Research Center of Biostatistics and Computational Pharmacy, China Pharmaceutical University, Nanjing, China.
Stat Methods Med Res. 2021 Mar;30(3):904-915. doi: 10.1177/0962280220980780. Epub 2020 Dec 23.
A delayed treatment effect is often observed in the confirmatory trials for immunotherapies and is reflected by a delayed separation of the survival curves of the immunotherapy groups versus the control groups. This phenomenon makes the design based on the log-rank test not applicable because this design would violate the proportional hazard assumption and cause loss of power. Thus, we propose a group sequential design allowing early termination on the basis of efficacy based on a more powerful piecewise weighted log-rank test for an immunotherapy trial with a delayed treatment effect. We present an approach on the group sequential monitoring, in which the information time is defined based on the number of events occurring after the delay time. Furthermore, we developed a one-dimensional search algorithm to determine the required maximum sample size for the proposed design, which uses an analytical estimation obtained by the inflation factor as an initial value and an empirical power function calculated by a simulation-based procedure as an objective function. In the simulation, we tested the unstable accuracy of the analytical estimation, the consistent accuracy of the maximum sample size determined by the search algorithm and the advantages of the proposed design on saving sample size.
免疫疗法的确证性试验中常观察到延迟治疗效果,这表现为免疫治疗组与对照组的生存曲线逐渐分离。这种现象使得基于对数秩检验的设计不再适用,因为这种设计会违反比例风险假设并导致效能损失。因此,我们提出了一种基于疗效的分组序贯设计,允许基于更强大的分段加权对数秩检验提前终止,该检验适用于具有延迟治疗效果的免疫疗法试验。我们提出了一种分组序贯监测方法,其中信息时间基于延迟时间后发生的事件数量来定义。此外,我们开发了一种一维搜索算法来确定所提出设计所需的最大样本量,该算法使用膨胀因子获得的解析估计作为初始值,并使用基于模拟的过程计算的经验效能函数作为目标函数。在模拟中,我们测试了解析估计的不稳定精度、搜索算法确定的最大样本量的一致精度以及该设计在节省样本量方面的优势。