Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study

In many disciplines, mediating processes are usually investigated with randomized experiments and linear regression to determine if the treatment affects the outcome through a mediator. However, randomizing the treatment will not yield accurate causal direct and indirect estimates unless certain ass...

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Main Authors: Yasemin Kisbu-Sakarya, David P. MacKinnon, Matthew J. Valente, Esra Çetinkaya
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-08-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fpsyg.2020.02067/full
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spelling doaj-96655c081e91483d8745764a037e43632020-11-25T03:03:33ZengFrontiers Media S.A.Frontiers in Psychology1664-10782020-08-011110.3389/fpsyg.2020.02067554112Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation StudyYasemin Kisbu-Sakarya0David P. MacKinnon1Matthew J. Valente2Esra Çetinkaya3Department of Psychology, Koç University, Istanbul, TurkeyDepartment of Psychology, Arizona State University, Tempe, AZ, United StatesCenter for Children and Families, Department of Psychology, Florida International University, Miami, FL, United StatesDepartment of Psychology, Koç University, Istanbul, TurkeyIn many disciplines, mediating processes are usually investigated with randomized experiments and linear regression to determine if the treatment affects the outcome through a mediator. However, randomizing the treatment will not yield accurate causal direct and indirect estimates unless certain assumptions are satisfied since the mediator status is not randomized. This study describes methods to estimate causal direct and indirect effects and reports the results of a large Monte Carlo simulation study on the performance of the ordinary regression and modern causal mediation analysis methods, including a previously untested doubly robust sequential g-estimation method, when there are confounders of the mediator-to-outcome relation. Results show that failing to measure and incorporate potential post-treatment confounders in a mediation model leads to biased estimates, regardless of the analysis method used. Results emphasize the importance of measuring potential confounding variables and conducting sensitivity analysis.https://www.frontiersin.org/article/10.3389/fpsyg.2020.02067/fullmediationcausalityg-estimationpropensity scoresequential ignorability
collection DOAJ
language English
format Article
sources DOAJ
author Yasemin Kisbu-Sakarya
David P. MacKinnon
Matthew J. Valente
Esra Çetinkaya
spellingShingle Yasemin Kisbu-Sakarya
David P. MacKinnon
Matthew J. Valente
Esra Çetinkaya
Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study
Frontiers in Psychology
mediation
causality
g-estimation
propensity score
sequential ignorability
author_facet Yasemin Kisbu-Sakarya
David P. MacKinnon
Matthew J. Valente
Esra Çetinkaya
author_sort Yasemin Kisbu-Sakarya
title Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study
title_short Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study
title_full Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study
title_fullStr Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study
title_full_unstemmed Causal Mediation Analysis in the Presence of Post-treatment Confounding Variables: A Monte Carlo Simulation Study
title_sort causal mediation analysis in the presence of post-treatment confounding variables: a monte carlo simulation study
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2020-08-01
description In many disciplines, mediating processes are usually investigated with randomized experiments and linear regression to determine if the treatment affects the outcome through a mediator. However, randomizing the treatment will not yield accurate causal direct and indirect estimates unless certain assumptions are satisfied since the mediator status is not randomized. This study describes methods to estimate causal direct and indirect effects and reports the results of a large Monte Carlo simulation study on the performance of the ordinary regression and modern causal mediation analysis methods, including a previously untested doubly robust sequential g-estimation method, when there are confounders of the mediator-to-outcome relation. Results show that failing to measure and incorporate potential post-treatment confounders in a mediation model leads to biased estimates, regardless of the analysis method used. Results emphasize the importance of measuring potential confounding variables and conducting sensitivity analysis.
topic mediation
causality
g-estimation
propensity score
sequential ignorability
url https://www.frontiersin.org/article/10.3389/fpsyg.2020.02067/full
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