University of Chicago, Chicago, Illinois, USA.
University of Colorado Denver, Aurora, Colorado, USA.
Biometrics. 2023 Jun;79(2):1042-1056. doi: 10.1111/biom.13705. Epub 2022 Jul 11.
In causal mediation studies that decompose an average treatment effect into indirect and direct effects, examples of posttreatment confounding are abundant. In the presence of treatment-by-mediator interactions, past research has generally considered it infeasible to adjust for a posttreatment confounder of the mediator-outcome relationship due to incomplete information: for any given individual, a posttreatment confounder is observed under the actual treatment condition while missing under the counterfactual treatment condition. This paper proposes a new sensitivity analysis strategy for handling posttreatment confounding and incorporates it into weighting-based causal mediation analysis. The key is to obtain the conditional distribution of the posttreatment confounder under the counterfactual treatment as a function of not only pretreatment covariates but also its counterpart under the actual treatment. The sensitivity analysis then generates a bound for the natural indirect effect and that for the natural direct effect over a plausible range of the conditional correlation between the posttreatment confounder under the actual and that under the counterfactual conditions. Implemented through either imputation or integration, the strategy is suitable for binary as well as continuous measures of posttreatment confounders. Simulation results demonstrate major strengths and potential limitations of this new solution. A reanalysis of the National Evaluation of Welfare-to-Work Strategies (NEWWS) Riverside data reveals that the initial analytic results are sensitive to omitted posttreatment confounding.
在因果中介效应研究中,将平均处理效应分解为间接效应和直接效应,有许多后处理混杂的例子。在存在处理-中介交互作用的情况下,由于信息不完全,过去的研究普遍认为调整中介-结局关系的后处理混杂因素是不可行的:对于任何给定的个体,在实际治疗条件下观察到后处理混杂因素,而在反事实治疗条件下则缺失。本文提出了一种新的处理后处理混杂的敏感性分析策略,并将其纳入基于权重的因果中介分析中。关键是获得反事实治疗下的后处理混杂因素的条件分布,它不仅取决于预处理协变量,还取决于实际治疗下的对应变量。敏感性分析然后生成实际和反事实条件下后处理混杂因素之间条件相关的合理范围内的自然间接效应和自然直接效应的界。通过插补或积分实现的策略适用于二分类和连续的后处理混杂因素的测量。通过模拟结果证明了这种新解决方案的主要优势和潜在局限性。对国家福利到工作策略评估(NEWWS)河滨数据的重新分析表明,最初的分析结果对遗漏的后处理混杂因素很敏感。