4.5 Article

Synthesis of linear regression coefficients by recovering the within-study covariance matrix from summary statistics

Journal

RESEARCH SYNTHESIS METHODS
Volume 8, Issue 2, Pages 212-219

Publisher

WILEY
DOI: 10.1002/jrsm.1228

Keywords

synthesis of regression; linear regression; model misspecification; imbalance of covariates; correlation of covariates

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Recently, the number of regression models has dramatically increased in several academic fields. However, within the context of meta-analysis, synthesis methods for such models have not been developed in a commensurate trend. One of the difficulties hindering the development is the disparity in sets of covariates among literature models. If the sets of covariates differ across models, interpretation of coefficients will differ, thereby making it difficult to synthesize them. Moreover, previous synthesis methods for regression models, such as multivariate meta-analysis, often have problems because covariance matrix of coefficients (i.e. within-study correlations) or individual patient data are not necessarily available. This study, therefore, proposes a brief explanation regarding a method to synthesize linear regression models under different covariate sets by using a generalized least squares method involving bias correction terms. Especially, we also propose an approach to recover (at most) three-correlations of covariates, which is required for the calculation of the bias term without individual patient data. Copyright (C) 2016 John Wiley & Sons, Ltd.

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