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Review
. 2016 Aug;25(4):1596-619.
doi: 10.1177/0962280213492588. Epub 2013 Jun 26.

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

Affiliations
Review

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

Xiaoye Ma et al. Stat Methods Med Res. 2016 Aug.

Abstract

In this article, we present an overview and tutorial of statistical methods for meta-analysis of diagnostic tests under two scenarios: (1) when the reference test can be considered a gold standard and (2) when the reference test cannot be considered a gold standard. In the first scenario, we first review the conventional summary receiver operating characteristics approach and a bivariate approach using linear mixed models. Both approaches require direct calculations of study-specific sensitivities and specificities. We next discuss the hierarchical summary receiver operating characteristics curve approach for jointly modeling positivity criteria and accuracy parameters, and the bivariate generalized linear mixed models for jointly modeling sensitivities and specificities. We further discuss the trivariate generalized linear mixed models for jointly modeling prevalence, sensitivities and specificities, which allows us to assess the correlations among the three parameters. These approaches are based on the exact binomial distribution and thus do not require an ad hoc continuity correction. Lastly, we discuss a latent class random effects model for meta-analysis of diagnostic tests when the reference test itself is imperfect for the second scenario. A number of case studies with detailed annotated SAS code in MIXED and NLMIXED procedures are presented to facilitate the implementation of these approaches.

Keywords: Meta-analysis; diagnostic test; generalized linear mixed models; gold standard.

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Figures

Figure 1
Figure 1
Forest plot for sensitivity in rotator cuff tears study
Figure 2
Figure 2
Forest plot for specificity in rotator cuff tears study
Figure 3
Figure 3
Summary median estimates and ROC curves from some of the introduced models. Panel A presents summary median Se and Sp estimates with confidence and predictive regions and summary ROC curve from the bivariate GLMM using logit link. Panel B presents summary median Se and Sp estimates with confidence and predictive regions and summary ROC curve from the BLMM and the summary ROC curve from the unweighted summary ROC method.

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References

    1. Zhou XH, Obuchowski NA, McClish DK. Statistical methods in diagnostic medicine. New York: John Wiley & Sons; 2002.
    1. Pepe MS. The statistical evaluation of medical tests for classification and prediction. Oxford: Oxford University Press; 2003.
    1. Rutter CA, Gatsonis CA. A hierarchical regression approach to meta-analysis of diagnostic test accuracy evaluations. Statistics in Medicine. 2001;20:2865–84. - PubMed
    1. Song F, Khan KS, Dinnes J, Sutton AJ. Asymmetric funnel plots and publication bias in meta-analyses of diagnostic accuracy. International Journal of Epidemiology. 2002;31:88–95. - PubMed
    1. van Houwelingen HC. Advanced methods in meta-analysis: multivariate approach and meta-regression. Statistics in Medicine. 2002;21:589–624. - PubMed