Fitting three-level meta-analytic models in R: A step-by-step tutorial

Applying a multilevel approach to meta-analysis is a strong method for dealing with dependency of effect sizes. However, this method is relatively unknown among researchers and, to date, has not been widely used in meta-analytic research. Therefore, the purpose of this tutorial was to show how a thr...

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Main Authors: Assink, Mark, Wibbelink, Carlijn J. M.
Format: Article
Language:English
Published: Université d'Ottawa 2016-10-01
Series:Tutorials in Quantitative Methods for Psychology
Subjects:
Online Access:http://www.tqmp.org/RegularArticles/vol12-3/p154/p154.pdf
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spelling doaj-66f04916c9aa47019086e045a777e3e12020-11-24T21:07:35ZengUniversité d'OttawaTutorials in Quantitative Methods for Psychology1913-41262016-10-0112315417410.20982/tqmp.12.3.p154Fitting three-level meta-analytic models in R: A step-by-step tutorialAssink, MarkWibbelink, Carlijn J. M.Applying a multilevel approach to meta-analysis is a strong method for dealing with dependency of effect sizes. However, this method is relatively unknown among researchers and, to date, has not been widely used in meta-analytic research. Therefore, the purpose of this tutorial was to show how a three-level random effects model can be applied to meta-analytic models in R using the rma.mv function of the metafor package. This application is illustrated by taking the reader through a step-by-step guide to the multilevel analyses comprising the steps of (1) organizing a data file; (2) setting up the R environment; (3) calculating an overall effect; (4) examining heterogeneity of within-study variance and between-study variance; (5) performing categorical and continuous moderator analyses; and (6) examining a multiple moderator model. By example, the authors demonstrate how the multilevel approach can be applied to meta-analytically examining the association between mental health disorders of juveniles and juvenile offender recidivism. In our opinion, the rma.mv function of the metafor package provides an easy and flexible way of applying a multi-level structure to meta-analytic models in R. Further, the multilevel meta-analytic models can be easily extended so that the potential moderating influence of variables can be examined.http://www.tqmp.org/RegularArticles/vol12-3/p154/p154.pdfmeta-analysismultilevel analysisR, rma.mv, metafor
collection DOAJ
language English
format Article
sources DOAJ
author Assink, Mark
Wibbelink, Carlijn J. M.
spellingShingle Assink, Mark
Wibbelink, Carlijn J. M.
Fitting three-level meta-analytic models in R: A step-by-step tutorial
Tutorials in Quantitative Methods for Psychology
meta-analysis
multilevel analysis
R, rma.mv, metafor
author_facet Assink, Mark
Wibbelink, Carlijn J. M.
author_sort Assink, Mark
title Fitting three-level meta-analytic models in R: A step-by-step tutorial
title_short Fitting three-level meta-analytic models in R: A step-by-step tutorial
title_full Fitting three-level meta-analytic models in R: A step-by-step tutorial
title_fullStr Fitting three-level meta-analytic models in R: A step-by-step tutorial
title_full_unstemmed Fitting three-level meta-analytic models in R: A step-by-step tutorial
title_sort fitting three-level meta-analytic models in r: a step-by-step tutorial
publisher Université d'Ottawa
series Tutorials in Quantitative Methods for Psychology
issn 1913-4126
publishDate 2016-10-01
description Applying a multilevel approach to meta-analysis is a strong method for dealing with dependency of effect sizes. However, this method is relatively unknown among researchers and, to date, has not been widely used in meta-analytic research. Therefore, the purpose of this tutorial was to show how a three-level random effects model can be applied to meta-analytic models in R using the rma.mv function of the metafor package. This application is illustrated by taking the reader through a step-by-step guide to the multilevel analyses comprising the steps of (1) organizing a data file; (2) setting up the R environment; (3) calculating an overall effect; (4) examining heterogeneity of within-study variance and between-study variance; (5) performing categorical and continuous moderator analyses; and (6) examining a multiple moderator model. By example, the authors demonstrate how the multilevel approach can be applied to meta-analytically examining the association between mental health disorders of juveniles and juvenile offender recidivism. In our opinion, the rma.mv function of the metafor package provides an easy and flexible way of applying a multi-level structure to meta-analytic models in R. Further, the multilevel meta-analytic models can be easily extended so that the potential moderating influence of variables can be examined.
topic meta-analysis
multilevel analysis
R, rma.mv, metafor
url http://www.tqmp.org/RegularArticles/vol12-3/p154/p154.pdf
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