Sequential Experimentation in Clinical Trials von Jay Bartroff | Design and Analysis | ISBN 9781489995988

Sequential Experimentation in Clinical Trials

Design and Analysis

von Jay Bartroff, Tze Leung Lai und Mei-Chiung Shih
Mitwirkende
Autor / AutorinJay Bartroff
Autor / AutorinTze Leung Lai
Autor / AutorinMei-Chiung Shih
Buchcover Sequential Experimentation in Clinical Trials | Jay Bartroff | EAN 9781489995988 | ISBN 1-4899-9598-6 | ISBN 978-1-4899-9598-8

“This outstanding book written by three prominent scholars present in depth sequential designs and analyses for different clinical trials. … The book can also be used for short courses on clinical trials, translational medical research, and sequential experimentation by selecting the relevant parts of it.” (Subir Ghosh, Technometrics, Vol. 56 (4), November, 2014)

“It is definitely a ‘must read’ for anyone doing research into the theory or methodology of modern sequential statistical analysis.” (Bruce W. Turnbull, Mathematical Reviews, May, 2014)

Sequential Experimentation in Clinical Trials

Design and Analysis

von Jay Bartroff, Tze Leung Lai und Mei-Chiung Shih
Mitwirkende
Autor / AutorinJay Bartroff
Autor / AutorinTze Leung Lai
Autor / AutorinMei-Chiung Shih

Sequential Experimentation in Clinical Trials: Design and Analysis is developed from decades of work in research groups, statistical pedagogy, and workshop participation. Different parts of the book can be used for short courses on clinical trials, translational medical research, and sequential experimentation. The authors have successfully used the book to teach innovative clinical trial designs and statistical methods for Statistics Ph. D. students at Stanford University. There are additional online supplements for the book that include chapter-specific exercises and information.

Sequential Experimentation in Clinical Trials: Design and Analysis covers the much broader subject of sequential experimentation that includes group sequential and adaptive designs of Phase II and III clinical trials, which have attracted much attention in the past three decades. In particular, the broad scope of design and analysis problems in sequential experimentation clearly requires a wide range of statistical methods and models from nonlinear regression analysis, experimental design, dynamic programming, survival analysis, resampling, and likelihood and Bayesian inference. The background material in these building blocks is summarized in Chapter 2 and Chapter 3 and certain sections in Chapter 6 and Chapter 7. Besides group sequential tests and adaptive designs, the book also introduces sequential change-point detection methods in Chapter 5 in connection with pharmacovigilance and public health surveillance. Together with dynamic programming and approximate dynamic programming in Chapter 3, the book therefore covers all basic topics for a graduate course in sequential analysis designs.