A vine copula mixed model for trivariate meta-analysis of diagnostic studies accounting for disease prevalence and non-evaluable subjects

A recent paper proposed a trivariate generalized linear mixed model (TGLMM) approach to handle non-evaluable index test results under the missing at random (MAR) assumption with an application to the meta-analysis of coronary CT angiography diagnostic accuracy studies. We propose the trivariate vine copula mixed model to handle non-evaluable index test results. The vine copula mixed model includes the TGLMM as a special case and can also operate on the original scale of sensitivity, specificity, and disease prevalence. The performance of the proposed methodology is examined by extensive simulation studies in comparison with the TGLMM approach. Simulation studies showed that the TGLMM approach over-estimate sensitivity and specificity when the univariate random effects are beta distributed. Under the MAR assumption, the vine copula mixed model gives nearly unbiased estimates of test accuracy indices and disease prevalence. After applying the vine copula mixed model approach to re-evaluate the coronary CT angiography meta-analysis, a vine copula mixed model with the sensitivity, specificity, and prevalence on the original scale provided better fit than the TGLMM, which models the sensitivity, specificity and prevalence on a transformed scale.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/22/2018

A D-vine copula mixed model for joint meta-analysis and comparison of diagnostic tests

For a particular disease there may be two diagnostic tests developed, wh...
research
10/15/2020

A multinomial truncated D-vine copula mixed model for the joint meta-analysis of multiple diagnostic tests

There is an extensive literature on methods for meta-analysis of diagnos...
research
06/08/2021

A likelihood based sensitivity analysis for publication bias on summary ROC in meta-analysis of diagnostic test accuracy

In meta-analysis of diagnostic test accuracy, summary receiver operating...
research
01/12/2023

Hierarchical multinomial processing tree models for meta-analysis of diagnostic accuracy studies

Meta-analysis represents a widely accepted approach for evaluating the a...
research
04/23/2018

A pseudo-likelihood approach for multivariate meta-analysis of test accuracy studies with multiple thresholds

Multivariate meta-analysis of test accuracy studies when tests are evalu...
research
03/21/2022

Bayesian inference in Epidemics: linear noise analysis

This paper offers a qualitative insight into the convergence of Bayesian...

Please sign up or login with your details

Forgot password? Click here to reset