For a particular disease, there may be two diagnostic tests developed, where each of the tests is subject to several studies. A quadrivariate generalised linear mixed model (GLMM) has been recently proposed to joint meta-analyse and compare two diagnostic tests. We propose a D-vine copula mixed model for joint meta-analysis and comparison of two diagnostic tests. Our general model includes the quadrivariate GLMM as a special case and can also operate on the original scale of sensitivities and specificities. The method allows the direct calculation of sensitivity and specificity for each test, as well as the parameters of the summary receiver operator characteristic (SROC) curve, along with a comparison between the SROCs of each test. Our me...
Many clinical and epidemiological studies encode collected participant-level information via a colle...
Copulas enable flexible parameterization of multivariate distributions in terms of constituent margi...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
A recent paper proposed an extended trivariate generalized linear mixed model (TGLMM) for synthesis ...
As meta-analysis of multiple diagnostic tests impacts clinical decision making and patient health, t...
Diagnostic test accuracy studies observe the result of a gold standard procedure that defines the pr...
The composite likelihood (CL) is amongst the computational methods used for estimation of the genera...
In this article, we present an overview and tutorial of statistical methods for meta-analysis of dia...
The current statistical procedures implemented in statistical software packages for pooling of diagn...
Traditional bivariate meta-analyses adopt the bivariate normal model. As the bivariate normal distri...
Objectives: The two main objectives of this research are (1) to compare several different models use...
We develop factor copula models to analyse the dependence among mixed continuous and discrete respon...
This thesis contributes to research in multivariate statistics by developing regular vine copula-bas...
A flexible approach for modeling longitudinal data is proposed. The model consists of nested bivaria...
To uncover complex hidden dependency structures among variables, researchers have used a mixture of ...
Many clinical and epidemiological studies encode collected participant-level information via a colle...
Copulas enable flexible parameterization of multivariate distributions in terms of constituent margi...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
A recent paper proposed an extended trivariate generalized linear mixed model (TGLMM) for synthesis ...
As meta-analysis of multiple diagnostic tests impacts clinical decision making and patient health, t...
Diagnostic test accuracy studies observe the result of a gold standard procedure that defines the pr...
The composite likelihood (CL) is amongst the computational methods used for estimation of the genera...
In this article, we present an overview and tutorial of statistical methods for meta-analysis of dia...
The current statistical procedures implemented in statistical software packages for pooling of diagn...
Traditional bivariate meta-analyses adopt the bivariate normal model. As the bivariate normal distri...
Objectives: The two main objectives of this research are (1) to compare several different models use...
We develop factor copula models to analyse the dependence among mixed continuous and discrete respon...
This thesis contributes to research in multivariate statistics by developing regular vine copula-bas...
A flexible approach for modeling longitudinal data is proposed. The model consists of nested bivaria...
To uncover complex hidden dependency structures among variables, researchers have used a mixture of ...
Many clinical and epidemiological studies encode collected participant-level information via a colle...
Copulas enable flexible parameterization of multivariate distributions in terms of constituent margi...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...