Effect Decomposition in the Presence of Treatment-induced Confounding: A Regression-with-residuals Approach
Analyses of causal mediation are often complicated by treatment-induced confounders of the mediator–outcome relationship. In the presence of such confounders, the natural direct and indirect effects of treatment on the outcome, into which the total effect can be additively decomposed, are not identified. An alternative but similar set of effects, known as randomized intervention analogues to the natural direct effect (rNDE) and the natural indirect effect (rNIE), can still be identified in this situation, but existing estimators for these effects require a complicated weighting procedure that is difficult to use in practice. We introduce a new method for estimating the rNDE and rNIE that involves only a minor adaptation of the comparatively simple regression methods used to perform effect decomposition in the absence of treatment-induced confounding. It involves fitting (a) a generalized linear model for the conditional mean of the mediator given treatment and a set of baseline confounders and (b) a linear model for the conditional mean of the outcome given the treatment, mediator, baseline confounders, and a set of treatment-induced confounders that have been residualized with respect to the observed past. The rNDE and rNIE are simple functions of the parameters in these models when they are correctly specified and when there are no unobserved variables that confound the treatment–outcome, treatment–mediator, or mediator–outcome relationships. We illustrate the metho...
Source: Epidemiology - Category: Epidemiology Tags: Methods Source Type: research