| Literature DB >> 33628357 |
Chiyu Zhang1, Min Chen2, Xinlei Wang1.
Abstract
Meta-analysis, the statistical procedure for combining results from multiple independent studies, has been widely used in medical research to evaluate intervention efficacy and drug safety. In many practical situations, treatment effects vary notably among the collected studies, and the variation, often modeled by the between-study variance parameter τ 2, can greatly affect the inference of the overall effect size. In the past, comparative studies have been conducted for both point and interval estimation of τ 2. However, most are incomplete, only including a limited subset of existing methods, and some are outdated. Further, none of the studies covers descriptive measures for assessing the level of heterogeneity, nor are they focused on rare binary events that require special attention. We summarize by far the most comprehensive set including 11 descriptive measures, 23 estimators, and 16 confidence intervals. In addition to providing synthesized information, we further categorize these methods according to their key features. We then evaluate their performance based on simulation studies that examine various realistic scenarios for rare binary events, with an illustration using a data example of a gestational diabetes meta-analysis. We conclude that there is no uniformly "best" method. However, methods with consistently better performance do exist in the context of rare binary events, and we provide practical guidelines based on numerical evidences.Entities:
Keywords: DerSimonian and Laird; Q statistic; bias; confidence interval; coverage probability; fixed effect; mean squared error; odds ratio; random effects
Year: 2020 PMID: 33628357 PMCID: PMC7901832 DOI: 10.4310/sii.2020.v13.n4.a3
Source DB: PubMed Journal: Stat Interface ISSN: 1938-7989 Impact factor: 0.582