Fr. 196.00

Statistical Testing Strategies in the Health Sciences

Anglais · Livre Relié

Expédition généralement dans un délai de 1 à 3 semaines (ne peut pas être livré de suite)

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Zusatztext "This book covers a wide range of statistical approaches to hypothesis testing for decision-making in various health science research fields. It provides not only refreshing information on many routinely used statistical methods but also a good review of more advanced methods such as empirical likelihood (EL) methods? For clinicians or medical researchers with some training in statistics! many chapters can serve as references. For research statisticians! the book provides important properties and theoretical elaborations for the methods. For pharmaceutical drug trial statisticians in particular! the book on one hand offers a systematic account of many methods and on another hand exposes them to the methods used in some related research fields (e.g.! diagnosis identification and testing) that lead one to see the interrelations across such research fields. Throughout the book! the authors transfer the statistical concepts and methods to real-world applications! with emphasis on implementing the methods in R and SAS program code and on interpreting the results?Another great feature of the book is that the authors provide supplemental materials on the evolution of the methodology with additional research notes in each chapter. These give research-oriented statisticians a comprehensive list of references which would be quite helpful for their research. The supplemental materials are also entertaining for the general readers to learn the chronology of statistical theory and methods."-X. Daniel Jia! published in Journal of Biopharmaceutical Statistics! April 2017"With techniques spanning robust statistical methods to more computationally intensive approaches! this book shows how to apply correct and efficient testing mechanisms to various problems encountered in medical and epidemiological studies! including clinical trials."-TLT Magazine! September 2016"This comprehensive book takes the reader from the underpinnings of statistical inference through to cutting-edge modern analytical techniques. Along the way! the authors explore graphical representations of data! a key component of any data analysis; standard procedures such as the t-test and tests for independence; and modern methods! including the bootstrap and empirical likelihood method. The presentation focuses on practical applications interwoven with theoretical rationale! with an emphasis on how to carry out procedures and interpret the results. Numerous software examples (R and SAS) are provided! such that the readers should be able to reproduce plots and other analyses on their own. A wealth of examples from real data sets! web resources! supplemental notes! and plentiful references are provided! which round out the materials."-From the Foreword by Nicole Lazar! Department of Statistics! University of Georgia Informationen zum Autor Albert Vexler is a tenured professor in the Department of Biostatistics at the State University of New York (SUNY) at Buffalo. Dr. Vexler is the associate editor of Biometrics and BMC Medical Research Methodology . He is the author and coauthor of various publications that contribute to the theoretical and applied aspects of statistics in medical research. Many of his papers and statistical software developments have appeared in statistical and biostatistical journals that have top-rated impact factors and are historically recognized as leading scientific journals. Dr. Vexler was awarded a National Institutes of Health grant to develop novel nonparametric data analysis and statistical methodology. His research interests include receiver operating characteristic curve analysis, measurement error, optimal designs, regression models, censored data, change point problems, sequential analysis, statistical epidemiology, Bayesian decision-making mechanisms, asymptotic methods of statistics, forecasting, sampling, optimal testing, nonparametric tests, empirical likelihoods, rene...

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