Bayesian Thinking in Biostatistics

Author:   Gary L Rosner (Johns Hopkins Medicine, Baltimore, Maryland, USA) ,  Purushottam W. Laud ,  Wesley O. Johnson (UC Irvine)
Publisher:   Taylor & Francis Inc
ISBN:  

9781439800089


Pages:   601
Publication Date:   16 March 2021
Format:   Hardback
Availability:   In Print   Availability explained
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Bayesian Thinking in Biostatistics


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Author:   Gary L Rosner (Johns Hopkins Medicine, Baltimore, Maryland, USA) ,  Purushottam W. Laud ,  Wesley O. Johnson (UC Irvine)
Publisher:   Taylor & Francis Inc
Imprint:   Chapman & Hall/CRC
Weight:   1.270kg
ISBN:  

9781439800089


ISBN 10:   1439800081
Pages:   601
Publication Date:   16 March 2021
Audience:   College/higher education ,  General/trade ,  Tertiary & Higher Education ,  General
Format:   Hardback
Publisher's Status:   Active
Availability:   In Print   Availability explained
This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us.

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Reviews

This thoroughly modern Bayesian book by leaders in developing and applying Bayesian methods is a must have as a textbook or a reference volume. Rosner, Laud and Johnson make the case for Bayesian approaches by melding clear exposition on methodology with serious attention to a broad array of illuminating applications. These are activated by excellent coverage of computing methods and provision of code. Their content on model assessment, robustness, data-analytic approaches and predictive assessments (these pioneered by Seymour Geisser) are essential to valid practice. The numerous exercises and professional advice make the book ideal as a text for an intermediate-level course for aspiring statisticians, domain scientists and policy researchers. -Thomas Louis, Johns Hopkins University The book introduces all the important topics that one would usually cover in a beginning graduate level class on Bayesian biostatistics. The careful introduction of the Bayesian viewpoint and the mechanics of implementing Bayesian inference in the early chapters makes the it a complete self contained introduction to Bayesian inference for biomedical problems. As a natural consequence of the biostatistics target audience all methods and discussions are well motivated by specific inference problems as they arise in biomedical research. Even without this target audience in mind, the same motivating problems would be a great pedagogical choice to keep discussion focused and to make many modeling and inference choices intuitively appealing. Overall the authors have made well informed choices about including material and topics, and about the level of details of some of the formal presentation, fittingly leaving some details to references. Another great feature for using this book as a textbook is the inclusion of extensive problem sets, going well beyond construed and simple problems. Many exercises consider real data and studies, providing very useful examples in addition to serving as problems. In summary, the book is a great introduction to Bayesian inference for readers with an interest in biomedical applications, but who do not necessarily have a formal biostatistics background. - Peter Mueller, University of Texas


""This thoroughly modern Bayesian book by leaders in developing and applying Bayesian methods is a ""must have"" as a textbook or a reference volume. Rosner, Laud and Johnson make the case for Bayesian approaches by melding clear exposition on methodology with serious attention to a broad array of illuminating applications. These are activated by excellent coverage of computing methods and provision of code. Their content on model assessment, robustness, data-analytic approaches and predictive assessments (these pioneered by Seymour Geisser) are essential to valid practice. The numerous exercises and professional advice make the book ideal as a text for an intermediate-level course for aspiring statisticians, domain scientists and policy researchers."" -Thomas Louis, Johns Hopkins University ""The book introduces all the important topics that one would usually cover in a beginning graduate level class on Bayesian biostatistics. The careful introduction of the Bayesian viewpoint and the mechanics of implementing Bayesian inference in the early chapters makes the it a complete self contained introduction to Bayesian inference for biomedical problems. As a natural consequence of the biostatistics target audience all methods and discussions are well motivated by specific inference problems as they arise in biomedical research. Even without this target audience in mind, the same motivating problems would be a great pedagogical choice to keep discussion focused and to make many modeling and inference choices intuitively appealing. Overall the authors have made well informed choices about including material and topics, and about the level of details of some of the formal presentation, fittingly leaving some details to references. Another great feature for using this book as a textbook is the inclusion of extensive problem sets, going well beyond construed and simple problems. Many exercises consider real data and studies, providing very useful examples in addition to serving as problems. In summary, the book is a great introduction to Bayesian inference for readers with an interest in biomedical applications, but who do not necessarily have a formal biostatistics background. - Peter Mueller, University of Texas ""The book has exercises in each chapter and is accompanied by a dedicated website with data and code in BUGS, JAGS, and Stan, which make it an excellent textbook for students as well as a great reference book for scientists who are interested in applying Bayesian methods to their research problems."" Yang Ni, Texas A&M University USA, Journal of the American Statistical Association, Volume 117, Issue 538, June 2022.


This thoroughly modern Bayesian book by leaders in developing and applying Bayesian methods is a must have as a textbook or a reference volume. Rosner, Laud and Johnson make the case for Bayesian approaches by melding clear exposition on methodology with serious attention to a broad array of illuminating applications. These are activated by excellent coverage of computing methods and provision of code. Their content on model assessment, robustness, data-analytic approaches and predictive assessments (these pioneered by Seymour Geisser) are essential to valid practice. The numerous exercises and professional advice make the book ideal as a text for an intermediate-level course for aspiring statisticians, domain scientists and policy researchers. -Thomas Louis, Johns Hopkins University The book introduces all the important topics that one would usually cover in a beginning graduate level class on Bayesian biostatistics. The careful introduction of the Bayesian viewpoint and the mechanics of implementing Bayesian inference in the early chapters makes the it a complete self contained introduction to Bayesian inference for biomedical problems. As a natural consequence of the biostatistics target audience all methods and discussions are well motivated by specific inference problems as they arise in biomedical research. Even without this target audience in mind, the same motivating problems would be a great pedagogical choice to keep discussion focused and to make many modeling and inference choices intuitively appealing. Overall the authors have made well informed choices about including material and topics, and about the level of details of some of the formal presentation, fittingly leaving some details to references. Another great feature for using this book as a textbook is the inclusion of extensive problem sets, going well beyond construed and simple problems. Many exercises consider real data and studies, providing very useful examples in addition to serving as problems. In summary, the book is a great introduction to Bayesian inference for readers with an interest in biomedical applications, but who do not necessarily have a formal biostatistics background. - Peter Mueller, University of Texas


Author Information

Authors Gary L. Rosner is the Eli Kennerly Marshall, Jr., Professor of Oncology at the Johns Hopkins School of Medicine and Professor of Biostatistics at the Johns Hopkins Bloomberg School of Public Health. Purushottam (Prakash) W. Laud is Professor in the Division of Biostatistics, and Director of the Biostatistics Shared Resource for the Cancer Center, at the Medical College of Wisconsin. Wesley O. Johnson is professor Emeritus in the Department of Statistics as the University of California, Irvine.

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