BayesGmed: An R-package for Bayesian Causal Mediation Analysis

Belay B Yimer* (Corresponding Author), Mark Lunt, Marcus Beasley, Gary Macfarlane, John McBeth

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

3 Citations (Scopus)

Abstract

Background
The past decade has seen an explosion of research in causal mediation analysis. However, most analytic tools developed so far rely on frequentist methods which may not be robust in the case of small sample sizes. In this paper, we propose a Bayesian approach for causal mediation analysis based on Bayesian g-formula, which will overcome the limitations of the frequentist methods.
Methods
We created BayesGmed, an R-package for fitting Bayesian mediation models in R. The application of the methodology (and software tool) is demonstrated by a secondary analysis of data collected as part of the MUSICIAN study, a randomised controlled trial of remotely delivered cognitive behavioural therapy (tCBT) for people with chronic pain. We tested the hypothesis that the effect of tCBT would be mediated by improvements in active coping, passive coping, fear of movement and sleep problems. We then demonstrate the use of informative priors to conduct probabilistic sensitivity analysis around violations of causal identification assumptions.
Result
The analysis of MUSICIAN data shows that tCBT has better-improved patients' self-perceived change in health status compared to treatment as usual (TAU). The adjusted log-odds of tCBT compared to TAU range from 1.491 (95% CI: 0.452 – 2.612) when adjusted for sleep problems to 2.264 (95% CI: 1.063 - 3.610) when adjusted for fear of movement. Higher scores of fear of movement (log-odds, -0.141 [95% CI: -0.245, -0.048]), passive coping (log-odds, -0.217 [95% CI: -0.351, -0.104]), and sleep problem (log-odds, -0.179 [95% CI: -0.291, -0.078]) leads to lower odds of a positive self-perceived change in health status. The result of BayesGmed, however, shows that none of the mediated effects are statistically significant. We compared BayesGmed with the mediation R- package, and the results were comparable. Finally, our sensitivity analysis using the BayesGmed tool shows that the direct and total effect of tCBT persists even for a large departure in the assumption of no unmeasured confounding.
Conclusion
This paper comprehensively overviews causal mediation analysis and provides an open-source software package to fit Bayesian causal mediation models.
Original languageEnglish
Article number0287037
Number of pages14
JournalPloS ONE
Volume18
Issue number6
DOIs
Publication statusPublished - 14 Jun 2023

Bibliographical note

The author(s) received no specific funding for this work.

Data Availability Statement

 The Epidemiology Group, University of Aberdeen, are the owner of the dataset used in this paper and queries related to the data should be directed to epidemiology@abdn.ac.uk. The data can be accessed upon a formal data sharing agreement.

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