Estimation of Direct Causal Effects
Top Cited Papers
- 1 May 2006
- journal article
- research article
- Published by Wolters Kluwer Health in Epidemiology
- Vol. 17 (3) , 276-284
- https://doi.org/10.1097/01.ede.0000208475.99429.2d
Abstract
Many common problems in epidemiologic and clinical research involve estimating the effect of an exposure on an outcome while blocking the exposure's effect on an intermediate variable. Effects of this kind are termed direct effects. Estimation of direct effects is typically the goal of research aimed at understanding mechanistic pathways by which an exposure acts to cause or prevent disease, as well as in many other settings. Although multivariable regression is commonly used to estimate direct effects, this approach requires assumptions beyond those required for the estimation of total causal effects. In addition, when the exposure and intermediate variables interact to cause disease, multivariable regression estimates a particular type of direct effect—the effect of an exposure on an outcome when the intermediate is fixed at a specified level. Using the counterfactual framework, we distinguish this definition of a direct effect (controlled direct effect) from an alternative definition, in which the effect of the exposure on the intermediate is blocked, but the intermediate is otherwise allowed to vary as it would in the absence of exposure (natural direct effect). We illustrate the difference between controlled and natural direct effects using several examples. We present an estimation approach for natural direct effects that can be implemented using standard statistical software, and we review the assumptions underlying our approach (which are less restrictive than those proposed by previous authors).Keywords
This publication has 8 references indexed in Scilit:
- Improved estimation of controlled direct effects in the presence of unmeasured confounding of intermediate variablesStatistics in Medicine, 2005
- Direct and Indirect Causal Effects via Potential Outcomes*Scandinavian Journal of Statistics, 2004
- Mechanism of HIV-1 viral protein R-induced apoptosisBiochemical and Biophysical Research Communications, 2003
- Marginal Structural Models and Causal Inference in EpidemiologyEpidemiology, 2000
- Decreased HIV-Associated T Cell Apoptosis by HIV Protease InhibitorsAIDS Research and Human Retroviruses, 2000
- Causal Diagrams for Epidemiologic ResearchEpidemiology, 1999
- Restriction as a method for reducing bias in the estimation of direct effectsStatistics in Medicine, 1998
- Identifiability and Exchangeability for Direct and Indirect EffectsEpidemiology, 1992