Literature DB >> 17626226

An alternative model for bivariate random-effects meta-analysis when the within-study correlations are unknown.

Richard D Riley1, John R Thompson, Keith R Abrams.   

Abstract

Multivariate meta-analysis models can be used to synthesize multiple, correlated endpoints such as overall and disease-free survival. A hierarchical framework for multivariate random-effects meta-analysis includes both within-study and between-study correlation. The within-study correlations are assumed known, but they are usually unavailable, which limits the multivariate approach in practice. In this paper, we consider synthesis of 2 correlated endpoints and propose an alternative model for bivariate random-effects meta-analysis (BRMA). This model maintains the individual weighting of each study in the analysis but includes only one overall correlation parameter, rho, which removes the need to know the within-study correlations. Further, the only data needed to fit the model are those required for a separate univariate random-effects meta-analysis (URMA) of each endpoint, currently the common approach in practice. This makes the alternative model immediately applicable to a wide variety of evidence synthesis situations, including studies of prognosis and surrogate outcomes. We examine the performance of the alternative model through analytic assessment, a realistic simulation study, and application to data sets from the literature. Our results show that, unless rho is very close to 1 or -1, the alternative model produces appropriate pooled estimates with little bias that (i) are very similar to those from a fully hierarchical BRMA model where the within-study correlations are known and (ii) have better statistical properties than those from separate URMAs, especially given missing data. The alternative model is also less prone to estimation at parameter space boundaries than the fully hierarchical model and thus may be preferred even when the within-study correlations are known. It also suitably estimates a function of the pooled estimates and their correlation; however, it only provides an approximate indication of the between-study variation. The alternative model greatly facilitates the utilization of correlation in meta-analysis and should allow an increased application of BRMA in practice.

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Year:  2007        PMID: 17626226     DOI: 10.1093/biostatistics/kxm023

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.899


  55 in total

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2.  Multivariate meta-analysis with an increasing number of parameters.

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Journal:  Biom J       Date:  2017-02-14       Impact factor: 2.207

3.  Multivariate network meta-analysis to mitigate the effects of outcome reporting bias.

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Journal:  J Clin Microbiol       Date:  2011-07-13       Impact factor: 5.948

Review 5.  Statistical methods for multivariate meta-analysis of diagnostic tests: An overview and tutorial.

Authors:  Xiaoye Ma; Lei Nie; Stephen R Cole; Haitao Chu
Journal:  Stat Methods Med Res       Date:  2013-06-26       Impact factor: 3.021

6.  A matrix-based method of moments for fitting multivariate network meta-analysis models with multiple outcomes and random inconsistency effects.

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Review 7.  Addressing multimorbidity in evidence integration and synthesis.

Authors:  Thomas A Trikalinos; Jodi B Segal; Cynthia M Boyd
Journal:  J Gen Intern Med       Date:  2014-01-18       Impact factor: 5.128

8.  Bivariate random effects meta-analysis of diagnostic studies using generalized linear mixed models.

Authors:  Haitao Chu; Hongfei Guo; Yijie Zhou
Journal:  Med Decis Making       Date:  2009-12-03       Impact factor: 2.583

9.  Bayesian Inference for Multivariate Meta-regression with a Partially Observed Within-Study Sample Covariance Matrix.

Authors:  Hui Yao; Sungduk Kim; Ming-Hui Chen; Joseph G Ibrahim; Arvind K Shah; Jianxin Lin
Journal:  J Am Stat Assoc       Date:  2015-06       Impact factor: 5.033

10.  Systematically missing confounders in individual participant data meta-analysis of observational cohort studies.

Authors:  Dan Jackson; Ian White; J B Kostis; A C Wilson; A R Folsom; K Wu; L Chambless; M Benderly; U Goldbourt; J Willeit; S Kiechl; J W G Yarnell; P M Sweetnam; P C Elwood; M Cushman; B M Psaty; R P Tracy; A Tybjaerg-Hansen; F Haverkate; M P M de Maat; S G Thompson; F G R Fowkes; A J Lee; F B Smith; V Salomaa; K Harald; V Rasi; E Vahtera; P Jousilahti; R D'Agostino; W B Kannel; P W F Wilson; G Tofler; D Levy; R Marchioli; F Valagussa; A Rosengren; L Wilhelmsen; G Lappas; H Eriksson; P Cremer; D Nagel; J D Curb; B Rodriguez; K Yano; J T Salonen; K Nyyssönen; T-P Tuomainen; B Hedblad; G Engström; G Berglund; H Loewel; W Koenig; H W Hense; T W Meade; J A Cooper; B De Stavola; C Knottenbelt; G J Miller; J A Cooper; K A Bauer; R D Rosenberg; S Sato; A Kitamura; Y Naito; H Iso; V Salomaa; K Harald; V Rasi; E Vahtera; P Jousilahti; T Palosuo; P Ducimetiere; P Amouyel; D Arveiler; A E Evans; J Ferrieres; I Juhan-Vague; A Bingham; H Schulte; G Assmann; B Cantin; B Lamarche; J-P Despres; G R Dagenais; H Tunstall-Pedoe; G D O Lowe; M Woodward; Y Ben-Shlomo; G Davey Smith; V Palmieri; J L Yeh; T W Meade; A Rudnicka; P Brennan; C Knottenbelt; J A Cooper; P Ridker; F Rodeghiero; A Tosetto; J Shepherd; G D O Lowe; I Ford; M Robertson; E Brunner; M Shipley; E J M Feskens; E Di Angelantonio; S Kaptoge; S Lewington; G D O Lowe; N Sarwar; S G Thompson; M Walker; S Watson; I R White; A M Wood; J Danesh
Journal:  Stat Med       Date:  2009-04-15       Impact factor: 2.373

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