Cheung Ken, Mitsumoto Hiroshi
Mailman School of Public Health, Columbia University, New York City, New York, United States of America.
Columbia University Irving Medical Center, Columbia University, New York City, New York, United States of America.
Harv Data Sci Rev. 2022;2022(Spec Iss 3). doi: 10.1162/99608f92.e11adff0. Epub 2022 Sep 8.
For rare diseases, conducting large, randomized trials of new treatments can be infeasible due to limited sample size, and it may answer the wrong scientific questions due to heterogeneity of treatment effects. Personalized (N-of-1) trials are multi-period crossover studies that aim to estimate individual treatment effects, thereby identifying the optimal treatments for individuals. This article examines the statistical design issues of evaluating a personalized (N-of-1) treatment program in people with amyotrophic lateral sclerosis (ALS). We propose an evaluation framework based on an analytical model for longitudinal data observed in a personalized trial. Under this framework, we address two design parameters: length of experimentation in each trial and number of trials needed. For the former, we consider patient-centric design criteria that aim to maximize the benefits of enrolled patients. Using theoretical investigation and numerical studies, we demonstrate that, from a patient's perspective, the duration of an experimentation period should be no longer than one-third of the entire follow-up period of the trial. For the latter, we provide analytical formulae to calculate the power for testing quality improvement due to personalized trials in a randomized evaluation program and hence determine the required number of trials needed for the program. We apply our theoretical results to design an evaluation program for ALS treatments informed by pilot data and show that the length of experimentation has a small impact on power relative to other factors such as the degree of heterogeneity of treatment effects.
对于罕见病而言,由于样本量有限,开展新疗法的大型随机试验可能不可行,而且由于治疗效果的异质性,此类试验可能回答了错误的科学问题。个性化(单病例)试验是多阶段交叉研究,旨在估计个体治疗效果,从而为个体确定最佳治疗方案。本文探讨了评估肌萎缩侧索硬化症(ALS)患者个性化(单病例)治疗方案的统计设计问题。我们基于个性化试验中观察到的纵向数据的分析模型提出了一个评估框架。在此框架下,我们探讨两个设计参数:每次试验的实验时长和所需试验次数。对于前者,我们考虑以患者为中心的设计标准,旨在使入组患者的获益最大化。通过理论研究和数值分析,我们证明,从患者角度来看,实验期的时长不应超过试验整个随访期的三分之一。对于后者,我们提供分析公式,用于计算在随机评估方案中检验个性化试验带来的质量改善的效能,从而确定该方案所需的试验次数。我们将理论结果应用于根据试点数据设计ALS治疗评估方案,并表明相对于治疗效果异质性程度等其他因素,实验时长对效能的影响较小。