In causal mediation studies that decompose an average treatment effect into a natural indirect effect (NIE) and a natural direct effect (NDE), examples of post-treatment confounding are abundant. Past research has generally considered it infeasible to adjust for a post-treatment confounder of the mediator-outcome relationship due to incomplete information: it is observed under the actual treatment condition while missing under the counterfactual treatment condition. This study proposes a new sensitivity analysis strategy for handling post-treatment confounding and incorporates it into weighting-based causal mediation analysis without making extra identification assumptions. Under the sequential ignorability of the treatment assignment and of the mediator, we obtain the conditional distribution of the post-treatment confounder under the counterfactual treatment as a function of not just pretreatment covariates but also its counterpart under the actual treatment. The sensitivity analysis then generates a bound for the NIE and that for the NDE over a plausible range of the conditional correlation between the post-treatment 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 post-treatment confounders. Simulation results demonstrate major strengths and potential limitations of this new solution. A re-analysis of the National Evaluation of Welfare-to-Work Strategies (NEWWS) Riverside data reveals that the initial analytic results are sensitive to omitted post-treatment confounding.
翻译:在将平均治疗效果分解为自然间接效果(NIE)和自然直接效果(NDE)的因果调解研究中,将平均治疗效果分解为自然间接效果(NIE)和自然直接效果(NDE),后处理的例子很多,以往的研究一般认为,由于信息不全,不宜调整调解人-结果关系的后处理混乱因素:在实际治疗条件下观察到,而在反事实治疗条件下失踪;本研究提出了处理后处理混乱因素的新的敏感性分析战略,将它纳入基于因素的因果调解分析,而不做额外的识别假设;在治疗任务和调解人的敏感度上,我们获得反事实治疗下的后处理障碍者有条件分配,作为不仅是预处理共变,而且是实际治疗的对应者的一种功能;敏感度分析随后为NIE的实际治疗条件和反事实治疗条件下的后处理困难因素之间的有条件关系范围,提出了一个新的敏感度分析战略,通过浸透或整合,这一战略适合作为反变现后处理办法的初步解决办法的硬性硬性结果,从而展示了国家福利评估后战略的后期分析的潜在结果。