Department of Biostatistics & Data Science, University of Kansas Cancer Center, Kansas City, Kansas, USA.
Department of Population Health, University of Kansas Medical Center, Kansas City, Kansas, USA.
J Biopharm Stat. 2024 Jul 3;34(4):513-525. doi: 10.1080/10543406.2023.2233598. Epub 2023 Jul 7.
Clinical trials powered to detect subgroup effects provide the most reliable data on heterogeneity of treatment effect among different subpopulations. However, pre-specified subgroup analysis is not always practical and post hoc analysis results should be examined cautiously. Bayesian hierarchical modelling provides grounds for defining a controlled post hoc analysis plan that is developed after seeing outcome data for the population but before unblinding the outcome by subgroup. Using simulation based on the results from a tobacco cessation clinical trial conducted among the general population, we defined an analysis plan to assess treatment effect among American Indians and Alaska Natives (AI/AN) enrolled in the study. Patients were randomized into two arms using Bayesian adaptive design. For the opt-in arm, clinicians offered a cessation treatment plan after verifying that a patient was ready to quit. For the opt-out arm, clinicians provided all participants with free cessation medications and referred them to a Quitline. The study was powered to test a hypothesis of significantly higher quit rates for the opt-out arm at one-month post randomization. Overall, one-month abstinence rates were 15.9% and 21.5% (opt-in and opt-out arm, respectively). For AI/AN, one-month abstinence rates were 10.2% and 22.0% (opt-in and opt-out arm, respectively). The posterior probability that the abstinence rate in the treatment arm is higher is 0.96, indicating that AI/AN demonstrate response to treatment at almost the same probability as the whole population.
临床实验旨在检测亚组效应,为不同亚人群中治疗效果的异质性提供最可靠的数据。然而,预先指定的亚组分析并不总是可行的,事后分析结果应谨慎检验。贝叶斯分层模型为定义事后分析计划提供了依据,该计划是在看到总体人群的结局数据后但在亚组结果揭盲前制定的。我们基于一项在普通人群中进行的戒烟临床试验结果进行模拟,为该研究中纳入的美国印第安人和阿拉斯加原住民(AI/AN)定义了一种评估治疗效果的分析计划。患者使用贝叶斯自适应设计被随机分配到两个治疗组。在选择加入组中,临床医生在确认患者准备戒烟后提供戒烟治疗计划。在选择退出组中,临床医生为所有参与者提供免费戒烟药物并将他们转介至戒烟热线。该研究旨在检验一个假设,即在随机分组后一个月,选择退出组的戒烟率显著更高。总体而言,一个月的戒烟率为 15.9%和 21.5%(分别为选择加入和选择退出组)。对于 AI/AN,一个月的戒烟率分别为 10.2%和 22.0%(分别为选择加入和选择退出组)。治疗组的戒烟率更高的后验概率为 0.96,表明 AI/AN 对治疗的反应与总体人群几乎相同。