沃尔夫拉姆综合征神经变性的临床试验:新颖的设计、终点和分析模型

Guoqiao Wang, Zhaolong Adrian Li, Ling Chen, Heather Lugar, Tamara Hershey
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引用次数: 0

摘要

目标沃尔夫拉姆综合征是一种极为罕见的疾病,目前缺乏有效的治疗方案。这种疾病的罕见性为临床试验的开展带来了巨大挑战,尤其是在获得足够的统计功率(如 80%)方面。本研究的目的是根据真实世界的数据提出一种新的临床试验设计,以减少沃尔夫拉姆综合征临床试验所需的样本量。方法我们提出的新型临床试验设计有三个主要特点,旨在减少样本量并提高效率:(i) 汇集华盛顿大学沃尔夫拉姆研究诊所开展的纵向观察研究中的历史/外部对照。(ii) 利用运行数据估算模型参数。(iii) 使用多变量比例线性混合效应模型同时追踪两个终点的治疗效果。结果根据沃尔夫拉姆综合征纵向观察研究获得的实际数据进行了全面模拟。我们的模拟结果表明,这种拟议的设计可以大大减少对样本量的要求。具体来说,如果采用双变量终点并纳入运行期数据,假设安慰剂进展率在运行期和随机期保持一致,则每组约 30 个样本可达到 80% 以上的功率。如果安慰剂的进展率不尽相同,每组的样本量就会增加到约 50 个。结论对于沃尔夫拉姆综合征等罕见病,利用现有资源(如历史/外部对照和运行期数据)以及使用双变量/多变量终点评估综合治疗效果,可以大大加快新药的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical Trials for Wolfram Syndrome Neurodegeneration: Novel Design, Endpoints, and Analysis Models
Objective Wolfram syndrome, an ultra-rare condition, currently lacks effective treatment options. The rarity of this disease presents significant challenges in conducting clinical trials, particularly in achieving sufficient statistical power (e.g., 80%). The objective of this study is to propose a novel clinical trial design based on real-world data to reduce the sample size required for conducting clinical trials for Wolfram syndrome. Methods We propose a novel clinical trial design with three key features aimed at reducing sample size and improve efficiency: (i) Pooling historical/external controls from a longitudinal observational study conducted by the Washington University Wolfram Research Clinic. (ii) Utilizing run-in data to estimate model parameters. (iii) Simultaneously tracking treatment effects in two endpoints using a multivariate proportional linear mixed effects model. Results Comprehensive simulations were conducted based on real-world data obtained through the Wolfram syndrome longitudinal observational study. Our simulations demonstrate that this proposed design can substantially reduce sample size requirements. Specifically, with a bivariate endpoint and the inclusion of run-in data, a sample size of approximately 30 per group can achieve over 80% power, assuming the placebo progression rate remains consistent during both the run-in and randomized periods. In cases where the placebo progression rate varies, the sample size increases to approximately 50 per group. Conclusions For rare diseases like Wolfram syndrome, leveraging existing resources such as historical/external controls and run-in data, along with evaluating comprehensive treatment effects using bivariate/multivariate endpoints, can significantly expedite the development of new drugs.
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