4.5 Article

On the relative efficiency of using summary statistics versus individual-level data in meta-analysis

Journal

BIOMETRIKA
Volume 97, Issue 2, Pages 321-332

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/biomet/asq006

Keywords

Cox regression; Evidence-based medicine; Genetic association; Individual patient data; Information matrix; Linear regression; Logistic regression; Maximum likelihood; Profile likelihood; Research synthesis

Funding

  1. National Institutes of Health, U.S.A

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Meta-analysis is widely used to synthesize the results of multiple studies. Although meta-analysis is traditionally carried out by combining the summary statistics of relevant studies, advances in technologies and communications have made it increasingly feasible to access the original data on individual participants. In the present paper, we investigate the relative efficiency of analyzing original data versus combining summary statistics. We show that, for all commonly used parametric and semiparametric models, there is no asymptotic efficiency gain by analyzing original data if the parameter of main interest has a common value across studies, the nuisance parameters have distinct values among studies, and the summary statistics are based on maximum likelihood. We also assess the relative efficiency of the two methods when the parameter of main interest has different values among studies or when there are common nuisance parameters across studies. We conduct simulation studies to confirm the theoretical results and provide empirical comparisons from a genetic association study.

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