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A Non-Iterative Extension of the Multivariate Random Effects Meta-Analysis

Version 2 2015-01-20, 21:35
Version 1 2015-01-02, 00:00
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posted on 2015-01-20, 21:35 authored by Kepher H. Makambi, Hyunuk Seung

Multivariate methods in meta-analysis are becoming popular and more accepted in biomedical research despite computational issues in some of the techniques. A number of approaches, both iterative and non-iterative, have been proposed including the multivariate DerSimonian and Laird method by Jackson et al. (2010), which is non-iterative. In this study, we propose an extension of the method by Hartung and Makambi (2002) and Makambi (2001) to multivariate situations. A comparison of the bias and mean square error from a simulation study indicates that, in some circumstances, the proposed approach perform better than the multivariate DerSimonian–Laird approach. An example is presented to demonstrate the application of the proposed approach.

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