Leveraging real-world data to conduct externally controlled trial for rare diseases with count-type endpoints: utilizing multiple entries - a simulation study.

IF 1.2 4区 医学 Q4 PHARMACOLOGY & PHARMACY Journal of Biopharmaceutical Statistics Pub Date : 2024-10-27 DOI:10.1080/10543406.2024.2420644
Tianyu Sun, Eileen Liao, Nan Shao, Junxiang Luo
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Abstract

Conducting randomized controlled trials for medications targeting rare diseases presents significant challenges, due to the scarcity of participants and ethical considerations. Under such circumstances, leveraging real-world data (RWD) to generate supporting evidence may be accepted by the regulatory agency. Constructing an external control arm (ECA) from RWD for a single-arm trial has been conducted occasionally. A complication in this design is that patients from RWD may be eligible at multiple time points. Most studies approach this by selecting one time point as the index date for ECA patients. Here, we propose a novel design for externally controlled trials that permits the inclusion of ECA patients at various entry points. Accompanying this design, we make recommendations for statistical methods to account for measured confounders, limited sample size, within-subject correlation, and potential overdispersion inherent in count data. Furthermore, we present an idea for the blinding process for this type of study. We have conducted a series of simulations to assess the performance of the design and statistical methods in terms of bias, type I error, and efficiency, as compared to the approach of selecting only one entry per ECA patient. The study and parameter setup were based on a hypothetical case inspired by a rare disease study. The results indicate that allowing multiple entries for ECA patients can lead to enhanced performance in many aspects. It provides a controlled type I error, robustness against certain model misspecifications, and a moderate power improvement compared with selecting a single entry per ECA patient.

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利用真实世界的数据开展以计数型终点为对象的罕见病外部对照试验:利用多个条目--一项模拟研究。
由于参与者稀少和伦理方面的考虑,针对罕见病药物开展随机对照试验面临巨大挑战。在这种情况下,监管机构可能会接受利用真实世界数据(RWD)来生成支持性证据。利用真实世界数据为单臂试验构建外部对照臂(ECA)的做法偶尔也会出现。这种设计的一个复杂问题是,RWD 中的患者可能在多个时间点都符合条件。大多数研究通过选择一个时间点作为 ECA 患者的指标日期来解决这一问题。在此,我们提出了一种外部对照试验的新设计,允许在不同的起始点纳入 ECA 患者。在采用这种设计的同时,我们还对统计方法提出了建议,以考虑到计量混杂因素、有限的样本量、受试者内部相关性以及计数数据固有的潜在过度分散性。此外,我们还就此类研究的盲法过程提出了一个想法。我们进行了一系列模拟,以评估该设计和统计方法在偏差、I 型误差和效率方面的表现,并与每个 ECA 患者只选择一个条目的方法进行比较。研究和参数设置基于一个由罕见病研究启发的假设病例。结果表明,允许 ECA 患者有多个条目可在许多方面提高性能。与每个 ECA 患者只选择一个条目相比,它提供了可控的 I 型误差、对某些模型错误设置的稳健性和适度的功率改进。
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来源期刊
Journal of Biopharmaceutical Statistics
Journal of Biopharmaceutical Statistics 医学-统计学与概率论
CiteScore
2.50
自引率
18.20%
发文量
71
审稿时长
6-12 weeks
期刊介绍: The Journal of Biopharmaceutical Statistics, a rapid publication journal, discusses quality applications of statistics in biopharmaceutical research and development. Now publishing six times per year, it includes expositions of statistical methodology with immediate applicability to biopharmaceutical research in the form of full-length and short manuscripts, review articles, selected/invited conference papers, short articles, and letters to the editor. Addressing timely and provocative topics important to the biostatistical profession, the journal covers: Drug, device, and biological research and development; Drug screening and drug design; Assessment of pharmacological activity; Pharmaceutical formulation and scale-up; Preclinical safety assessment; Bioavailability, bioequivalence, and pharmacokinetics; Phase, I, II, and III clinical development including complex innovative designs; Premarket approval assessment of clinical safety; Postmarketing surveillance; Big data and artificial intelligence and applications.
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