximal or distal, whether the patient had ever been admitted to a hospital from birth to index age, and whether the patient had any record of coma or intracranial pressure from birth to index age. Among this exact match, the selected controls were those most similar to baseline and hospitalization history for HAEs. More specifically, baseline characteristics included the education level of the patient's parent and the patient's birth decade. Hospitalization history from birth up to index age included the number of hospital admissions, the total length of stay (LOS) in the hospital, and the maximum ammonia level. The similarity was measured by Euclidean distance (shortest distance between 2 points in the multivariable space), the square root of the sum of squared differences, between characteristics of the LT patients and control patients in the RS. Because of right-skewed distributions, hospitalization history variables were rescaled (natural logarithm scale) before the distance calculation. We varied the method caliper for matching with Euclidean distance to explore balance in the 2 groups and chose the caliper with the better trade-off between balance and sample size.

Our implementation used multiple imputations to impute missing baseline characteristics, historical characteristics of HAEs, or outcomes over time. The imputation method assumed a missing at random pattern and used a chain of equations to generate imputed data sets using information from a set of observed covariates. Then, the results were combined from different imputations after matching and outcome model fitting. The full procedure is described in detail in Appendix A (Table 15A and Figure 1A).

Outcomes models were mixed-effect models, using library lme4 and coxme in R,69-71 adjusting for repeated measures from the same participant by having a random subject effect. These include time-to-event analyses for death outcome with a Cox regression model adjusting for multiple covariates and a mixed-effect linear regression for QOL outcomes. Because of the uncertainty in these results and the sparser neuropsychological outcomes, we did not fit those outcomes. The detailed list of variables in each regression is provided for each outcome within the tables in the Results section.

Aim 2

To examine, through a representative sample of patient families and their providers, how UCD treatment decisions are made, describing the factors that influence a family's decision to continue conservative MM or proceed to an LT.

Study Overview

We employed an adapted grounded theory approach, using qualitative interviews and focus groups, to examine the decision-making experiences of families affected by UCDs. This approach helped (1) identify key factors that families consider when evaluating and reaching a treatment choice and—as an additional effort that went beyond the original aim as initially proposed—(2) build an original conceptual framework that explores how these factors interrelate to drive treatment decision-making in this population. The approach for this component of the study is based on pragmatism, a philosophical orientation toward research where the focus is on developing actionable conclusions that can be applied in real-world practice. Aim 2 was developed in the spirit of this philosophy, designed to broaden the field's understanding of the decision-making experience of families affected by UCDs so that, in the short term, providers may better support patients with UCDs through difficult treatment choices and so that, in the long term, the health care system may evolve to better respond to the expressed needs and values of this population.

The study protocol (aims 1, 2, and 3) was approved by the Children's National IRB, which has a reliance agreement with GWU's IRB.

Data Collection and Sources

We collected qualitative data directly from caregivers of children affected by UCDs (n = 35) and their clinical providers (n = 26) via semistructured phone interviews. Caregivers and clinical providers were sourced through both NUCDF and connections at CNHS. Following these interviews, the study team conducted 2 in-person, 90-minute focus groups (n = 19) to validate the interview findings and clarify interview concepts that were not yet fully developed. Interviews and focus groups were recorded and transcribed verbatim for use in the analysis.

The study team developed the interview and focus group guides by integrating findings from a limited number of studies describing relevant evidence-based health care decision-making models in pediatric illness as well as initial discussions with key informants from NUCDF. The most relevant of these available studies, which examine decision-making for a large array of pediatric illnesses ranging from relatively minor incidents of upper respiratory infection72 to complex disorders, such as cancer73 and cystic fibrosis,74-79 are those in which a transplant is offered as a treatment.76,80-82 Key informants, including metabolic specialists and families of children with UCDs, reviewed draft guides. The guides were revised based on feedback from this group before being used in the field and were subsequently reviewed and refined after an initial round of 3 pilot interviews.

Participants

We collected data directly from caregivers and clinical providers of children born in the United States who were diagnosed with 1 of 4 neonatal-onset UCD types (CPS1D, OTCD, ASSD, or ASLD) for which LT is a consideration as a treatment for hyperammonemia. These data were collected from the same patient population outlined in aim 1. We employed stratified purposeful sampling to recruit an initial pool of caregivers through NUCDF from the patient community. Recruitment focused on identifying participants who varied in terms of disease severity and transplant status. This initial purposeful stratification accounted for the assumption that the severity of the disease may mediate why, how, and when families consider LT as a treatment option and the perspective of both transplanted and nontransplanted patients.

In accordance with the grounded theory approach, the study team selected participants through a theoretical sampling technique in which patients were chosen to gain a deeper understanding of emerging key domains and to facilitate the development of new theoretical concepts. Under theoretical sampling, researchers follow an iterative process where they move back and forth between data collection and analysis so that emerging concepts and relationships can be tested and refined in the field through additional sampling until a point of saturation is reached (ie, additional interviews reflect only already-identified concepts and no new information is gleaned from the collection of additional data).82 For example, initial interview discussions suggested that major childhood transitions, such as beginning grade school and entering adolescence, have a notable influence on treatment choice. Thus, the research team made a concerted effort to recruit participants who have experienced these transitions and could expound on their meaning. Stratified purposeful sampling was used as an initial strategy to recruit a national cross-section of UCD providers for participation in the interviews. Initially, providers were recruited via NUCDF and the UCDC to reflect variations in location and specialty type, including metabolic disease physicians, gastroenterologists, genetics counselors, and dietitians. This accounted for the assumption that hospital centers may vary in terms of their treatment philosophy and approach to counseling and that different individuals on the care team interact with patients with UCDs at different points throughout their decision-making experience. Provider participants were then selected through theoretical sampling as discussed previously. The characteristics of caregiver and provider interview and focus group participant samples are summarized in Tables 2 and 3. Both parent and provider participant recruitment continued until multiple investigators concluded that the saturation of information had occurred. Focus group recruitment followed a similar strategy.

Table 2. Characteristics of Interviewed UCD Caregiver Participants and Children.

Table 2

Characteristics of Interviewed UCD Caregiver Participants and Children.

Table 3. Characteristics of UCD Provider Interview Participants (N = 26).

Table 3

Characteristics of UCD Provider Interview Participants (N = 26).

The study team recruited a representative sample of 26 providers and 35 primary caregivers for participation in semistructured qualitative interviews. We chose an additional 19 primary caregivers to participate in focus groups, which helped validate information obtained through earlier interviews. The focus groups included 8 to 12 participants each, stratified by transplant status.

Analytical and Statistical Approaches

The study team used thematic content analysis to identify key patterns within the data and to categorize collected information into recurrent or common themes. Data content analysis was based on Strauss and Corbin's systematic procedures for grounded theory work.82 We conducted initial data abstraction through the line-by-line open coding of a cross-section of 14 interview transcripts by 3 to 4 coders, which allowed key issues to emerge directly from the collected data and ensured that important aspects of this phenomenon were not precluded through the use of a more selective coding scheme. We used open coding to generate a preliminary set of codes, which we continuously refined through research team consensus until saturation was reached and a final structure of codes and subcodes emerged. We then systematically applied this coding structure across all transcripts. Each transcript was coded by at least 2 coders (often by 3-4 coders) with substantial experience in qualitative methods and analysis procedures. After each round of coding (ie, approximately 4-6 transcripts per round), all coders met to discuss the workability of the current coding structure, propose refinements and additions to the coding scheme, and troubleshoot variations in coding. Data collection and analysis, as described in the sections above, were conducted through an iterative process. The study team conducted coding and consensus-based analysis alongside additional participant recruitment and interviewing so that the developed findings could inform additional rounds of data collection, which in turn would validate existing themes, provide additional context and nuance to identified concepts, and reveal new areas for exploration. This continued until all investigators agreed that data saturation had been reached. Coding progress was tracked through a working spreadsheet. Interrater reliability was checked periodically through randomly selected coder comparisons.

We used selective (defining core variables) and axial coding (identifying relationships in the data) techniques to move beyond a typology of participant accounts in additional scholarly efforts that augmented the initial aim of the study. (Decision-making in UCD formed the basis of Dr Maya Gerstein's PhD dissertation, and her work, which includes 2 as yet unpublished manuscripts, expands our understanding of this topic.) Through selective and axial coding, we identified core concepts, exploring the relationship between key themes, and ultimately built a framework that describes how patients with UCDs and their families reach treatment decisions and the key clinical, social, and/or system-level factors that influence this process. To facilitate this level of analysis, we used common qualitative analysis techniques such as charting (ie, reorganizing data according to thematic content in side-by-side charts to visualize/compare a range of perspectives across patients), mapping, and interpretation (ie, using diagrams and tables to physically explore the relationship between themes83). The study team examined differences and similarities in reported experiences to facilitate the identification of issues that are common across groups as well as the factors that create differences in the way patients and their families approach and experience this decision. We managed all interview and focus group data using NVivo 11 software (QSR International).84

Aim 3

To develop a strategy to disseminate the study findings from aim 1 that align with the decision-making process illustrated through aim 2 and that is responsive to the expressed needs of patients with UCDs and their families.

Data Collection

Qualitative data were collected directly from caregivers of children affected by UCDs (n = 31) and their clinical providers (n = 19) through a total of 8 semistructured focus groups (2 in-person and 2 web-based caregiver focus groups, and 1 in-person and 3 web-based provider focus groups). Focus groups were conducted in sessions lasting approximately 90 minutes. The focus group sessions were recorded and transcribed verbatim for use in analysis.

Focus group guides were developed by integrating findings from a limited relevant evidence base and initial discussions with key informants from NUCDF, as well as from the patients and providers previously interviewed for aim 2 of the study. Draft guides were reviewed by key informants, including families with children affected by UCDs and metabolic genetic physicians specializing in UCDs. The guides were revised and refined based on feedback from this group before being used in the field.

Sampling

The target population included caregivers whose children were born in the United States after 1996 and diagnosed with 1 of 4 UCDs (ASLD, ASSD, CPS1D, or OTCD) for which LT is a consideration. Stratified purposeful sampling methods were used to recruit caregivers identified by NUCDF from the patient community. Recruitment focused on identifying participants who varied in terms of (1) disease severity (ie, neonatal vs late onset) and (2) transplant status (ie, MM vs LT).

Stratified purposeful sampling was also used to recruit a national cross-section of UCD providers for participation in focus groups. Providers were recruited via the UCDC and NUCDF to reflect variation in location and type of provider, including metabolic disease physicians, gastroenterologists/hepatologists, genetics counselors, advanced practice nurses/nurse practitioners, and dietitians.

Data Analysis

Initial data abstraction was conducted through the line-by-line open coding of 2 focus group transcripts, which allowed key issues regarding dissemination of evidence and information-sharing to emerge directly from the collected data and ensured that important aspects of this phenomenon were not precluded through the use of a more-selective coding scheme. Open coding was used to generate a preliminary set of codes, which was continuously refined until a final structure of codes and subcodes emerged. This coding structure was then applied systematically across all focus group transcripts. Thematic content analysis was used to identify key patterns within the data and to categorize collected information into recurrent or common themes, which are described in the Background section of this report.

All focus group data were managed and analyzed using NVivo 11 software.

Sample Characteristics

A total of 31 caregivers participated in 4 focus groups. Dissemination and use of evidence was the only topic of discussion in 2 of these focus groups. NUCDF staff organized and observed the 2 in-person focus groups and assembled the 2 web-based focus groups, and they provided the web platform for holding the focus groups. Of the 24 providers who initially agreed to participate in the focus groups, 19 clinical providers participated, including 11 providers in the in-person focus group; all 4 provider focus groups focused exclusively on dissemination and use of evidence.

Development of Dissemination Strategy Document

Development of a caregiver- and provider-informed dissemination strategy followed a 3-step process. First, the research team used the information collected and analyzed as described previously to produce an outline of a dissemination strategy document, which was reviewed and refined by NUCDF. Second, the research team and NUCDF collaborated on drafting, refining, and finalizing the draft strategic document, sharing editorial control over the project. Third, the draft document was shared with the entire study team for review and final input before being submitted to PCORI as a deliverable for aim 3 of the project.

Changes to Original Study Protocol

The study protocol (aims 1, 2, and 3) was finalized on December 23, 2015, and approved by the CNHS IRB on March 4, 2016. The protocol went through 5 major changes outlined below.

  • Version 2.0 was written on May 6, 2016, increasing the upper limit of the age range for those participants in aim 2 of the study from 18 to 25 years. The age range was increased because parent feedback from NUCDF indicated that many older patients had insights that would contribute to our body of knowledge. This protocol amendment was approved on May 26, 2016.
  • Version 2.1 was written on June 28, 2016, which allowed members of the NUCDF staff not only to recruit but also to enroll and collect data for the study (aims 1 and 2). In addition, to reduce barriers to enrollment, the protocol was changed to permit enrollment by phone, to allow consent documents to be sent by email or fax, and to conduct NPT in the patient's home. The protocol amendment was approved on August 2, 2016.
  • Version 3.0 was written on January 4, 2017, which changed the PI of the study from Dr Mendel Tuchman to Dr Nicholas Ah Mew (aims 1, 2, and 3). Dr Tuchman stepped down as he moved to retirement, and Dr Ah Mew, a co-investigator of the study, took on the role of PI with approval from PCORI. This amendment was approved on January 20, 2017.
  • Version 3.1 was written on May 11, 2017, making minor edits to the focus group information guide and clarifying the financial compensation for taking part in Aim 2 of the study. This amendment was approved on July 31, 2017.
  • Version 4.0 was written on October 26, 2017, and approved on February 9, 2018. This amendment clarified that focus groups would take part after the conclusion of semistructured interviews for both caregivers and providers (aim 2) and that any study-specific activities must be outlined in the protocol.

Results

Aim 1

To study 2 UCD patient cohorts, 1 cohort treated with MM and the other treated by LT, comparing survival rate, neurocognitive function, and patient-reported QOL.

PS-Based Analysis

Figure 4 illustrates the process of applying predefined selection criteria to create the PCORI-eligible sample from the merger of UCDC LS data and data from participants enrolled directly in the protocol. Unfortunately, the study team was unable to enroll additional patients from the SPLIT registry primarily because eligible SPLIT registry participants were already enrolled in the LS. The 810 total UCD registrants were trimmed to 283 eligible patients: 179 patients receiving MM and 104 patients who had undergone LT. We selected North American, early-onset patients (onset within 28 days of birth) with an eligible diagnosis of CPS1D, OTCD, ASSD, or ASLD. The MM patients were further trimmed by excluding patients (n = 22) who died before the earliest age of transplant, 16 days, in the LT group. The 2 groups were further refined to ensure comparable severity by selecting participants whose first recorded HAE occurred by age 3 years, leaving 87 MM patients and 101 LT patients for analysis.

Figure 4. Selection of PCORI-Eligible Cohort.

Figure 4

Selection of PCORI-Eligible Cohort.

Assignment of Index Age

To ensure equal treatment, we assigned MM patients an age that was distributed similarly to the age of transplantation in the LT group (both ages are referred to as the index age). We used pscore to assign an initial PS based on the following criteria: decade of birth, UCD type (proximal vs distal), method of diagnosis (clinical signs, family history, newborn screening), presence and type of symptoms at diagnosis, age at UCD onset, age at first HAE, and maximum ammonia level during the first HAE. Each of these criteria related directly to early UCD control or severity.

This process, based on pscore in Stata, achieved satisfactory covariable balance, approaching 0% bias across covariates based on the creation of 5 PS strata following the exclusion of 1 nonoverlapping MM patient (Figure 5). Random index-age assignments within PS strata were allocated based on the γ distribution in the MM group to mimic the distribution of stratum-specific ages of transplantation as indicated in Figure 6. It was necessary to make minor adjustments to the random assignments to ensure that the index age was not greater than the age of death or greater than the last QOL or NPT assessment.

Figure 5. Covariate Balance in Initial PS Used for Assignment of Index Age.

Figure 5

Covariate Balance in Initial PS Used for Assignment of Index Age.

Figure 6. Comparison of Index Age in MM With Transplant Age in LT.

Figure 6

Comparison of Index Age in MM With Transplant Age in LT.

Generation of Final PSs Used in Analysis

The assignment of comparable index dates in the MM and LT groups allowed for the use of more detailed covariable indicators of UCD severity. This led to a better balance in a comparison of outcomes between treatment groups. UCD severity indicators included main effects, higher-order terms to account for nonlinearity, and interactions between main effects to account for nonadditive effects. The main effects included UCD type, ln(count of HAEs), percentage of HAEs with ammonia levels of ≥400 μmol/L and between 150 and 399 μmol/L, ln(maximum HAE LOS), and ln(count of HAE LOS >8 days), as well as level of parental education and patient birth decade.

Other effects included squared terms and interactions of main effects based on the addition of the term with the highest LR ≥2.71 to the evolving logistic model. This second-level process resulted in the addition of squared terms for birth decade and maximum HAE LOS and interactions between the numbers of HAEs with caregivers having “no college”; birth decade with percentage of HAEs with ammonia levels between 150 and 399 μmol/L; maximum LOS with caregivers having “some college”; UCD type with number of HAEs having an LOS of >8 days; and percentage of HAEs with ammonia levels at 150 to 399 μmol/L with number of HAEs having an LOS of >8 days, as well as with birth decade squared.

The distribution of PSs was used to define the region of overlap, which is the region of comparability between MM and LT treatment groups (also called the common support region), and to identify strata that provided the best balance between the 2 treatment groups. Figure 7 provides a breakdown of those participants included (on support) and not included (off support) in the common support region based on 3 PS strata. Those regions highlighted in blue and gold (off support) represent participants outside the common support region, for which there were no members of the other treatment group with comparable PSs. Achieving overlap (ie, group comparability) requires a substantial loss of numbers (LT, n = 43; MM, n = 35) at the extremes of PSs, leaving a small number available for matching in the lower and upper strata of the common support region (Figure 7). Thus, only 109 (58%) of the 187 original participants selected on the basis of increased severity are considered sufficiently comparable to contribute to the comparison of study outcomes. The small comparable groups, n = 51 in MM and n = 58 in LT, preclude subgroup analysis and leave the study able to detect only large differences in outcomes between groups.

Figure 7. Common Support Region Based on 3 Strata Defined on the PS.

Figure 7

Common Support Region Based on 3 Strata Defined on the PS.

Using criteria defined by Rubin,61 Table 4 and Figure 8 provide an assessment of the overall and variable-specific covariate balance achieved among participants in the common support region. The median level of percentage bias (Table 4) overall is reduced from 41.9% to 8.6% based on the PS definition of the common support region. Only log(number of HAEs) and the interaction of parents with no college by log(number of HAEs) raised moderate concerns about the level of within-covariable bias. The other covariables used in PS creation attained levels of bias reduction that raised no concerns. This is also illustrated in Figure 8. More detailed evaluations of overall balance within strata and by each covariable used in propensity scoring are included in Appendix A. Those MM and LT patients included in the common support region are referred to here as the CSS.

Table 4. Results of Bias Adjustment Using PSs to Define the Common Support Region.

Table 4

Results of Bias Adjustment Using PSs to Define the Common Support Region.

Figure 8. Balance Between MM and LT Following Propensity Scoring.

Figure 8

Balance Between MM and LT Following Propensity Scoring.

Evaluation of Participants Included and Not Included in the CSS

Tables 5 and 6 compare the clinical and demographic characteristics of the 3 groups formed from the PS. In addition to participants in the CSS, these groups include MM participants with PSs lower than any member of the LT group and LT participants with PSs higher than any member of the MM group. These groups differ in many indicators of UCD severity (Table 6), including type of UCD, counts of HAEs, counts of HAEs with LOS >8 days, and proportion of HAEs with ammonia levels of >399 or 150 to 399 μmol/L, as well as maximum HAE LOS and maximum HAE ammonia levels and frequency of coma during HAEs. By all indications, the nonoverlapping, high-PS LT group has considerably more severe UCDs than does the nonoverlapping, low-PS MM group. The high-PS LT group also tends to have lower parental education and is more likely to have birthdates between 2000 and 2009.

Table 5. General Characteristics of Participants Included and Not in the CSS.

Table 5

General Characteristics of Participants Included and Not in the CSS.

Table 6. Specific UCD Severity-Related Characteristics of Participants in and Not in the CSS.

Table 6

Specific UCD Severity-Related Characteristics of Participants in and Not in the CSS.

Evaluation of Comparability of MM and LT in Total and CSS Participants

Tables 7 and 8 compare MM and LT CSS participants with regard to indicators of UCD severity. As in Tables 5 and 6, the greatest differences among total eligible participants occurred in specific indicators of the frequency and severity of HAEs, especially in terms of the type of UCD, degree of ammonia elevation, and LOS. These highly statistically significant differences provide strong evidence of greater severity in the LT group than in the MM group. In the CSS, these differences are greatly reduced in magnitude and in statistical significance. Only the frequency of HA episodes remains a statistically significant difference. Level of ammonia elevation and the frequency at which different levels of elevation occur remain borderline different between MM and LT. These seem to be the strongest indicators of UCD severity. The CSS alleviates most of the differences in severity, but this level of balance comes at the price of sample size reduction, as the CSS (n = 109) excludes >40% of the total sample of 187, which compromises the power to detect all but large differences between treatment groups in study outcomes. In lieu of having the power to test aim 1 hypotheses, our results that represent fair, mainly unbiased comparisons are best used to generate inferences that will need to be tested in larger and comparably unbiased samples.

Table 7. Comparison of MM and LT Participants in the Total Sample and CSS.

Table 7

Comparison of MM and LT Participants in the Total Sample and CSS.

Table 8. Comparison of Pre–Index Date UCD Severity Indicators in the Total Eligible Sample and CSS in 28-Day-Onset MM and LT Participants.

Table 8

Comparison of Pre–Index Date UCD Severity Indicators in the Total Eligible Sample and CSS in 28-Day-Onset MM and LT Participants.

Analysis of the LT Procedure and Complications in Those Included and Not Included in the CSS

Table 9a (initial transplant) and Table 9b (second transplant) compare LT procedures and complications between those included and not included in the CSS. Of patients who underwent LT, 89% required a single transplant, 9.6% required 2 transplants, and 1.1% required 3 transplants. Except for the covariables highlighted below, those included and not included in the CSS were generally similar. There were borderline differences (P = .09) in the type of transplant, with cadaveric (orthotopic) being the most common and relatively balanced type, accounting for approximately 60% of those included and not included in the CSS. Those not included in the CSS were more likely to receive a living-donor liver or a transplant of unknown source. Those included in the CSS were more likely to receive split or orthotopic and split livers. In both the first and second transplants, infections were more common among those in the CSS. There were no complications reported for the third transplant of unknown source.

Table 9a. Procedures and Complications of the Initial LT by Inclusion Status in the CSS.

Table 9a

Procedures and Complications of the Initial LT by Inclusion Status in the CSS.

Table 9b. Procedures and Complications of the Second LT by Inclusion Status in the CSS.

Table 9b

Procedures and Complications of the Second LT by Inclusion Status in the CSS.

Evaluation of Post–Index Date Metabolic Outcomes in the CSS

Among those of similar severity, the post–index date experience described in Table 10 differed between the LT and MM groups. The duration of follow-up differed between the groups, especially in those with <1 year of follow-up, which was more common in the MM group; 3 to 6 years of follow-up was more common in the LT group. Approximately 53% of both groups experienced follow-up for at least 6 years. Excluding those followed for <1 year, a period complicated by recovery from transplant surgery and not balanced between the groups, the clinical experiences of the 2 groups were divergent in every outcome related to UCDs. The MM group continued to experience HAEs, including 19% who experienced an average of >9 post–index date HAEs. This experience is in sharp contrast to that of the LT group, which experienced no HAEs and thus escaped continued exposure to the most harmful effects of ammonia elevation.

Table 10. Post–Index Date Metabolic Outcomes in the CSS.

Table 10

Post–Index Date Metabolic Outcomes in the CSS.

Treatment-Related Effects on Mortality, QOL, and Neuropsychological Outcomes

Comparison of mortality in the CSS

There were 16 deaths in 109 persons followed collectively for 822 person-years (PY), for a total post–index date risk of mortality of 19.5 per 1000 PY in Table 11. The comparable crude mortality rate in those receiving LTs was 18.4/1000 PY, and it was 20.7/1000 PY in MM participants, for a relative risk of 0.81 (P = .88). Taking into account the time of death and adjusting for PS and index age differences as well as differences in the number of pre–index date HAEs, Cox regression analysis showed evidence of a difference in the risk of mortality. The estimate of the HR increased to 1.5 (Figure 9), suggestive of greater mortality in LT, but failed to reach statistical significance (P = .28). This estimate was largely unchanged with regard to the strength of association or statistical significance in an analysis stratified by the 3 PS strata. Subgroup analysis of the relationship in Cox regression models in the LT group between mortality and age at transplantation in LT showed little evidence of a meaningful impact of age at transplantation on the risk of mortality.

Table 11. Risk of Mortality in LT- and MM-Treated Patients in the CSS.

Table 11

Risk of Mortality in LT- and MM-Treated Patients in the CSS.

Figure 9. Survival Curve Based on Stratified PS and Covariate-Adjusted Cox Model.

Figure 9

Survival Curve Based on Stratified PS and Covariate-Adjusted Cox Model.

Interpretation of covariate balance plots

In the estimation of ATTs for QOL and neuropsychological outcomes, balance plots adjacent to the results for each outcome show the success in achieving covariate balance (bias reduction) between LT and MM samples during comparisons. An orientation to plot interpretation is provided here using text and accompanying templates.

Figure 10 presents the layout of these 2-panel side-by-side box plots that are meant to show the degree of comparability and bias reduction, between treatment groups. Each panel shows the degree of MM (untreated) to LT (treated) overlap of PS distributions. The left panel with the heading “Raw” shows the raw CSS overlap, and the right panel shows the overlap after PS matching and controlling for key differences during the kmatch analysis to estimate the average treatment effect (ATT [LT − MM difference]) associated with each outcome. Each box plot includes the box itself, whose upper edge represents the 75th percentile and whose lower edge represents the 25th percentile; the horizontal line in the box represents the median (50th percentile). The whiskers that extend beyond the box represent the upper and lower extremes of the data, excluding outliers that are presented as dots above and below the whiskers. The degree of improvement in group overlap from the left panel to the right panel indicates the extent of bias reduction and the confidence that can be placed in the ATT results.

Figure 10. Distribution of the PSs in MM (Untreated) vs LT (Treated) Groups.

Figure 10

Distribution of the PSs in MM (Untreated) vs LT (Treated) Groups.

Comparison of QOL in the CSS

In the unadjusted results from the CSS (Table 12), among those individuals providing QOL assessments (39-76 of 109 patients), patients and parents reported patient QOL as modestly lower in the LT group than in the MM group, based on the total, psychosocial, and physical scores. None of these results excluded chance as the cause of the difference, but the direction of results was consistent. In contrast, parents reported that the family's QOL was higher with LT than with MM, and this difference cannot be fully explained by chance. Figure 11 compares the unadjusted, PS-adjusted, and the PS ridge-matched and adjusted QOL ATT results in the MM- and LT-treated groups. Ridge-matched adjustment variables included age at QOL assessment and index age. The highly comparable ridge-matched and adjusted results based on covariate balance plots indicate little to no difference in the total QOL and its components of psychosocial health and physical health. However, estimates suggest a sizable (15-30 point) advantage in family QOL score, but chance cannot be ruled out as the reason. The covariables included in PS generation were the same for all QOL analyses. The smaller sample size for family QOL assessments is due to its later inclusion in the QOL test battery, not due to family choice; thus, it cannot contribute to bias or lack of generalizability of the findings. The validity of these results depends not only on the comparability of treatment groups, which has been achieved through PS matching and covariate adjustment in the CSS, but also that participants not providing QOL assessments overall and by treatment group do not differ substantially from those providing assessments. Table 13 indicates that persons providing and not providing QOL assessments are generally similar in the main indicators of UCD severity, and there is little evidence of an interactive effect between group and missing assessments. Therefore, summary P values are presented, reflecting evidence of general differences in characteristics between those providing and not providing QOL assessments. These indicate evidence of differences by UCD type and somewhat by parental education, which should not interfere greatly with validity or generalizability of the results. Table 14 shows an evaluation of the relationship between age at LT and QOL score. Except for QOL associated with physical health, where the best QOL score occurs in patients undergoing LT before 1 year of age, there is little evidence that implementing LT at an earlier age improves the QOL score.

Table 12. Unadjusted QOL Results by Treatment Group in CSS.

Table 12

Unadjusted QOL Results by Treatment Group in CSS.

Figure 11. Matched and Adjusted QOL Results in LT vs MM in CSS.

Figure 11

Matched and Adjusted QOL Results in LT vs MM in CSS.

Table 13. Comparability of Persons Providing and Not Providing QOL Assessments in the CSS.

Table 13

Comparability of Persons Providing and Not Providing QOL Assessments in the CSS.

Table 14. Adjusted Relationship Between Age at LT and QOL in CSS.

Table 14

Adjusted Relationship Between Age at LT and QOL in CSS.

Comparison of Neuropsychological Outcomes by Domain in the CSS

All neuropsychological outcomes are scaled to a mean of 100 and an SD of 15. The most complete neuropsychological outcome data are in the domains of global and language function, which can be assessed in those younger and older than 3 years. Except for language function in those <3 years (Table 15), the unadjusted results in the CSS indicate slightly higher scores and higher levels of function in the LT group. Additional analyses were conducted to further reduce sources of bias and confounding in LT vs MM comparisons in the CSS using PS matching and/or PS and covariable adjustment (Figures 12 and 13). Although none of the differences between MM and LT achieved statistical significance, these better-balanced analyses provide consistent results that favor the LT group in terms of global and language function. The estimated LT advantage in both outcomes tends to be greater in the more precise assessments conducted at older ages (>3 years) with a better PS balance between groups. The analyses also evaluated whether those not providing NPT results differed from those providing NPT results, which would affect validity and generalizability (Table 16). In the absence of evidence of differential effects by treatment group, those providing and not providing neuropsychological data presented borderline differences by type of UCD and percentage of HAEs with ammonia levels between 150 and 399 μmol/L. These differences do not negate group comparisons but raise caution regarding their validity and generalizability. Table 17 evaluates the relationship between age at LT in the transplanted group and global and language function. There is an indication, although not supported by statistical significance, of a general tendency toward better function at earlier ages of LT, especially during the first year of life.

Table 15. Unadjusted Global and Language Results by Treatment Group in the CSS.

Table 15

Unadjusted Global and Language Results by Treatment Group in the CSS.

Figure 12. PS-Matched and Adjusted Global Functioning Results in LT vs MM in the CSS.

Figure 12

PS-Matched and Adjusted Global Functioning Results in LT vs MM in the CSS.

Figure 13. Matched and Adjusted Language Results in LT Compared With MM in the CSS.

Figure 13

Matched and Adjusted Language Results in LT Compared With MM in the CSS.

Table 16. Comparability of Participants Providing and Not Providing NP Assessments in CSS.

Table 16

Comparability of Participants Providing and Not Providing NP Assessments in CSS.

Table 17. Adjusted Relationship Between Age at LT and NP Assessment of Global and Language Functioning in the CSS.

Table 17

Adjusted Relationship Between Age at LT and NP Assessment of Global and Language Functioning in the CSS.

Because of greater missingness, there is generally less information across the other neuropsychological domains, including visual, motor, attention/executive function, and emotional/behavioral domains, and there are also no statistically significant differences between LT and MM groups with regard to these (Appendix A, Tables A3-A12). In the following summary, except where noted, higher scores indicate better performance. There tended to be less consistency across tests measuring similar or overlapping attributes, likely due in part to poorer covariate balance from test to test. There were, however, some patterns that bear mention. Most consistent was a tendency toward higher scores that indicate worse emotional and behavioral outcomes in those receiving LT (Appendix A, Table A13) and a tendency toward better results (lower scores) with later age at LT in these outcomes (Appendix A, Table A14). Covariate-balanced results based on ridge matching and adjustment indicate that visual and motor function differed based on the test (Appendix A, Table A4). There was a tendency for performance IQ, which is a measure of visual reasoning, to be better in the LT group, but those receiving LT performed worse on direct assessments of visual-perceptual skills (Appendix A, Table A4). Earlier age at LT was associated with improved visual-perceptual skills (Appendix A, Table A5). Motor assessments were also inconsistent. Motor strength (grip strength), but not fine motor speed and dexterity (grooved pegboard), tended to be better in the LT group (Appendix A, Table A7) than in the MM group. The grooved pegboard results tended to improve with earlier LT, but the pattern was inconsistent for grip strength (Appendix A, Table A8). Attention/executive function did not produce consistent results by group or by age at LT (Appendix A, Tables A9-A11).

RS Matching Results With Imputation

LT generally occurs early in life (Figure 14), with 49% of surgeries occurring during the first year of life, 20% of surgeries during the second year of life, and 78% of surgeries by 3 years of age. In the eligibility set, those who received LT had more hospital admissions than did those receiving MM in the first year of life (Figure 15).

Figure 14. Cumulative Probability of Age at LT.

Figure 14

Cumulative Probability of Age at LT.

Figure 15. Overlap in Log Age at Hospitalization Between MM and LT.

Figure 15

Overlap in Log Age at Hospitalization Between MM and LT.

The RS-matching method finds a comparable control group by first identifying the RS and then matching on important characteristics in that RS. A good diagnostic for whether the matched control group is comparable with the LT group is to examine balance after matching. One tuning parameter for matching, in our implementation, was the Euclidean distance caliper, where a larger caliper may lead to more control matches for each LT patient but worse balance, whereas a smaller caliper may lead to no matches for some LT patients but better balance. As expected, we see in Table 18 that a wide caliper for the Euclidean distance kept all those who received LT, but the control group was generally less severe (ie, fewer HAEs, lower peak ammonia level) than the LT group. Medical history variables were comparable but were higher in the LT group than in the matched control group. The balance was improved by narrowing the caliper, but in doing so, only 80% of the LT patients remained. Reducing the caliper further reduced the control group size and had a negligible impact on balance. Figure 16 shows a positive association between the total LOS and ammonia levels. Although the LT group and the control group cluster around the same values, the LT group tends to have longer hospital stays than does the control group. Thus, this method did not fully account for confounding by disease severity by matching, and we still adjusted for medical history variables in the outcome models.

Table 18. Cohort Baseline and Follow-up Characteristics by LT Status at Matching Time and After Matching (Narrow and Wide Calipers in RS-Matching Method).

Table 18

Cohort Baseline and Follow-up Characteristics by LT Status at Matching Time and After Matching (Narrow and Wide Calipers in RS-Matching Method).

Figure 16. Association Between Peak Ammonia Levels and Total Cumulative LOS for HAEs.

Figure 16

Association Between Peak Ammonia Levels and Total Cumulative LOS for HAEs.

The results in Table 19 show little difference between the LT group and their matched controls for the outcome of mortality and QOL after accounting by confounding with RS matching and missing values by multiple imputations. The results for each imputed data set are shown in Appendix A (Figures 2A-6A).

Table 19. Effect of LT on Outcomes, RS Matching With Narrow Caliper.

Table 19

Effect of LT on Outcomes, RS Matching With Narrow Caliper.

Aim 2

To examine, through a representative sample of patient families and their providers, how UCD treatment decisions are made, describing the factors that influence a family's decision to continue conservative MM or proceed to an LT.

Context of Limited Empirical Evidence

Interviews and focus groups with caregivers and providers captured the perception of limited outcomes data. Insufficient empirical evidence and ill-defined clinical guidelines hamper decision-making related to the choice between MM and LT for children with UCDs. Caregivers and providers alike described the challenges of treatment decision-making against a backdrop of high uncertainty, and detailed a decision-making experience largely defined within this context (Appendix B, Box 1 [1a-c]). We constructed the decision-making framework and its individual and interrelated components within this landscape. The framework represents the shared experience of families affected by UCDs who must pursue intervention in the absence of clear, evidence-based information.

UCD Treatment Choice Framework

The study team identified key themes through an analysis of caregiver and provider interviews and focus group data, which represent the shared decision-making experience of the study cohort. We positioned these themes within a holistic framework illustrating how elements of the decision-making experience interrelate and influence the decision between MM and LT (Figure 17).

Figure 17. Conceptual Framework Describing Key Factors Contributing to the Decision Between MM and LT Among Families of Children With UCDs, Within a Context of Limited Empirical Evidence and Poorly Defined Clinical Guidance.

Figure 17

Conceptual Framework Describing Key Factors Contributing to the Decision Between MM and LT Among Families of Children With UCDs, Within a Context of Limited Empirical Evidence and Poorly Defined Clinical Guidance.

The relative risks and benefits of MM vs LT were considered and were a central component of the decision-making experience. Caregiver participants described efforts to understand and analyze the risks and benefits of these treatment alternatives in an attempt to make informed treatment decisions (Appendix B, Box 2 [2a]). With limited empirical evidence informing the choice between MM and LT, caregivers and providers commonly discussed struggles in weighing treatment alternatives and the challenges of making a choice (Appendix B, Box 2 [2b-d]).

In the absence of uniform clinical guidance, families affected by UCDs often rely on their own experience and those of providers and peers as inputs of imperfect information guiding the choice between MM and LT. Participants discussed these inputs as an interrelated collection of complex clinical, personal, social, and system-level factors. These factors, found on the 4 cardinal points of the framework, informed each family's personal perception of the risks and benefits of MM vs LT, and ultimately, their decision to pursue or not pursue LT as a treatment for their child.

Phases of Childhood and Developmental Milestones

Interviews and focus groups highlighted the idea that changes during key developmental milestones throughout a child's life precipitated new or aggravated existing challenges associated with the MM of UCDs. Developmental milestones acted as a catalyst for caregivers to consider or reconsider LT as a viable treatment choice. As a child moves from infancy to early childhood, caregivers must contend with new feeding challenges, including a transition to solid foods (Appendix B, Box 3 [3a-b]). They may also face adherence issues once their child is able to refuse medications, formulas, or other forms of nutrition (Appendix B, Box 3 [3c]). Caregivers may have an increasingly difficult time protecting their child from viral exposures as they transition to preschool and grade-school age and become increasingly more independent and interactive with others (Appendix B, Box 3 [3d]). As children enter grade school age, caregivers described new challenges related to their child's transition to school, such as concerns over management of the disorder in a school setting and worries about their child's ability to forge peer relationships and participate in “normal” childhood activities (Appendix B, Box 3 [3e]). Caregivers whose children had transitioned into adolescence and early adulthood cited new adherence issues (Appendix B, Box 3 [3f]), questions about their child's long-term independence, and rising concern about their child's ability to manage their own medical needs (Appendix B, Box 3 [3g-h]). Data suggest that the clinical, personal, social, and system-level factors that influence treatment choice manifest differently across these key phases of childhood. Thus, we include these major developmental transitions and milestones on the “x-axis” and “y-axis” of the framework in Figure 17 to indicate that they may change priorities and reframe parents' perception of risks and benefits. These axes do not operate as a typical ordinate but rather are included to represent the impact of child development and life stages on the treatment decision landscape.

Tipping Point

Caregivers in interview and focus group cohorts who had chosen LT as a treatment for their child all reached a “tipping point” in their evaluation of the risks and benefits of LT vs MM. Ultimately, each of these families felt unable to continue the management of their child's disorder through diet and medication. This tipping point led them to pursue LT as a treatment alternative (Appendix B, Box 4 [4a]). Interviews with patients and providers highlighted variations in how families approached this decision and the conditions under which they would entertain LT as a viable treatment alternative for their child. If, when, how, and for what reason families reached this conclusion varied within the study cohort and among provider and participant panels. Among families affected by UCD, some described their tipping point being shortly after diagnosis. Some families never reached a point where they felt LT was a true consideration. Other families faced their tipping point only after several years of MM and key changes in circumstances (Appendix B, Box 4 [4b-d]). The family's overall tolerance for the uncertainty and ambiguity that accompanies MM seemed to factor into this timeline (Appendix B, Box 4 [4e]), as did the child's clinical status, the personal burden of disease on the family, social implications of the illness, and the patient's experience with the health care system. Together, these represent the landscape within which families affected by UCDs evaluated available treatment choices and reached or did not reach a tipping point in favor of LT over MM.

Clinical Factors

Disease severity

Caregivers and providers cited the severity of the child's UCD diagnosis as a key consideration in the choice between MM and LT. For patients with neonatal-onset UCD, who are presumed to have virtually zero enzyme function, LT was often presented by parent and provider participants as the more evident choice. In these cases, caregivers and providers commonly described transplant as the child's “only option” or “best chance at long-term survival” (Appendix B, Box 5 [5a-b]).

Despite what most caregivers and providers described as a compelling clinical argument for LT, some families affected by neonatal-onset UCDs were still hesitant to pursue LT as a treatment option. These families continued to evaluate the potential complications of surgery against the risks of MM (Appendix B, Box 5 [5c]). In cases of late-onset UCDs or partial enzyme function, where MM is often presented as a viable treatment alternative, participants described a much more subjective and complex evaluation of the driving factors outside that of the child's diagnosis (Appendix B, Box 5 [5d]).

Disease stability

Caregivers and providers differentiated between the child's disease severity, determined by their diagnosis, and the stability of their disease, reflected in the family's ability or inability to control the child's ammonia levels through diet and medications. Caregivers of children both with neonatal- and late-onset forms of UCDs often pointed to a period of instability, characterized by frequent episodes of HAEs as a catalyst for LT (Appendix B, Box 6 [6a]). In some cases, families explained that disease control was never truly established (Appendix B, Box 6 [6b]). Other families described a sudden loss of control over their child's ammonia levels (Appendix B, Box 6 [6d]).

Among the caregivers of children who experienced fewer HAEs, some viewed LT as a last resort (Appendix B, Box 6 [6e]), while others considered or pursued LT as a preventive measure to avoid future complications. In these cases, caregivers did not interpret past or current disease stability as a predictor of future disease control, citing the unpredictable and potentially devastating nature of high ammonia levels as a driving force in their decision to consider an LT for their child (Appendix B, Box 6 [6f-g]).

Personal Factors

Burden on family

Caregiver interview and focus group participants discussed the day-to-day challenges of managing their child's illness and how the disorder altered their family life. Caregivers called attention to the challenge of 24-hour-a-day/7-days-a-week MM; the impact of fear, worry, and anxiety on the family's emotional health; and the ways the family had had to alter their relationship to and expectation of “normal life” comforts like food and travel. For many caregivers, these daily burdens provided a compelling reason to consider an LT for their child (Appendix B, Box 7 [7a-c]). For other caregivers, these day-to-day challenges, although present in some form, did not prompt them to pursue LT as a treatment option. In these cases, caregivers often described having reached a point of both mastery and comfort in their child's routine and cited concerns about the new and unfamiliar risks of posttransplant life, including liver rejection, immunosuppression, and mortality (Appendix B, Box 7 [7e-f]).

Burden on child

Caregivers spoke specifically about the burden of illness on their child's QOL, a seemingly small but important distinction from the familial challenges of UCDs that also influence treatment choice. Many caregivers described deep concern over how UCDs have affected and may continue to affect their child's intellectual and social development. Caregivers often labeled their children's demeanor in immeasurable terms such as “foggy,” “unfocused,” “disorganized,” or “cloudy,” and they worried that their child was suffering due to heightened levels of ammonia. Those who considered or pursued LT often believed that surgery could offer their child an opportunity at a normal life and a better QOL (Appendix B, Box 8 [8a-c]). Among those who did not pursue LT, some described a much more optimistic picture of their child's current intellectual and social growth, including participation in school and sports. In these cases, caregivers seemed less motivated to pursue LT as an alternative treatment option (Appendix B, Box 8 [8e-f]).

Social Factors

Peer-to-peer interaction

Caregivers reflected on conversations with other families affected by UCDs and the role their peers' experiences played in shaping their own treatment choices. Most caregivers interacted, to varying degrees, with other families affected by UCDs. While many pursued connections to other caregivers for the specific purpose of informing treatment choice, others connected organically through the UCD community. Regardless of how connections were made, many caregivers described being influenced, at least in part, by others' experiences with MM and LT. Caregivers described being motivated to choose LT based both on the positive surgical and postsurgical experiences of some families (Appendix B, Box 9 [9a-c]) and the negative outcomes shared by others who had delayed or foregone LT (Appendix B, Box 9 [9d]). Other caregivers described being deterred from LT by stories of surgical complications (Appendix B, Box 9 [9e-f]) or were encouraged to continue MM by others who had done so with success (Appendix B, Box 9 [9g]).

Consideration for child's independence

Caregivers often discussed their child's short-term and long-term independence as a point of continuous concern and worry. Caregivers considered shorter-term steps toward independence, like participating in preschool or grade-school programs, as well as longer-term goals like living outside the home and attending college. Most caregivers did not trust others to appropriately manage their child's strict dietary regimen. Others worried about how rising ammonia levels would impede their child's ability to recognize a crisis and make appropriate medical choices as an adult. For many of these caregivers, LT represented the only viable way to remove the threat of HAEs and thus afford their child independence, including spending the night with other family or friends, attending school, and living autonomously (Appendix B, Box 10 [10a-b]).

Other caregiver participants who had not considered or pursued LT as a treatment for their child offered a different perspective on living independently with a UCD. These caregivers described incremental efforts aimed at teaching their child how to manage their own medical needs. They shared a belief that their children could live safe and independent lives with their UCD outside the home; therefore, they were not driven to pursue LT by these specific concerns (Appendix B, Box 10 [10c-d]).

System Factors

Access to quality metabolic care

Caregivers also considered their level of access to and overall quality of metabolic care when weighing treatment options for their child. Caregivers who lacked confidence in their local metabolic care team often had concerns about the long-term and emergency MM of their child's condition. Those caregivers pursued LT to address what they perceived as inadequacies in their child's care (Appendix B, Box 11 [11a-b]). This issue was further framed by the family's geographic location and their relative proximity to specialized UCD care, often found only in large, urban, and academic settings. Families who lived farther from a large UCD hospital center worried about accessing timely and appropriate rescue care during an HAE. In some cases, this fear was a key driver in the caregivers' decision to pursue an LT (Appendix B, Box 11 [11c-d]).

Conversely, caregivers who conveyed satisfaction with the local long-term and emergency metabolic care options expressed greater confidence in their physician's ability to help control their child's ammonia and in the hospital's capacity to address potential medical crises. These caregivers were often less motivated to explore alternatives to MM (Appendix B, Box 11 [11e]).

Approach to treatment and guidance

Physician opinion and overall approach to treatment seemed to exert a great deal of influence on the caregiver's treatment choice. Many caregivers described the relationship with their metabolic doctor as one of great significance to their family and defined the physician as a critical part of their child's care and welfare. Thus, clinical guidance from the metabolic doctor in favor of or against LT was highly valued by many caregiver participants (Appendix B, Box 12 [12a-b]). In the absence of clear, evidence-based information specifying the conditions for one treatment path over another, physician opinion and approach to treatment did seem to vary substantially from provider to provider and institution to institution. Qualitative data suggest that these differences are driven, in part, by the physician's previous experience with LT and its outcomes, the location of their training and that institution's position on LT for UCD, and their experience with MM and the survival and neurocognitive outcomes they have observed among their patient pool (Appendix B, Box 12 [12c]).

Some families described their physician as inherently opposed to LT as a treatment for UCDs and credited their physician's opposition as a major deterrent to transplant, even in circumstances that they now feel may have warranted it (Appendix B, Box 12 [12d-e]). Other caregivers described their doctor as pro-transplant and were encouraged to explore LT as an alternative treatment choice, leading some to pursue it (Appendix B, Box 12 [12f]). Still, other providers described a position neither for nor against LT and an approach that deferred all treatment choices to the family. Some families valued this impartial approach and felt empowered to explore both treatment options with the support of their metabolic doctor (Appendix B, Box 12 [12g]). However, others described feeling paralyzed by their provider's ambivalence and wished that their metabolic doctor had done more to assist them in weighing the risks and benefits of treatment alternatives (Appendix B, Box 12 [12h-j]).

Cost and coverage of treatment

Caregivers cited costs of care and the burden of navigating insurance coverage for their child's UCD treatment as major challenges of the condition. Interviews and focus groups highlighted clear differences in the cost and coverage landscape of MM vs LT. Caregivers with LT experience described transplant as a fully covered procedure after obtaining prior authorization from their insurance company. These caregivers described few out-of-pocket costs associated with the transplant surgery, posttransplant hospitalizations and follow-ups, and posttransplant medications (Appendix B, Box 13 [13a-b]). In contrast, other caregivers described many ongoing struggles with the cost and coverage of their child's pharmaceutical and nutritional needs under MM. Caregivers cited time-consuming disputes with insurance companies over coverage for medications, lack of coverage for metabolic formulas and medical foods, and indirect financial costs related to travel for medical care and reduced time at work (Appendix B, Box 13 [13c-d]). Despite significant differences in the cost and coverage of MM vs LT, caregiver participants did not point directly to their finances as a driving force behind their treatment choices. However, for many participants, the financial implications of UCD treatment did contribute to the overall burden of disease and the context within which treatment decisions were made.

Aim 3

To develop a strategy to disseminate the study findings from aim 1 that align with the decision-making process illustrated through aim 2 and that is responsive to the expressed needs of patients with UCDs and their families.

The study team developed a strategy for disseminating the study results (Appendix C) in response to qualitative data collected from both caregivers of children diagnosed with UCDs and clinical providers. Detailed information on the methodological approach to constructing this strategy is outlined within the dissemination document (Appendix C). In brief, the dissemination strategy was constructed using data from aim 3 focus groups with caregivers and providers that were aimed specifically at collecting information on currently used and preferred mechanisms for information-sharing among caregivers and providers and identifying challenges/barriers to the dissemination of new evidence/information to these groups. The dissemination strategy was also constructed to be responsive to the needs and priorities of patients with UCDs and families as they were captured in aim 2 through caregiver and provider interviews and focus groups. For example, the aim 2 findings suggested that the physician approach to treatment guidance and counseling varied substantially and that this variation created barriers to the equitable access of treatment information among patients and families affected by UCDs. This finding highlighted the importance of targeting not just patients and caregivers but also a cross-section of providers through the recommendations outlined in our dissemination strategy. In response to this finding, large segments of the dissemination strategy focused on mechanisms for distribution of information to metabolic providers both within and outside expert UCD subspecialty care networks and to other types of clinicians (eg, members of the transplant team) that are involved in counseling patients with UCDs and caregivers on treatment options. In another example, the results from aim 2 highlighted the perhaps-underweighted role of factors unrelated to clinical markers of disease severity and stability in driving treatment choice. These factors were considered when recommending dissemination strategies like the creation of local NUCDF chapters and peer mentorship programs as avenues for information-sharing, virtual physician consultations to address geographic deficits in available expertise, and the development of an evidence-based list of “questions to ask your provider” to help promote more productive patient–provider interactions that are focused on the issues that matter most to patients when weighing available treatment options. The details of the dissemination strategy and a more detailed account of the methods used to develop this document are outlined in Appendix C.

Discussion

The aim 1 results found clear evidence that LT serves as a virtual cure for the severe metabolic effects that lead to devastating HAEs in patients with neonatal-onset UCDs. However, this pronounced metabolic effect did not translate into evidence of the expected large and statistically significant posttransplant effects on patient mortality, QOL, or neuropsychological outcomes. The aim 2 results provided a clearer understanding of the factors that enter into the decision-making process UCD caregivers and clinicians use when considering LT, and indicated the need for better QOL indicators. Our results for both aims suggest a need for research that focuses on the effects of earlier detection of severe UCDs, early implementation of neuroprotective measures, and early age at transplantation. These suggestions coupled with the study's novel framework led to an aim 3 dissemination strategy to provide clinicians and families with a more holistic understanding of the circumstances that motivate families to evaluate and pursue treatment options. Although this study was unable to draw firm conclusions regarding the effect of LT on mortality, QOL, or neuropsychological function, the results of this study are complex, and their interpretation is necessarily nuanced. As a result, our dissemination efforts will be made in direct collaboration with patients and families through NUCDF, who will continue to engage members of the UCD community in the further development, finalization, and distribution of dissemination materials.

We developed this study's objectives in direct response to patient-reported concerns regarding the lack of evidence-based information about management options in UCDs. We provide herein the results from the first comparative effectiveness research comparing LT vs MM in the treatment of UCDs. Previous publications evaluating outcomes from LT are uncontrolled, though they generally suggest that LT offers better cognitive protection than MM.31,36,39,40,85 As transplant technologies improve and complication rates decrease, LT is increasingly being discussed as an alternative to MM in patients with UCDs.37 Consequently, the results of this research are anticipated to play an important role in informing the decision-making process of providers and caregivers of patients with UCDs considering LT.

The rich data set of patients with UCDs exposed to each type of treatment used in this study was assembled from >12 years of data from the largest longitudinal natural history study of patients with UCDs via UCDC, data from additional patients enrolled primarily by NUCDF, and data from SPLIT. The key to performing a fair evaluation was to compare UCD-affected individuals of equal severity who are equally likely to be confronted with the choice between MM and LT. Initially, it was thought that patients with UCDs who were identified during the neonatal period and were diagnosed with 1 of 4 disorders in the cycle (CPS1D, OTCD, ASSD, and ASLD) would largely meet these criteria. Although these criteria define a more severely affected cohort, it became clear that there remained a substantial range of severity among patients with neonatal-onset UCDs, whereby those receiving LT still tended to be more severely affected than those not receiving it.

For aim 1, the study employed 2 distinct procedures to compare mortality, QOL, and neuropsychological function in the LT and MM groups. The first procedure focused on using PSs to define comparable study patients in the 2 treatment groups for an evaluation of each outcome at a comparable point following the treatment decision. The second procedure applied an RS-matching approach with imputation to longitudinal data comparing posttreatment decision outcomes in time-matched RSs, which permitted us to treat pre-LT outcome data as MM data in patients destined for LT. Before either method could be implemented effectively, it was necessary to define in the MM group an index date/age comparable to the transplant date/age in the LT group to ensure parallel comparisons preceding the LT treatment decision. The above-described methods made it possible to make use of detailed clinical and demographic data in the pre-index/LT period to match and adjust for differences at the point of outcome comparison.

Our inclusion criteria focused on the most severely affected cohort of patients, based on neonatal onset of diagnosis and type of UCD. We anticipated this group to be equally likely to confront the choice between continuing MM and pursuing LT. Instead, the PS-profiling approach enabled the study to identify 3 distinct groups among these severely affected patients with UCDs. Two of the 3 groups were not comparable: 1 group, based on a milder severity profile, may have virtually never confronted the LT decision, thus continuing with MM; and 1 group, based on a greater severity profile, virtually always chose LT. This indicates that the LT decision is more nuanced than originally thought, even among those broadly considered at higher risk (ie, patients with neonatal-onset UCDs). The LT decision is based on a detailed consideration of the risk profile such that it is virtually always made in the most severely affected patients and rarely made in those considered at lesser severity. The lack of an equivalent number of participants receiving MM who experienced similar severity to those considering LT limited the opportunity to study the effects of LT under such dire clinical conditions.

A third group, which contained an overlapping mixture of LT and MM, shared a common severity profile. This CSS group was the only one that met the criteria of comparability with which to evaluate outcomes of mortality, QOL, and neuropsychological function. It is in this smaller group (58% of the original sample of patients for whom we had covariate and outcome data) that the detailed demographic and clinical severity profiles, including frequency of HAEs, ammonia levels, and LOS during episodes, were comparable and represent the subject of comparisons in PS-based analysis. The RS-matching method found a comparable group by varying the matching caliper, but imbalances remained after matching.

In the common support group based on PS scoring, LT, as expected, is curative of the metabolic disorder based on evidence of complete eradication of HAEs post-LT in our study sample. On the other hand, following the index age, those remaining on MM continue to experience such events, albeit at what appears to be a lesser frequency and severity than those observed before the index age. The elimination of HAEs post-LT came at the price of posttransplant complications, including organ rejection (20%) and retransplantation (10%), as well as high levels of thromboses (>20%), infections and lymphoproliferative disease (25%), and steroid-related disorders (>10%). Armed with these results, the study went on to evaluate the primary outcomes of mortality, QOL, and neuropsychological function in the CSS group.

Overall unadjusted mortality rates in the CSS were similar in the LT and MM groups, reaching about 19.5 per 1000 PY of experience. Twenty-two participants died even before reaching an age where an LT was feasible. Death that occurs before the choice of LT can be offered is common in neonatal-onset UCDs, in which neonatal death is reported to be as high as 50%.4

QOL ATT estimates, including individual total, psychosocial health, and physical scores derived from PedsQL assessments, showed good covariate balance but little evidence of a difference using either PS or RS matching with imputation of missing data. The lack of evidence of a consistent advantage for early LT may reflect the likelihood of substantial and very early damage, even during the neonatal period, associated with the first and usually the most severe HAE(s). The PS-based method produced estimates suggesting a substantial LT advantage in family QOL that reached statistical significance in unadjusted and PS-adjusted comparisons but was not statistically significant in the ridge-matched and adjusted analyses. The higher family QOL may reflect relief from the “ticking time bomb” associated with the complete absence of HAEs in the posttransplant period, a sentiment expressed in many structured interviews with families whose children had undergone LT.

Using the PS-based method, the study evaluated neuropsychological function in the global cognitive, visual sensory, motor, attention/executive, and emotional/behavioral domains based on variable sample size and variable comparability. None of the ATT estimates achieved statistical significance. However, there were consistent results in the global cognitive domain, especially in patients ≥3 years of age, indicating an advantage with LT. There was also consistent evidence that the advantage was greater in those experiencing LT at earlier ages, especially <1 year. These trends may reflect avoidance of some early HAEs with earlier LT and the cessation of neurological insults from HAEs following LT.

That the differences between the LT and MM groups in certain neuropsychological domains occur at mean levels that are poorer than the average function in both groups may explain why the differences do not translate into higher patient QOL. The results in the other domains were less consistent in part due to poorer covariate balance and reduced numbers of assessments. The lack of a more pronounced neuroprotective effect of earlier LT could be because 56% of LT participants had only 1 documented HAE, and 95.8% of LT participants had at most 1 HAE lasting >8 days. In other words, in this cohort, the neurocognitive outcome may have been primarily driven by the irreversible effects of the initial neonatal HAE, thereby limiting the possible salutary effects of a subsequent LT on neuropsychological function. Of the participants, 14.7% were identified by family history and thus avoided neonatal HAEs; however, their numbers were too small to result in firm conclusions regarding outcomes in the absence of a neonatal insult.

The factors that influence treatment choices for families affected by UCDs provide a framework that reflects the various inputs of a highly complex and dynamic personal evaluation of the risks and benefits of treatment alternatives within this patient population. Our qualitative evaluation is novel in that it examines an understudied area of rare disease and provides a model for research regarding treatment decision-making in rare disorders that may be applied to other diseases.

Although there have been no commensurate publications examining treatment decision-making among families affected by UCDs, several of the factors identified through this work, including the influence of peer-to-peer interactions, provider recommendations, and developmental milestones, align with and augment previous research on decision-making in pediatric transplant.75,76,81,86 Dellon et al81 and Higgins and Kayser-Jones76 both described engaging with other affected families and previous transplant recipients as an element of decision-making among patients with cystic fibrosis and complex heart conditions, respectively. These types of peer-to-peer interactions are also reflected in this study's framework as a key driver of treatment choice in patients with UCDs. Dellon et al,81 Hankins et al,75 and Pentz et al86 described trust in the recommendations of medical providers as another common factor for transplant-related decision-making in patients with cystic fibrosis, sickle cell anemia, and pediatric cancer. This concept is discussed in the framework in terms of the metabolic physician's relationship with the family and the impact of their opinion and approach on the caregiver's perception of LT vs MM. Together with the previously published literature, these study findings further support the notion that engagement with peers and guidance from providers both greatly influence treatment choice in complex, chronic pediatric conditions like UCDs, where LT is a consideration.

Previously published qualitative studies addressing patient and family experiences with inherited metabolic disorders identified life transitions as a major challenge for children and families. One such study cited problems with adherence to diet for patients with phenylketonuria during adolescence.87 Others highlighted social transitions across the lifespan as a challenge for patients diagnosed with various inherited metabolic disorders.88-90 The existing literature does not explicitly discuss the role of life transitions in influencing treatment decisions, but rather, it highlights these transitions as a challenge for patients and families. The findings from this study expand on the existing literature by describing not only the inherent challenges of childhood transitions in rare disease but also the ways in which developmental milestones frame treatment choice among families affected by inherited metabolic disorders like UCDs.

This study also contributes new qualitative evidence supporting the role of other factors, not previously described within this context, in driving treatment decisions for children diagnosed with a UCD. This study distinguishes between the function of disease severity and disease stability in mediating treatment choice, expounding on the implications of disease for families and children and their role in treatment decision-making. This study also explores issues of health care quality, cost, and access as they relate to the choice between MM and LT.

The results from this qualitative analysis hold practice implications for physicians and other members of the patient care team. This framework equips providers with an evidence-based account of the patient experience so that they may adapt their approach to treatment counseling to better address the concerns, needs, and expectations of their patients and families. It also allows providers to anticipate those needs and be better prepared for productive family and patient interactions. The results of this qualitative analysis were also used, in combination with the collection of additional focus group data, to inform the development of a dissemination strategy (Appendix C) that addresses some of the main challenges highlighted in our treatment decision-making framework (eg, variation in physician approach to treatment guidance and counseling).

Despite growing interest in patient-centered research and care, historically, the effectiveness of most rare disease interventions has been determined by the evaluation of surrogate clinical outcomes that may not reflect the benefits that patients most value.92 The treatment decision-making framework for UCDs constructed through this analysis begins to meet the objectives of patient-centered outcome measure (PCOM) development in rare diseases. According to the International Rare Diseases Research Consortium (https://irdirc.org/), the development of conceptual models and the definition of patient preferences, core concepts, and values are fundamental first steps in the construction of any patient-centered or patient-reported outcome measure.93,94 This framework acknowledges patients with UCDs and their caregivers as essential experts in their own condition by using their shared experience to construct a description of key challenges. This research defines what families affected by UCD value most in terms of alleviation when considering various treatments for UCDs and thus provides researchers and practitioners with a foundation for the future development of PCOMs to better evaluate and compare the effectiveness of treatments. At present, PCOMs do not exist for UCDs or most other rare inherited metabolic disorders and have not been used consistently in the rare disease medical or research community.93 If developed, these outcome metrics could offer more meaningful estimations of patient benefits that resonate with patients' daily experiences, preferences, expectations, and values and thereby help reduce uncertainty over the effectiveness of treatment for UCDs.91

This study applied a qualitative methodology to a population field for which qualitative methods have scarcely been used. Rare disease patient populations are generally heterogeneous, limited in numbers, and spread throughout a large geographic region. Thus, identifying patients and obtaining sufficient interview and focus group data for a rigorous qualitative study can pose a significant challenge, resulting in a paucity of published, qualitative literature in the field. This study leveraged partnerships with key patient groups and specialist provider networks while employing strategies for remote interviewing and focus group facilitation to demonstrate a viable approach to identifying patients for qualitative research and conducting qualitative data collection in rare disease populations.

Although this study focused on the experience of patients with UCDs, the framework may be translatable to other rare childhood genetic metabolic disorders for which analogous decisions must be made between conventional therapy and transplantation. Examples include maple syrup urine disease, glycogen storage disease type I,95 propionic and methylmalonic acidemia,96 and hyperoxaluria type 1.97

Study Limitations

For aim 1, we used the UCDC natural history study, the largest database available on patients with UCDs. Nevertheless, this voluntary enrollment database may not be representative of the broader UCD population in 2 main ways. First, all UCDC sites are major academic quaternary-care hospitals with typically a high level of both metabolic and transplant expertise, whereas many patients with UCDs outside US metropolitan areas may have limited access to either metabolic or transplant expertise. Although we do not believe this potential bias would differentially impact the LT and MM groups or our analyses comparing these 2 groups, the rates in each group may not be nationally representative. More specifically, the incidence of LT and the effectiveness of either LT or MM may be higher in this database than nationally. In addition, the incidence of safety outcomes following LT or with MM may be lower than the national average. Second, patients referred to and enrolled in this study are more likely to have survived long enough to have a UCD diagnosis. Despite the best efforts by the UCDC to reduce this bias, both neonatal-onset UCDs and reported death among patients with UCDs8,64 are likely underrepresented in the UCDC cohort. Whether this survival bias differentially affects the comparison of MM and LT is unknown and would be useful to investigate further in follow-up studies.

Our results in aim 1, comparing outcomes in the LT and MM groups, have more limited generalizability than planned. We used causal inference in a comparative cohort design instead of a randomized controlled trial, which is infeasible in practice. We restricted our analyses to US patients with UCDs who present in the neonatal period and have virtually limited urea cycle function, as these patients were often the most likely candidates for an LT. Although we presumed in the planning stage that this group was uniform with respect to disease severity and treatment options, we found more heterogeneity in our analysis than we expected. As a group, LT patients had more severe disease than did MM patients. To restrict inference to comparable medical history groups, LT patients with a more severe history than MM patients and MM patients with a less severe medical history than any LT patient were excluded from our analyses. This reduced our sample size by up to 40% and greatly limited our capacity to draw firm conclusions. Additionally, our analyses consequently produced results pertinent only to a subset of patients with neonatal-onset UCDs of intermediate severity. Our conclusions may not be applicable and thus should not be generalized, for instance, to those UCD patients with hyperammonemia refractory to MM resulting in numerous hospitalizations, nor to those with attenuated disease severity.

There are some potential confounding variables for which we could not adjust in our causal inference methods. Our analyses adjusted for elevated blood ammonia levels, whether in duration, frequency, or peak level, as those are believed to be the primary modulators of neurological injury and thus to directly impact survival and neurocognitive outcomes. However, covariates not included in this analysis, including other blood or central nervous system biomarkers, other genes, or environmental interactions, may have a larger-than-anticipated role in determining the ultimate phenotype in UCDs. If the incidence of these conditions differed between LT and MM groups, as we saw for other medical history variables, this could have biased our analyses and compromised internal validity.

Finally, missing data, including ~35% of outcome variables, further reduced our power for detecting differences. Furthermore, there was an indication that the length of follow-up and degree of missing values differed between the LT and MM groups and could have biased our results, although we tried to adjust for that in aim 1 with multiple-imputation methods to estimate values up until loss to follow-up. There is a tendency for persons treated by LT and no longer experiencing the metabolic consequences of UCD to be lost to follow-up at the metabolic specialty sites participating in the UCDC natural history study. This could lead to fewer assessments from patients, especially LT recipients experiencing better outcomes, which would operate against the detection of LT benefit. In recognition of this problem, we expended extra effort to obtain outcome data on patients no longer being followed at participating UCDC sites. This reduced gaps in our outcome data, but it is difficult to know how much it mitigated bias.

The limitations of aim 2 parallel those of aim 1. The participant sample for the aim 2 study may be biased by recruitment source and strategy. Most caregiver recruitment was conducted via NUCDF, a nonprofit advocacy organization for patients with UCDs and a resource of information and education for families affected by UCDs. Therefore, the study sample may not capture the perspective of individuals who have not engaged on some level with this organization or the UCD community. As with aim 1 participants, the aim 2 caregiver participant sample is skewed toward a predominantly White, educated, and affluent demographic. It is possible that the experience of these individuals differs systematically from the experience of those who were not interviewed. In addition, given the sensitive nature of their experience, caregivers whose child had died from complications related to UCD or LT were not interviewed. Efforts were made to reach out and offer study participation to several families in this position, but the contacted families declined. Thus, the study sample may not capture the perspective of individuals who lost a child in response to either treatment choice and therefore may omit key elements of their experience.

Conclusions

The objectives of this comparative effectiveness research study were to provide patients with UCDs, families, and providers with evidence of survivorship, neurocognitive development, and QOL for the 2 major UCD treatment options: (1) MM and (2) LT. We also investigated how families of patients with UCDs make the decision to continue MM or consider LT and described the issues that influence their decision to pursue one option over another. With the novel insights into the UCD patient experience gleaned from this research, we crafted a dissemination strategy based on study results that meets the expressed needs of patients with UCDs and their families (Appendix C) and best aligns with the decision-making process described through our analysis.

Despite meeting the goal of creating generally fair comparisons based on sample selection and methods to balance important covariates, we were unable to draw statistically significant conclusions about the effect of LT on mortality, QOL, or neuropsychological function relative to MM. This situation arose mainly because the process of attaining comparable groups led to a loss of substantial sample size and statistical power. Nevertheless, the study was able to identify some consistent patterns within the common cohort based on fair comparisons that are useful for developing better-informed hypotheses to be evaluated in larger samples that provide sufficient power to formally confirm or refute our results. LT is clearly effective at restoring the urea cycle function based on the absence of HAEs in the posttransplant period. This advantage came at the price of posttransplant complications. Unfortunately, we found sparse evidence that cure of the metabolic derangement translated into comparable improvement of outcomes relative to MM. However, there was an indication of higher family QOL in those receiving LT that may reflect relief after transplant from the “ticking time bomb” of HAEs. Multiple neuropsychological assessments reflecting improved global and language function in the LT group, especially in those receiving LT at an earlier age, may also reflect relief from HAEs.

The conceptual framework developed through this study provides clinicians with new information on the shifting drivers of treatment choice as well as the developmental milestones that mediate how these factors are perceived by caregivers in their effort to weigh the risks and benefits of LT vs MM. With a clearer understanding of the factors that drive decision-making among UCD caregivers, providers may be better positioned to anticipate and respond to the needs and priorities of families affected by UCDs. Our dissemination strategy was in fact developed through our new understanding of the UCD patient experience and will guide our efforts to disseminate the complex evidence derived through this study.

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Related Publications

  1. Gerstein MT, Markus AR, Gianattasio KZ, et al. Choosing between medical management and liver transplant in urea cycle disorders: a conceptual framework for parental treatment decision-making in rare disease. J Inherit Metab Dis. 2020;43(3):438-458. [PMC free article: PMC7318329] [PubMed: 31883128]
  2. Gerstein MT, Markus AR, Gianattasio K, et al. Choosing between medical management and liver transplantation in urea cycle disorders: a qualitative evaluation of parent decisionmaking. Presented at: Society for Inherited Metabolic Disorders Annual Meeting; April 6-9, 2019; Bellevue, WA.

Acknowledgments

We thank Dr Benjamin Goodlett for performing neuropsychological evaluations and providing an interpretation of the neuropsychological data. We thank Kirk Williamson and Kan Gianattasio for participating in the conduct of phone interviews and focus groups and for assisting with open coding of transcripts. We thank the members of the NIH RDCRN Data Management Coordinating Center for their expert support.

Research reported in this report was funded through a Patient-Centered Outcomes Research Institute® (PCORI®) Award (#CER-1502-27816). Further information available at: https://www.pcori.org/research-results/2015/comparing-treatment-options-urea-cycle-disorders

Appendices

Appendix A.

Additional Tables and Figures (PDF, 2.2M)

Institution Receiving Award: Children's National Health System
Original Project Title: Comparative Effectiveness of Therapy in Rare Diseases: Liver Transplantation vs. Conservative Management of Urea Cycle Disorders
PCORI ID: CER-1502-27816
ClinicalTrials.gov ID: NCT02740153

Suggested citation:

Ah Mew N, McCarter R, Izem R, et al. (2020). Comparing Treatment Options for Urea Cycle Disorders. Patient-Centered Outcomes Research Institute (PCORI). https://doi.org/10.25302/12.20.CER.150227816

Disclaimer

The [views, statements, opinions] presented in this report are solely the responsibility of the author(s) and do not necessarily represent the views of the Patient-Centered Outcomes Research Institute® (PCORI®), its Board of Governors or Methodology Committee.

Copyright © 2020. Children's National Health System. All Rights Reserved.

This book is distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs License which permits noncommercial use and distribution provided the original author(s) and source are credited. (See https://creativecommons.org/licenses/by-nc-nd/4.0/

Bookshelf ID: NBK596543PMID: 37878738DOI: 10.25302/12.20.CER.150227816

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