Bookedited by Mani Lakshminarayanan, Fanni Natanegara.
Summary: The cost for bringing new medicine from discovery to market has nearly doubled in the last decade and has now reached $2.6 billion. There is an urgent need to make drug development less time-consuming and less costly. Innovative trial designs/ analyses such as the Bayesian approach are essential to meet this need. This book will be the first to provide comprehensive coverage of Bayesian applications across the span of drug development, from discovery, to clinical trial, to manufacturing with practical examples. This book will have a wide appeal to statisticians, scientists, and physicians working in drug development who are motivated to accelerate and streamline the drug development process, as well as students who aspire to work in this field. The advantages of this book are: Provides motivating, worked, practical case examples with easy to grasp models, technical details, and computational codes to run the analyses Balances practical examples with best practices on trial simulation and reporting, as well as regulatory perspectives Chapters written by authors who are individual contributors in their respective topics Dr. Mani Lakshminarayanan is a researcher and statistical consultant with more than 30 years of experience in the pharmaceutical industry. He has published over 50 articles, technical reports, and book chapters besides serving as a referee for several journals. He has a PhD in Statistics from Southern Methodist University, Dallas, Texas and is a Fellow of the American Statistical Association. Dr. Fanni Natanegara has over 15 years of pharmaceutical experience and is currently Principal Research Scientist and Group Leader for the Early Phase Neuroscience Statistics team at Eli Lilly and Company. She played a key role in the Advanced Analytics team to provide Bayesian education and statistical consultation at Eli Lilly. Dr. Natanegara is the chair of the cross industry-regulatory-academic DIA BSWG to ensure that Bayesian methods are appropriately utilized for design and analysis throughout the drug-development process.
Contents:
Incorporation of Historical Control Data in Analysis of Clinical Trials
Practical considerations for building priors for confirmatory studies
The Practice of Prior Elicitation
Bayesian examples in preclinical in-vivo research
Planning a model-based Bayesian dose response study
Novel Designs for Early Phase Drug Combination Trials
Executing and Reporting Clinical Trial Simulations : Practical Recommendations for Best Practices
Reporting of Bayesian Analyses in Clinical Research : Some Recommendations
Handling missing data in clinical trials with Bayesian and Frequentist Approaches
Bayesian Applications in Pharmaceutical Development
Simulation for Bayesian Adaptive Designs : Step-by-Step Guide for Developing the Necessary R Code
Power Priors for Sample Size Determination in the Process Validation Life-Cycle
Bayesian Approaches in the Regulation of Medical Products
Computational Tools
Software for Bayesian Computation : An Overview of Some Currently Available Tools
Considerations and Bayesian Applications in Pharmaceutical Development for Rare Diseases
Extrapolation Process in Pediatric Drug Development and Corresponding Bayesian Implementation for Validating Clinical Efficacy.