Loh Wen Wei, Moerkerke Beatrijs, Loeys Tom, Vansteelandt Stijn
Department of Data Analysis.
Department of Applied Mathematics, Computer Science and Statistics.
Psychol Methods. 2022 Dec;27(6):982-999. doi: 10.1037/met0000314. Epub 2021 Jul 29.
hen multiple mediators exist on the causal pathway from treatment to outcome, path analysis prevails for disentangling indirect effects along paths linking possibly several mediators. However, separately evaluating each indirect effect along different posited paths demands stringent assumptions, such as correctly specifying the mediators' causal structure, and no unobserved confounding among the mediators. These assumptions may be unfalsifiable in practice and, when they fail to hold, can result in misleading conclusions about the mediators. Nevertheless, these assumptions are avoidable when substantive interest is in inference about the indirect effects specific to each distinct mediator. In this article, we introduce a new definition of indirect effects called interventional indirect effects from the causal inference and epidemiology literature. Interventional indirect effects can be unbiasedly estimated without the assumptions above while retaining scientifically meaningful interpretations. We show that under a typical class of linear and additive mean models, estimators of interventional indirect effects adopt the same analytical form as prevalent product-of-coefficient estimators assuming a parallel mediator model. Prevalent estimators are therefore unbiased when estimating interventional indirect effects-even when there are unknown causal effects among the mediators-but require a different causal interpretation. When other mediators moderate the effect of each mediator on the outcome, and the mediators' covariance is affected by treatment, such an indirect effect due to the mediators' mutual dependence (on one another) cannot be attributed to any mediator alone. We exploit the proposed definitions of interventional indirect effects to develop novel estimators under such settings. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
当从治疗到结果的因果路径上存在多个中介变量时,路径分析对于理清沿着可能连接多个中介变量的路径的间接效应很有用。然而,分别评估沿着不同假定路径的每个间接效应需要严格的假设,例如正确指定中介变量的因果结构,以及中介变量之间不存在未观察到的混杂因素。这些假设在实践中可能无法被证伪,并且当它们不成立时,可能会导致关于中介变量的误导性结论。然而,当实质兴趣在于推断每个不同中介变量特有的间接效应时,这些假设是可以避免的。在本文中,我们从因果推断和流行病学文献中引入了一种称为干预间接效应的间接效应新定义。干预间接效应可以在不做上述假设的情况下进行无偏估计,同时保留科学上有意义的解释。我们表明,在一类典型的线性和加性均值模型下,干预间接效应的估计量采用与假设平行中介模型的流行系数乘积估计量相同的分析形式。因此,流行估计量在估计干预间接效应时是无偏的——即使中介变量之间存在未知的因果效应——但需要不同的因果解释。当其他中介变量调节每个中介变量对结果的效应,并且中介变量的协方差受治疗影响时,由于中介变量相互依赖而产生的这种间接效应不能单独归因于任何一个中介变量。我们利用所提出的干预间接效应定义在这种情况下开发新的估计量。(PsycInfo数据库记录(c)2023美国心理学会,保留所有权利)