Estimating the effect of an exposure on an outcome, other than through some given mediator, requires adjustment for all risk factors of the mediator that are also associated with the outcome. When these risk factors are themselves affected by the exposure, then standard regression methods do not apply. In this article, I review methods for accommodating this and discuss their limitations for estimating the controlled direct effect (ie, the exposure effect when controlling the mediator at a specified level uniformly in the population). In addition, I propose a powerful and easy-to-apply alternative that uses G-estimation in structural nested models to address these limitations both for cohort and case-control studies
G-estimation is a flexible, semiparametric approach for estimating exposure effects in epidemiologic...
Many common problems in epidemiologic and clinical research involve estimating the effect of an expo...
Many epidemiological exposure variables have right-skewed distributions with sparse data at high exp...
Estimating the effect of an exposure on an outcome, other than through some given mediator, requires...
When regression models adjust for mediators on the causal path from exposure to outcome, the regress...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
In a randomized study with longitudinal data on a mediator and outcome, estimating the direct effect...
Recent work has considerably advanced the definition, identification and estimation of controlled di...
Political scientists are increasingly interested in causal mediation, and to this end, recent studie...
Estimates of additive interaction from case-control data are often obtained by logistic regression; ...
Methods from causal mediation analysis have generalized the traditional approach to direct and indir...
For dichotomous outcomes, the authors discuss when the standard approaches to mediation analysis use...
Estimation of the direct effect of an exposure on an outcome requires adjustment for confounders of ...
Estimates of additive interaction from case-control data are often obtained by logistic regression; ...
G-estimation is a flexible, semiparametric approach for estimating exposure effects in epidemiologic...
Many common problems in epidemiologic and clinical research involve estimating the effect of an expo...
Many epidemiological exposure variables have right-skewed distributions with sparse data at high exp...
Estimating the effect of an exposure on an outcome, other than through some given mediator, requires...
When regression models adjust for mediators on the causal path from exposure to outcome, the regress...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
In a randomized study with longitudinal data on a mediator and outcome, estimating the direct effect...
Recent work has considerably advanced the definition, identification and estimation of controlled di...
Political scientists are increasingly interested in causal mediation, and to this end, recent studie...
Estimates of additive interaction from case-control data are often obtained by logistic regression; ...
Methods from causal mediation analysis have generalized the traditional approach to direct and indir...
For dichotomous outcomes, the authors discuss when the standard approaches to mediation analysis use...
Estimation of the direct effect of an exposure on an outcome requires adjustment for confounders of ...
Estimates of additive interaction from case-control data are often obtained by logistic regression; ...
G-estimation is a flexible, semiparametric approach for estimating exposure effects in epidemiologic...
Many common problems in epidemiologic and clinical research involve estimating the effect of an expo...
Many epidemiological exposure variables have right-skewed distributions with sparse data at high exp...