This paper introduces the R package meta4diag for implementing Bayesian bivariate meta-analyses of diagnostic test studies. Our package meta4diag is a purpose-built front end of the R package INLA. While INLA offers full Bayesian inference for the large set of latent Gaussian models using integrated nested Laplace approximations, meta4diag extracts the features needed for bivariate meta-analysis and presents them in an intuitive way. It allows the user a straightforward model specification and offers user-specific prior distributions. Further, the newly proposed penalized complexity prior framework is supported, which builds on prior intuitions about the behaviors of the variance and correlation parameters. Accurate posterior marginal distr...
With the recognition of the importance of evidence-based medicine, there is an emerging need for met...
In Part One, the foundations of Bayesian inference are reviewed, and the technicalities of the Bayes...
Multivariate random effects meta-analysis (MRMA) is an appropriate way for synthesizing data from st...
This paper introduces the R package meta4diag for implementing Bayesian bivariate meta-analyses of d...
For bivariate meta-analysis of diagnostic studies, likelihood approaches are very popular. However, ...
In this paper we present the R package bamdit. The name of the package stands for "Bayesian meta-ana...
Although measures such as sensitivity and specificity are used in the study of diagnostic test accur...
BackgroundThe statistical models developed for meta-analysis of diagnostic test accuracy studies req...
With the growing number of studies looking at the performance of diagnostic tests, combining the st...
Meta-analysis refers to the collection and subsequent statistical analysis of results from numerous ...
Numerous meta-analyses in healthcare research combine results from only a small number of studies, f...
The R-package mada is a tool for the meta-analysis of diagnostic accuracy. In con-trast to univariat...
Abstract Background Several reviews have noted shortc...
Numerous meta-analyses in healthcare research combine results from only a small number of studies, f...
BACKGROUND: Random-effects meta-analysis within a hierarchical normal modeling framework is commonly...
With the recognition of the importance of evidence-based medicine, there is an emerging need for met...
In Part One, the foundations of Bayesian inference are reviewed, and the technicalities of the Bayes...
Multivariate random effects meta-analysis (MRMA) is an appropriate way for synthesizing data from st...
This paper introduces the R package meta4diag for implementing Bayesian bivariate meta-analyses of d...
For bivariate meta-analysis of diagnostic studies, likelihood approaches are very popular. However, ...
In this paper we present the R package bamdit. The name of the package stands for "Bayesian meta-ana...
Although measures such as sensitivity and specificity are used in the study of diagnostic test accur...
BackgroundThe statistical models developed for meta-analysis of diagnostic test accuracy studies req...
With the growing number of studies looking at the performance of diagnostic tests, combining the st...
Meta-analysis refers to the collection and subsequent statistical analysis of results from numerous ...
Numerous meta-analyses in healthcare research combine results from only a small number of studies, f...
The R-package mada is a tool for the meta-analysis of diagnostic accuracy. In con-trast to univariat...
Abstract Background Several reviews have noted shortc...
Numerous meta-analyses in healthcare research combine results from only a small number of studies, f...
BACKGROUND: Random-effects meta-analysis within a hierarchical normal modeling framework is commonly...
With the recognition of the importance of evidence-based medicine, there is an emerging need for met...
In Part One, the foundations of Bayesian inference are reviewed, and the technicalities of the Bayes...
Multivariate random effects meta-analysis (MRMA) is an appropriate way for synthesizing data from st...