Department of Statistics, North Carolina State University, Raleigh, North Carolina, USA.
J Biopharm Stat. 2024 Oct;34(6):922-943. doi: 10.1080/10543406.2024.2330216. Epub 2024 Mar 23.
Due to the heterogeneity of the randomized controlled trial (RCT) and external target populations, the estimated treatment effect from the RCT is not directly applicable to the target population. For example, the patient characteristics of the ACTG 175 HIV trial are significantly different from that of the three external target populations of interest: US early-stage HIV patients, Thailand HIV patients, and southern Ethiopia HIV patients. This paper considers several methods to transport the treatment effect from the ACTG 175 HIV trial to the target populations beyond the trial population. Most transport methods focus on continuous and binary outcomes; on the contrary, we derive and discuss several transport methods for survival outcomes: an outcome regression method based on a Cox proportional hazard (PH) model, an inverse probability weighting method based on the models for treatment assignment, sampling score, and censoring, and a doubly robust method that combines both methods, called the augmented calibration weighting (ACW) method. However, as the PH assumption was found to be incorrect for the ACTG 175 trial, the methods that depend on the PH assumption may lead to the biased quantification of the treatment effect. To account for the violation of the PH assumption, we extend the ACW method with the linear spline-based hazard regression model that does not require the PH assumption. Applying the aforementioned methods for transportability, we explore the effect of PH assumption, or the violation thereof, on transporting the survival results from the ACTG 175 trial to various external populations.
由于随机对照试验(RCT)和外部目标人群的异质性,RCT 估计的治疗效果不能直接应用于目标人群。例如,ACTG 175 HIV 试验的患者特征与三个外部目标人群(美国早期 HIV 患者、泰国 HIV 患者和埃塞俄比亚南部 HIV 患者)有显著差异。本文考虑了几种将 ACTG 175 HIV 试验的治疗效果传递给试验人群以外的目标人群的方法。大多数传递方法都集中在连续和二分类结果上;相反,我们推导出并讨论了几种用于生存结果的传递方法:基于 Cox 比例风险(PH)模型的结果回归方法、基于治疗分配模型、抽样评分和删失的逆概率加权方法,以及一种结合了这两种方法的双重稳健方法,称为增强校准加权(ACW)方法。然而,由于 ACTG 175 试验中的 PH 假设被发现是不正确的,因此依赖 PH 假设的方法可能会导致治疗效果的偏差量化。为了解决 PH 假设的违反问题,我们扩展了 ACW 方法,采用了不需要 PH 假设的基于线性样条的风险回归模型。应用上述传递性方法,我们探讨了 PH 假设的违反对将 ACTG 175 试验的生存结果传递到各种外部人群的影响。