Steingrimsson Jon Arni, Betz Joshua, Qian Tianchen, Rosenblum Michael
Department of Biostatistics, Brown University, 121 South Main Street, Providence, RI 02903, USA.
Department of Biostatistics, Johns Hopkins University, 615 North Wolfe Street, Baltimore, MD 21205, USA.
Biostatistics. 2021 Apr 10;22(2):283-297. doi: 10.1093/biostatistics/kxz030.
We consider the problem of designing a confirmatory randomized trial for comparing two treatments versus a common control in two disjoint subpopulations. The subpopulations could be defined in terms of a biomarker or disease severity measured at baseline. The goal is to determine which treatments benefit which subpopulations. We develop a new class of adaptive enrichment designs tailored to solving this problem. Adaptive enrichment designs involve a preplanned rule for modifying enrollment based on accruing data in an ongoing trial. At the interim analysis after each stage, for each subpopulation, the preplanned rule may decide to stop enrollment or to stop randomizing participants to one or more study arms. The motivation for this adaptive feature is that interim data may indicate that a subpopulation, such as those with lower disease severity at baseline, is unlikely to benefit from a particular treatment while uncertainty remains for the other treatment and/or subpopulation. We optimize these adaptive designs to have the minimum expected sample size under power and Type I error constraints. We compare the performance of the optimized adaptive design versus an optimized nonadaptive (single stage) design. Our approach is demonstrated in simulation studies that mimic features of a completed trial of a medical device for treating heart failure. The optimized adaptive design has $25%$ smaller expected sample size compared to the optimized nonadaptive design; however, the cost is that the optimized adaptive design has $8%$ greater maximum sample size. Open-source software that implements the trial design optimization is provided, allowing users to investigate the tradeoffs in using the proposed adaptive versus standard designs.
我们考虑设计一项确证性随机试验的问题,该试验用于在两个不相交的亚组中比较两种治疗方法与一种共同对照。亚组可以根据基线时测量的生物标志物或疾病严重程度来定义。目标是确定哪种治疗方法对哪些亚组有益。我们开发了一类新的适应性富集设计,专门用于解决这个问题。适应性富集设计涉及一个预先规划的规则,用于根据正在进行的试验中积累的数据修改入组情况。在每个阶段后的中期分析中,对于每个亚组,预先规划的规则可能决定停止入组,或者停止将参与者随机分配到一个或多个研究组。这种适应性特征的动机是,中期数据可能表明某个亚组,比如那些基线疾病严重程度较低的亚组,不太可能从某种特定治疗中获益,而另一种治疗和/或亚组仍存在不确定性。我们对这些适应性设计进行优化,使其在检验效能和一类错误约束下具有最小的预期样本量。我们比较了优化后的适应性设计与优化后的非适应性(单阶段)设计的性能。我们的方法在模拟研究中得到了验证,这些模拟研究模仿了一项用于治疗心力衰竭的医疗器械的完整试验的特征。与优化后的非适应性设计相比,优化后的适应性设计的预期样本量小25%;然而,代价是优化后的适应性设计的最大样本量要大8%。我们提供了实现试验设计优化的开源软件,允许用户研究使用所提出的适应性设计与标准设计之间的权衡。