Literature DB >> 34015509

Jackknife empirical likelihood confidence intervals for assessing heterogeneity in meta-analysis of rare binary event data.

Guanshen Wang1, Yichen Cheng2, Min Chen3, Xinlei Wang4.   

Abstract

In meta-analysis, the heterogeneity of effect sizes across component studies is typically described by a variance parameter in a random-effects (Re) model. In the literature, methods for constructing confidence intervals (CIs) for the parameter often assume that study-level effect sizes are normally distributed. However, this assumption might be violated in practice, especially in meta-analysis of rare binary events. We propose to use jackknife empirical likelihood (JEL), a nonparametric approach that uses jackknife pseudo-values, to construct CIs for the heterogeneity parameter. To compute jackknife pseudo-values, we employ a moment-based estimator and consider two commonly used weighing schemes (i.e., equal and inverse variance weights). We prove that with each scheme, the resulting log empirical likelihood ratio follows a chi-square distribution asymptotically. We further examine the performance of the proposed JEL methods and compare them with existing CIs through simulation studies and data examples that focus on data of rare binary events. Our numerical results suggest that the JEL method with equal weights compares favorably to alternatives, especially when (observed) effect sizes are non-normal and the number of component studies is large. Thus, it is worth serious consideration in statistical inference.
Copyright © 2021 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Between-study heterogeneity; Coverage probability; Jackknife pseudo-values; Odds ratio; Q statistic; Random effects

Mesh:

Year:  2021        PMID: 34015509      PMCID: PMC8429181          DOI: 10.1016/j.cct.2021.106440

Source DB:  PubMed          Journal:  Contemp Clin Trials        ISSN: 1551-7144            Impact factor:   2.261


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8.  Statistical Methods for Quantifying Between-study Heterogeneity in Meta-analysis with Focus on Rare Binary Events.

Authors:  Chiyu Zhang; Min Chen; Xinlei Wang
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