TY - BOOK AU - Broemeling,Lyle D. TI - Bayesian analysis of infectious diseases: COVID-19 and beyond T2 - Chapman & Hall/CRC biostatistics series SN - 9781000336474 AV - RA643 .B76 2021 U1 - 616.90015195 23 PY - 2021/// CY - Boca Raton PB - CRC Press KW - Communicable diseases KW - Statistics KW - Bayesian statistical decision theory KW - MATHEMATICS / Probability & Statistics / Bayesian Analysis KW - bisacsh KW - MEDICAL / Biostatistics KW - MEDICAL / Infectious Diseases N1 - Contents--Author iv...1. Introduction to Bayesian Inferences for Infectious Diseases..................12. Bayesian Analysis -- 53. Infectious Diseases ........394. Bayesian Inference for Discrete Markov Chains:Their Relevance to Infectious Diseases.........595. Biological Examples Modeled by Discrete Markov Chains................ 1136. Inferences for Markov Chains in Continuous Time.........1497. Bayesian Inference: Biological Processes that Follow a Continuous Time Markov Chain.......1958. Additional Information about Infectious Diseases.......253Index ...... 315 N2 - Bayesian Analysis of Infectious Diseases -COVID-19 and Beyond shows how the Bayesian approach can be used to analyze the evolutionary behavior of infectious diseases, including the coronavirus pandemic. The book describes the foundation of Bayesian statistics while explicating the biology and evolutionary behavior of infectious diseases, including viral and bacterial manifestations of the contagion. The book discusses the application of Markov Chains to contagious diseases, previews data analysis models, the epidemic threshold theorem, and basic properties of the infection process. Also described are the chain binomial model for the evolution of epidemics. Features: Represents the first book on infectious disease from a Bayesian perspective. Employs WinBUGS and R to generate observations that follow the course of contagious maladies. Includes discussion of the coronavirus pandemic as well as many examples from the past, including the flu epidemic of 1918-1919. Compares standard non-Bayesian and Bayesian inferences. Offers a companion website with the R and WinBUGS code UR - https://www.taylorfrancis.com/books/9781003125983 UR - http://www.oclc.org/content/dam/oclc/forms/terms/vbrl-201703.pdf ER -