In this paper we suggest a new Bayesian approach to network meta-analysis for the case of discrete multiple outcomes. The joint distribution of the discrete outcomes is modeled through a Gaussian copula with binomial marginals. The remaining elements of the hierarchial random effects model are specified in a standard way, with the logit of the success probabilities given by the sum of a baseline log-odds and random effects comparing the log-odds of each treatment against the reference and having a Gaussian distribution centered at the vector of pooled effects. An adaptive Markov Chain Monte Carlo algorithm is devised for running posterior inference. The model is applied to two datasets from Cochrane reviews, already analysed in two papers s...
Network meta‐analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
Multivariate random effects meta-analysis (MRMA) is an appropriate way for synthesizing data from st...
Random-effects meta-analyses are very commonly used in medical statistics. Recent methodological dev...
This study presents an overview of conceptual and practical issues of a network meta-analysis (NMA),...
Network meta-analysis has been introduced as an extension of pairwise meta-analysis to facilitate in...
A multivariate meta-analysis of two or more correlated outcomes is expected to improve precision com...
A multivariate meta-analysis of two or more correlated outcomes is expected to improve precision com...
In this manuscript we use realistic data to conduct a network meta-analysis using a Bayesian approac...
In the past decade, a new statistical method—network meta-analysis—has been developed to address lim...
Network meta-analysis can synthesize evidence from studies comparing multiple treatments for the sam...
In this dissertation research, we develop models and carry out statistical inference for meta ordina...
Network meta-analysis (NMA) is gaining popularity for comparing multiple treatments in a single anal...
Network Meta-Analysis (NMA) is an analysis of synthesizing information from multiple independent sou...
In this research, we consider Bayesian methodologies to address problems in biopharmaceutical resear...
Random-effects meta-analyses are very commonly used in medical statistics. Recent methodological dev...
Network meta‐analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
Multivariate random effects meta-analysis (MRMA) is an appropriate way for synthesizing data from st...
Random-effects meta-analyses are very commonly used in medical statistics. Recent methodological dev...
This study presents an overview of conceptual and practical issues of a network meta-analysis (NMA),...
Network meta-analysis has been introduced as an extension of pairwise meta-analysis to facilitate in...
A multivariate meta-analysis of two or more correlated outcomes is expected to improve precision com...
A multivariate meta-analysis of two or more correlated outcomes is expected to improve precision com...
In this manuscript we use realistic data to conduct a network meta-analysis using a Bayesian approac...
In the past decade, a new statistical method—network meta-analysis—has been developed to address lim...
Network meta-analysis can synthesize evidence from studies comparing multiple treatments for the sam...
In this dissertation research, we develop models and carry out statistical inference for meta ordina...
Network meta-analysis (NMA) is gaining popularity for comparing multiple treatments in a single anal...
Network Meta-Analysis (NMA) is an analysis of synthesizing information from multiple independent sou...
In this research, we consider Bayesian methodologies to address problems in biopharmaceutical resear...
Random-effects meta-analyses are very commonly used in medical statistics. Recent methodological dev...
Network meta‐analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
Multivariate random effects meta-analysis (MRMA) is an appropriate way for synthesizing data from st...
Random-effects meta-analyses are very commonly used in medical statistics. Recent methodological dev...