Estimating Causal Effects using Bayesian Methods with the R Package BayesCACE

Jincheng Zhou, Jinhui Yang, James S. Hodges, Lifeng Lin, Haitao Chu

Research output: Contribution to journalArticlepeer-review

Abstract

Noncompliance, a common problem in randomized clinical trials (RCTs), complicates the analysis of the causal treatment effect, especially in meta-analysis of RCTs. The complier average causal effect (CACE) measures the effect of an intervention in the latent subgroup of the population that complies with its assigned treatment (the compliers). Recently, Bayesian hierarchical approaches have been proposed to estimate the CACE in a single RCT and a meta-analysis of RCTs. We develop an R package, BayesCACE, to provide user-friendly functions for implementing CACE analysis for binary outcomes based on the flexible Bayesian hierarchical framework. This package includes functions for analyzing data from a single study and for performing a meta-analysis with either complete or incomplete compliance data. The package also provides various functions for generating forest, trace, posterior density, and auto-correlation plots, which can be useful to review noncompliance rates, visually assess the model, and obtain study-specific and overall CACEs.

Original languageEnglish (US)
Pages (from-to)297-315
Number of pages19
JournalR Journal
Volume15
Issue number1
DOIs
StatePublished - Mar 2023

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© (2023). All Rights Reserved.

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