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Permutation inference methods for multivariate meta-analysis.

Authors :
Noma H
Nagashima K
Furukawa TA
Source :
Biometrics [Biometrics] 2020 Mar; Vol. 76 (1), pp. 337-347. Date of Electronic Publication: 2019 Oct 14.
Publication Year :
2020

Abstract

Multivariate meta-analysis is gaining prominence in evidence synthesis research because it enables simultaneous synthesis of multiple correlated outcome data, and random-effects models have generally been used for addressing between-studies heterogeneities. However, coverage probabilities of confidence regions or intervals for standard inference methods for random-effects models (eg, restricted maximum likelihood estimation) cannot retain their nominal confidence levels in general, especially when the number of synthesized studies is small because their validities depend on large sample approximations. In this article, we provide permutation-based inference methods that enable exact joint inferences for average outcome measures without large sample approximations. We also provide accurate marginal inference methods under general settings of multivariate meta-analyses. We propose effective approaches for permutation inferences using optimal weighting based on the efficient score statistic. The effectiveness of the proposed methods is illustrated via applications to bivariate meta-analyses of diagnostic accuracy studies for airway eosinophilia in asthma and a network meta-analysis for antihypertensive drugs on incident diabetes, as well as through simulation experiments. In numerical evaluations performed via simulations, our methods generally provided accurate confidence regions or intervals under a broad range of settings, whereas the current standard inference methods exhibited serious undercoverage properties.<br /> (© 2019 The International Biometric Society.)

Details

Language :
English
ISSN :
1541-0420
Volume :
76
Issue :
1
Database :
MEDLINE
Journal :
Biometrics
Publication Type :
Academic Journal
Accession number :
31399994
Full Text :
https://doi.org/10.1111/biom.13134