Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, Kansas, USA.
J Biopharm Stat. 2024 Jul 3;34(4):596-611. doi: 10.1080/10543406.2023.2244056. Epub 2023 Aug 14.
As part of the drug development process, interim analysis is frequently used to design efficient phase II clinical trials. A stochastic curtailment framework is often deployed wherein a decision to continue or curtail the trial is taken at each interim look based on the likelihood of observing a positive or negative treatment effect if the trial were to continue to its anticipated end. Thus, curtailment can take place due to evidence of early efficacy or futility. Traditionally, in the case of time-to-event endpoints, interim monitoring is conducted in a two-arm clinical trial using the log-rank test, often with the assumption of proportional hazards. However, when this is violated, the log-rank test may not be appropriate, resulting in loss of power and subsequently inaccurate sample sizes. In this paper, we propose stochastic curtailment methods for two-arm phase II trial with the flexibility to allow non-proportional hazards. The proposed methods are built utilizing the concept of relative time assuming that the survival times in the two treatment arms follow two different Weibull distributions. Three methods - conditional power, predictive power and Bayesian predictive probability - are discussed along with corresponding sample size calculations. The monitoring strategy is discussed with a real-life example.
作为药物开发过程的一部分,中期分析经常被用于设计高效的 II 期临床试验。在随机终止框架中,通常会根据继续进行试验是否会观察到阳性或阴性治疗效果的可能性,在每次中期观察时做出继续或终止试验的决策。因此,由于早期疗效或无效的证据,可能会进行终止。传统上,在时间事件终点的情况下,使用对数秩检验在两臂临床试验中进行中期监测,通常假设比例风险。然而,当违反这一假设时,对数秩检验可能不合适,导致功效丧失,进而导致不准确的样本量。在本文中,我们提出了具有允许非比例风险灵活性的两臂 II 期试验的随机终止方法。所提出的方法是利用相对时间的概念构建的,假设两个治疗臂中的生存时间遵循两个不同的威布尔分布。讨论了三种方法 - 条件功效、预测功效和贝叶斯预测概率 - 以及相应的样本量计算。讨论了监测策略,并结合实际示例进行了说明。