
Applied Missing Data Analysis in the Health Sciences
Wiley (Publisher)
1st Edition
Published on 18. July 2014
Book
Hardback
256 pages
978-0-470-52381-0 (ISBN)
Description
Applied Missing Data Analysis in the Health Sciences A modern and practical guide to the essential concepts and ideas for analyzing data with missing observations in the field of biostatistics
With an emphasis on hands-on applications, Applied Missing Data Analysis in the Health Sciences outlines the various statistical methods for the analysis of missing data. The authors acknowledge the limitations of established techniques and provide newly-developed methods with concrete applications in areas such as causal inference.
Organized by types of data, chapter coverage begins with an overall introduction to the existence and limitations of missing data and continues into techniques for missing data inference, including likelihood-based, weighted GEE, multiple imputation, and Bayesian methods. The book subsequently covers cross-sectional, longitudinal, hierarchical, survival data. In addition, Applied Missing Data Analysis in the Health Sciences features:
Multiple data sets that can be replicated using SAS (R), Stata (R), R, and WinBUGS software packages
Numerous examples of case studies to illustrate real-world scenarios and demonstrate applications of discussed methodologies
Detailed appendices to guide readers through the use of the presented data in various software environments
Applied Missing Data Analysis in the Health Sciences is an excellent textbook for upper-undergraduate and graduate-level biostatistics courses as well as an ideal resource for health science researchers and applied statisticians.
With an emphasis on hands-on applications, Applied Missing Data Analysis in the Health Sciences outlines the various statistical methods for the analysis of missing data. The authors acknowledge the limitations of established techniques and provide newly-developed methods with concrete applications in areas such as causal inference.
Organized by types of data, chapter coverage begins with an overall introduction to the existence and limitations of missing data and continues into techniques for missing data inference, including likelihood-based, weighted GEE, multiple imputation, and Bayesian methods. The book subsequently covers cross-sectional, longitudinal, hierarchical, survival data. In addition, Applied Missing Data Analysis in the Health Sciences features:
Multiple data sets that can be replicated using SAS (R), Stata (R), R, and WinBUGS software packages
Numerous examples of case studies to illustrate real-world scenarios and demonstrate applications of discussed methodologies
Detailed appendices to guide readers through the use of the presented data in various software environments
Applied Missing Data Analysis in the Health Sciences is an excellent textbook for upper-undergraduate and graduate-level biostatistics courses as well as an ideal resource for health science researchers and applied statisticians.
Reviews / Votes
"Overall the book is an excellent reference for biostatisticians who are interested in methodological approaches as well as for biostatisticians who prefer the applied side. Several useful examples from clinical trials and health research are carefully selected and analyzed to demonstrate the methods covered in the book. It is also a useful resource for postgraduate students researching missing-data methods and their application." (Biometrical Journal, 1 June 2015)More details
Series
Language
English
Place of publication
New York
United States
Target group
College/higher education
Professional and scholarly
Illustrations
Charts: 20 B&W, 0 Color; Drawings: 10 B&W, 0 Color; Graphs: 45 B&W, 0 Color
Dimensions
Height: 244 mm
Width: 163 mm
Thickness: 20 mm
Weight
481 gr
ISBN-13
978-0-470-52381-0 (9780470523810)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Xiao-Hua Zhou | Chuan Zhou | Danping Lui
Applied Missing Data Analysis in the Health Sciences
E-Book
05/2014
Wiley
€104.99
Available for download

Xiao-Hua Zhou | Chuan Zhou | Danping Lui
Applied Missing Data Analysis in the Health Sciences
E-Book
05/2014
Wiley
€99.99
Available for download
Persons
XIAO-HUA ZHOU, PhD, is Professor in the Department of Biostatistics at the University of Washington and Director and Research Career Scientist at the Biostatistics Unit of the Veterans Affairs Puget Sound Health Care System. Dr. Zhou is Associate Editor of Statistics in Medicine and has published over 200 journal articles in his areas of research interest, which include statistical methods in diagnostic medicine, analysis of skewed data, causal inferences, and statistical methods for assessing predictive values of biomarkers.
CHUAN ZHOU, PhD, is Research Associate Professor in the Department of Pediatrics at University of Washington. Dr. Zhou is also Senior Biostatistician at the Center for Child Health, Behavior and Development at Seattle Children's Research Institute where he conducts clinical and epidemiological research with pediatric population. His areas of research interest include clinical trials, health service research, diagnostics, missing data, and causal inference.
DANPING LIU, PhD, is Investigator in the Division of Intramural Population Health Research at the Eunice Kennedy Shriver National Institute of Child Health and Human Development. He has authored numerous research articles in his areas of research interest, which include medical diagnostic testing and ROC curve, missing data methodologies, longitudinal data analysis, and non- and-semi-parametric inferences.
XIAOBO DING, PhD, is Assistant Professor in the Academy of Mathematics and Systems Science at the Chinese Academy of Sciences. His areas of research interest include dimension reduction, variable selection, missing data, confidence bands, and goodness of fit tests.
CHUAN ZHOU, PhD, is Research Associate Professor in the Department of Pediatrics at University of Washington. Dr. Zhou is also Senior Biostatistician at the Center for Child Health, Behavior and Development at Seattle Children's Research Institute where he conducts clinical and epidemiological research with pediatric population. His areas of research interest include clinical trials, health service research, diagnostics, missing data, and causal inference.
DANPING LIU, PhD, is Investigator in the Division of Intramural Population Health Research at the Eunice Kennedy Shriver National Institute of Child Health and Human Development. He has authored numerous research articles in his areas of research interest, which include medical diagnostic testing and ROC curve, missing data methodologies, longitudinal data analysis, and non- and-semi-parametric inferences.
XIAOBO DING, PhD, is Assistant Professor in the Academy of Mathematics and Systems Science at the Chinese Academy of Sciences. His areas of research interest include dimension reduction, variable selection, missing data, confidence bands, and goodness of fit tests.
Author
University of Washington
University of Washington
Eunice Kennedy Shriver National Institute of Child Health and Human Development
Chinese Academy of Sciences
Content
1 Missing Data Concepts and Motivating Examples 1
2 Overview of Methods for Dealing with Missing Data 15
3 Design Considerations in the Presence Of Missing Data 25
4 Cross-sectional Data Methods 31
5 Longitudinal Data Methods 69
6 Survival Analysis Under Ignorable Missingness 121
7 Nonignorable Missingness 147
8 Analysis of Randomized Clinical Trials With Noncompliance 185
Bibliography 215
Index 225
2 Overview of Methods for Dealing with Missing Data 15
3 Design Considerations in the Presence Of Missing Data 25
4 Cross-sectional Data Methods 31
5 Longitudinal Data Methods 69
6 Survival Analysis Under Ignorable Missingness 121
7 Nonignorable Missingness 147
8 Analysis of Randomized Clinical Trials With Noncompliance 185
Bibliography 215
Index 225