BMC Medical Research Methodology (Jan 2024)

Re-expressing coefficients from regression models for inclusion in a meta-analysis

  • Matthew W. Linakis,
  • Cynthia Van Landingham,
  • Alessandro Gasparini,
  • Matthew P. Longnecker

DOI
https://doi.org/10.1186/s12874-023-02132-y
Journal volume & issue
Vol. 24, no. 1
pp. 1 – 12

Abstract

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Abstract Meta-analysis poses a challenge when original study results have been expressed in a non-uniform manner, such as when regression results from some original studies were based on a log-transformed key independent variable while in others no transformation was used. Methods of re-expressing regression coefficients to generate comparable results across studies regardless of data transformation have recently been developed. We examined the relative bias of three re-expression methods using simulations and 15 real data examples where the independent variable had a skewed distribution. Regression coefficients from models with log-transformed independent variables were re-expressed as though they were based on an untransformed variable. We compared the re-expressed coefficients to those from a model fit to the untransformed variable. In the simulated and real data, all three re-expression methods usually gave biased results, and the skewness of the independent variable predicted the amount of bias. How best to synthesize the results of the log-transformed and absolute exposure evidence streams remains an open question and may depend on the scientific discipline, scale of the outcome, and other considerations.

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