Measurement error in meta-analysis (MEMA)—A Bayesian framework for continuous outcome data subject to non-differential measurement error

Harlan Campbell*, Valentijn M.T. de Jong, Lauren Maxwell, Thomas Jaenisch, Thomas P.A. Debray, Paul Gustafson

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Ideally, a meta-analysis will summarize data from several unbiased studies. Here we look into the less than ideal situation in which contributing studies may be compromised by non-differential measurement error in the exposure variable. Specifically, we consider a meta-analysis for the association between a continuous outcome variable and one or more continuous exposure variables, where the associations may be quantified as regression coefficients of a linear regression model. A flexible Bayesian framework is developed which allows one to obtain appropriate point and interval estimates with varying degrees of prior knowledge about the magnitude of the measurement error. We also demonstrate how, if individual-participant data (IPD) are available, the Bayesian meta-analysis model can adjust for multiple participant-level covariates, these being measured with or without measurement error.

Original languageEnglish
Pages (from-to)796-815
Number of pages20
JournalResearch Synthesis Methods
Volume12
Issue number6
Early online date27 Jul 2021
DOIs
Publication statusPublished - Nov 2021

Keywords

  • Bayesian evidence synthesis
  • measurement error
  • meta-analysis
  • misclassification
  • partial identification

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