论文标题
主要层策略:药物开发中的潜在作用
Principal Stratum Strategy: Potential Role in Drug Development
论文作者
论文摘要
一项随机试验允许估计干预措施的因果效应与总体中的对照以及基线特征定义的亚群中的对照相比。然而,通常,关于患者亚群的治疗效果也会出现临床问题,这将在随机化后经历临床或疾病相关的事件。在治疗开始后发生并可能影响测量的解释或存在的事件称为ICH E9(R1)指南中的{\ it IT IT IT互相事件}。如果发生间事件是治疗的结果,那么仅随机化就不足以有意义地估计治疗效果。分析比较没有发生间断事件的患者的亚组进行干预和控制将无法估计因果关系。这是众所周知的,但是这种事后分析通常是在药物开发中进行的。另一种方法是主要层策略,该策略根据受试者的潜在发生在两个研究臂上的事件的可能发生。我们用示例说明,通过主要地层提出的问题自然出现在药物开发中,并认为与ICH E9(R1)估算和框架一起解决这些问题有可能导致更透明的假设以及更充分的分析和更加充分的分析和结论。此外,我们还概述了估计主层中效应所需的假设。这些假设中的大多数都是无法验证的,因此应该基于牢固的科学理解。需要进行灵敏度分析以评估结论的鲁棒性。
A randomized trial allows estimation of the causal effect of an intervention compared to a control in the overall population and in subpopulations defined by baseline characteristics. Often, however, clinical questions also arise regarding the treatment effect in subpopulations of patients, which would experience clinical or disease related events post-randomization. Events that occur after treatment initiation and potentially affect the interpretation or the existence of the measurements are called {\it intercurrent events} in the ICH E9(R1) guideline. If the intercurrent event is a consequence of treatment, randomization alone is no longer sufficient to meaningfully estimate the treatment effect. Analyses comparing the subgroups of patients without the intercurrent events for intervention and control will not estimate a causal effect. This is well known, but post-hoc analyses of this kind are commonly performed in drug development. An alternative approach is the principal stratum strategy, which classifies subjects according to their potential occurrence of an intercurrent event on both study arms. We illustrate with examples that questions formulated through principal strata occur naturally in drug development and argue that approaching these questions with the ICH E9(R1) estimand framework has the potential to lead to more transparent assumptions as well as more adequate analyses and conclusions. In addition, we provide an overview of assumptions required for estimation of effects in principal strata. Most of these assumptions are unverifiable and should hence be based on solid scientific understanding. Sensitivity analyses are needed to assess robustness of conclusions.