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      Advanced methods in meta-analysis: multivariate approach and meta-regression

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      Statistics in Medicine
      Wiley-Blackwell

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          Abstract

          This tutorial on advanced statistical methods for meta-analysis can be seen as a sequel to the recent Tutorial in Biostatistics on meta-analysis by Normand, which focused on elementary methods. Within the framework of the general linear mixed model using approximate likelihood, we discuss methods to analyse univariate as well as bivariate treatment effects in meta-analyses as well as meta-regression methods. Several extensions of the models are discussed, like exact likelihood, non-normal mixtures and multiple endpoints. We end with a discussion about the use of Bayesian methods in meta-analysis. All methods are illustrated by a meta-analysis concerning the efficacy of BCG vaccine against tuberculosis. All analyses that use approximate likelihood can be carried out by standard software. We demonstrate how the models can be fitted using SAS Proc Mixed.

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          Author and article information

          Journal
          Statistics in Medicine
          Statist. Med.
          Wiley-Blackwell
          0277-6715
          1097-0258
          February 28 2002
          February 28 2002
          : 21
          : 4
          : 589-624
          Article
          10.1002/sim.1040
          11836738
          2d2fb51c-d600-4011-bb14-671ac14bcff7
          © 2002
          History

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