In this research, we consider Bayesian methodologies to address problems in biopharmaceutical research, most of which are motivated by real-world problems in network meta-analysis, prior elicitation, and adaptive designs. Network meta-analysis is a hierarchical model used to combine the results of multiple studies, and allows for us to make direct and indirect comparisons between treatments. We investigate Bayesian network meta-analysis models for survival data based on modeling the log-hazard rates, as opposed to hazards ratios. Expert opinion is often needed to construct priors for time-to-event data, especially in pediatric and oncology studies. For this, we propose a prior elicitation method for the Weibull time-to-event distribution th...
In this dissertation, we explored three Bayesian methodological extensions, including an adaptive Ba...
Includes bibliographical references (p. 123-128).The process of conducting a pharmaceutical clinical...
My dissertation focuses mainly on Bayesian adaptive designs for phase I and phase II clinical trials...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
Includes bibliographical references (p. 112-117).The efficacy, safety, and cost of pharmaceutical pr...
Background Bayesian statistics are an appealing alternative to the traditional frequentist approach ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
Network meta‐analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
Network meta-analysis has been introduced as an extension of pairwise meta-analysis to facilitate in...
In this dissertation, we consider modeling problems in biopharmaceutical research, much of which is ...
This study presents an overview of conceptual and practical issues of a network meta-analysis (NMA),...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Abstract. The Bayesian approach is being used increasingly in medical research. The flexibility of t...
Network meta-analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
With the growing number of studies looking at the performance of diagnostic tests, combining the st...
In this dissertation, we explored three Bayesian methodological extensions, including an adaptive Ba...
Includes bibliographical references (p. 123-128).The process of conducting a pharmaceutical clinical...
My dissertation focuses mainly on Bayesian adaptive designs for phase I and phase II clinical trials...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
Includes bibliographical references (p. 112-117).The efficacy, safety, and cost of pharmaceutical pr...
Background Bayesian statistics are an appealing alternative to the traditional frequentist approach ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
Network meta‐analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
Network meta-analysis has been introduced as an extension of pairwise meta-analysis to facilitate in...
In this dissertation, we consider modeling problems in biopharmaceutical research, much of which is ...
This study presents an overview of conceptual and practical issues of a network meta-analysis (NMA),...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Abstract. The Bayesian approach is being used increasingly in medical research. The flexibility of t...
Network meta-analysis (NMA) combines direct and indirect evidence from trials to calculate and rank ...
With the growing number of studies looking at the performance of diagnostic tests, combining the st...
In this dissertation, we explored three Bayesian methodological extensions, including an adaptive Ba...
Includes bibliographical references (p. 123-128).The process of conducting a pharmaceutical clinical...
My dissertation focuses mainly on Bayesian adaptive designs for phase I and phase II clinical trials...