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Mediation analysis in epidemiology: methods, interpretation and bias

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TLDR
The impact of the three main sources of potential bias in the traditional approach to mediation analyses are reviewed and discussed: (i) mediator-outcome confounding; (ii) exposure-mediator interaction and (iii) mediATOR- outcome confounding affected by the exposure.
Abstract
In epidemiological studies it is often necessary to disentangle the pathways that link an exposure to an outcome. Typically the aim is to identify the total effect of the exposure on the outcome, the effect of the exposure that acts through a given set of mediators of interest (indirect effect) and the effect of the exposure unexplained by those same mediators (direct effect). The traditional approach to mediation analysis is based on adjusting for the mediator in standard regression models to estimate the direct effect. However, several methodological papers have shown that under a number of circumstances this traditional approach may produce flawed conclusions. Through a better understanding of the causal structure of the variables involved in the analysis, with a formal definition of direct and indirect effects in a counterfactual framework, alternative analytical methods have been introduced to improve the validity and interpretation of mediation analysis. In this paper, we review and discuss the impact of the three main sources of potential bias in the traditional approach to mediation analyses: (i) mediator-outcome confounding;(ii) exposure-mediator interaction and (iii) mediator-outcome confounding affected by the exposure. We provide examples and discuss the impact these sources have in terms of bias.

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Journal ArticleDOI

Advances in Mediation Analysis: A Survey and Synthesis of New Developments

TL;DR: This review provides a survey and synthesis of four areas of active methodological research: (a) mediation analysis for longitudinal data, (b) causal inference for indirect effects, (c) mediationAnalysis for discrete and nonnormal variables, and (d) mediation assessment in multilevel designs.
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Applying the Bradford Hill criteria in the 21st century: how data integration has changed causal inference in molecular epidemiology.

TL;DR: Novel ways by which researchers can apply and interpret the Bradford Hill criteria when considering data gathered using modern molecular techniques, such as epigenetics, biomarkers, mechanistic toxicology, and genotoxicology are discussed.
Journal ArticleDOI

Mendelian randomization in cardiometabolic disease: challenges in evaluating causality

TL;DR: Challenges in interpreting Mendelian randomization analyses are described, including those from studies using genetic variants to assess causality of multiple traits; studies describing pleiotropic variants; and those investigating variants that disrupt normal function of an exposure.
Journal ArticleDOI

Prenatal exposure to maternal smoking and offspring DNA methylation across the lifecourse: findings from the Avon Longitudinal Study of Parents and Children (ALSPAC)

TL;DR: Investigation of associations between prenatal exposure to maternal smoking and offspring DNA methylation at multiple time points in approximately 800 mother–offspring pairs found that the major contribution to altered methylation was attributed to a critical window of in utero exposure.
Posted Content

Interpretation and Identification of Causal Mediation

TL;DR: It is shown that natural effects can be identified by methods that go beyond standard adjustment for confounders, applicable to observational studies in which treatment assignment remains confounded with the mediator or with the outcome.
References
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gformula: Estimating causal effects in the presence of time-varying confounding or mediation

TL;DR: The g-computation procedure as mentioned in this paper is used to estimate the causal effect of time-varying exposures on an outcome in the presence of time varying confounders that are themselves also affected by the exposures.
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Confounding of Indirect Effects: A Sensitivity Analysis Exploring the Range of Bias Due to a Cause Common to Both the Mediator and the Outcome

TL;DR: Data from 2 well-known studies in the methodological literature on mediation were reanalyzed and the results were found not to be as vulnerable to the impact of confounding as previously described, but findings varied sharply between the 2 studies.
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Commentary: Estimating direct and indirect effects—fallible in theory, but in the real world?

TL;DR: Enter Cole and Hernán who, in this edition of the International Journal of Epidemiology, build on prior work of Robins and Greenland (1992)7 and Poole and Kaufman (2000)8 to demonstrate that such ‘standard’ epidemiological practice may be misleading.
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Estimating the causal effects of treatment

TL;DR: A relatively non-technical review of recent statistical research on the analysis and interpretation of the results of randomised controlled trials in which there are possibly all three types of protocol violation: non-adherence to allocated treatment, contamination and attrition.
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Analytic results on the bias due to nondifferential misclassification of a binary mediator.

TL;DR: In this paper, the authors describe a mathematical correspondence between the empirical expressions for the natural direct effect and the effect of exposure among the unexposed standardized by a binary confounder and exploit this correspondence to prove that the direction of the bias due to nondifferential measurement error in estimating thenatural direct and indirect effects is to overestimate the naturalDirect effect and underestimate the natural indirect effect.
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