This research was motivated by studying anti-drug antibody (ADA) formation and its potential impact on long-term benefit of a biologic treatment in a randomized controlled trial, in which ADA status was not only unobserved in the control arm but also in a subset of patients from the experimental treatment arm. Recent literature considers the principal stratum estimand strategy to estimate treatment effect in groups of patients defined by an intercurrent status, i.e. in groups defined by a post-randomization variable only observed in one arm and potentially associated with the outcome. However, status information might be missing even for a non-negligible number of patients in the experimental arm. For this setting, a novel weighted principal stratum approach is presented: Data from patients with missing intercurrent event status were re-weighted based on baseline covariates and additional longitudinal information. A theoretical justification of the proposed approach is provided for different types of outcomes, and assumptions allowing for causal conclusions on treatment effect are specified and investigated. Simulations demonstrated that the proposed method yielded valid inference and was robust against certain violations of assumptions. The method was shown to perform well in a clinical study with ADA status as an intercurrent event.
翻译:这项研究的动机是研究在随机控制的试验中进行反毒品抗体(ADA)的形成及其对生物治疗的长期好处的潜在影响,在这种试验中,ADA的地位不仅没有出现在控制部门,而且没有出现在实验治疗部门的一组病人中。最近的一些文献审议了主要分层估计战略,以估计由一种间状态界定的一组病人的治疗效果,即只在一个手臂上观察到并且与结果有潜在联系的被放逐后变数所定义的群体中的治疗效果。但是,即使试验部门中无法忽略的病人人数,也可能缺少状况信息。但是,在这一背景下,提出了一种新的加权主要分层方法:根据基线共变数和额外的纵向信息,重新加权了失踪事件状态病人的数据。为不同类型的结果提供了拟议方法的理论依据,并具体说明和调查了允许就治疗效果作出因果关系结论的假设。模拟表明,拟议的方法确实具有推论力,而且针对某些假设的违反情况。该方法在临床研究中显示,在临床状态下进行了良好的临床研究。