|
|
Showing 1 - 4 of
4 matches in All Departments
This book is intended to provide a text on statistical methods for
detecting clus ters and/or clustering of health events that is of
interest to ?nal year undergraduate and graduate level statistics,
biostatistics, epidemiology, and geography students but will also
be of relevance to public health practitioners, statisticians,
biostatisticians, epidemiologists, medical geographers, human
geographers, environmental scien tists, and ecologists.
Prerequisites are introductory biostatistics and epidemiology
courses. With increasing public health concerns about environmental
risks, the need for sophisticated methods for analyzing spatial
health events is immediate. Further more, the research area of
statistical tests for disease clustering now attracts a wide
audience due to the perceived need to implement wide ranging
monitoring systems to detect possible health related bioterrorism
activity. With this background and the development of the
geographical information system (GIS), the analysis of disease
clustering of health events has seen considerable development over
the last decade. Therefore, several excellent books on spatial
epidemiology and statistics have re cently been published. However,
it seems to me that there is no other book solely focusing on
statistical methods for disease clustering. I hope that readers
will ?nd this book useful and interesting as an introduction to the
subject.
Repeated Measures Design with Generalized Linear Mixed Models for
Randomized Controlled Trials is the first book focused on the
application of generalized linear mixed models and its related
models in the statistical design and analysis of repeated measures
from randomized controlled trials. The author introduces a new
repeated measures design called S:T design combined with mixed
models as a practical and useful framework of parallel group RCT
design because of easy handling of missing data and sample size
reduction. The book emphasizes practical, rather than theoretical,
aspects of statistical analyses and the interpretation of results.
It includes chapters in which the author describes some
old-fashioned analysis designs that have been in the literature and
compares the results with those obtained from the corresponding
mixed models. The book will be of interest to biostatisticians,
researchers, and graduate students in the medical and health
sciences who are involved in clinical trials. Author Website:Data
sets and programs used in the book are available at
http://www.medstat.jp/downloadrepeatedcrc.html
Repeated Measures Design with Generalized Linear Mixed Models for
Randomized Controlled Trials is the first book focused on the
application of generalized linear mixed models and its related
models in the statistical design and analysis of repeated measures
from randomized controlled trials. The author introduces a new
repeated measures design called S:T design combined with mixed
models as a practical and useful framework of parallel group RCT
design because of easy handling of missing data and sample size
reduction. The book emphasizes practical, rather than theoretical,
aspects of statistical analyses and the interpretation of results.
It includes chapters in which the author describes some
old-fashioned analysis designs that have been in the literature and
compares the results with those obtained from the corresponding
mixed models. The book will be of interest to biostatisticians,
researchers, and graduate students in the medical and health
sciences who are involved in clinical trials. Author Website:Data
sets and programs used in the book are available at
http://www.medstat.jp/downloadrepeatedcrc.html
This book is intended to provide a text on statistical methods for
detecting clus ters and/or clustering of health events that is of
interest to ?nal year undergraduate and graduate level statistics,
biostatistics, epidemiology, and geography students but will also
be of relevance to public health practitioners, statisticians,
biostatisticians, epidemiologists, medical geographers, human
geographers, environmental scien tists, and ecologists.
Prerequisites are introductory biostatistics and epidemiology
courses. With increasing public health concerns about environmental
risks, the need for sophisticated methods for analyzing spatial
health events is immediate. Further more, the research area of
statistical tests for disease clustering now attracts a wide
audience due to the perceived need to implement wide ranging
monitoring systems to detect possible health related bioterrorism
activity. With this background and the development of the
geographical information system (GIS), the analysis of disease
clustering of health events has seen considerable development over
the last decade. Therefore, several excellent books on spatial
epidemiology and statistics have re cently been published. However,
it seems to me that there is no other book solely focusing on
statistical methods for disease clustering. I hope that readers
will ?nd this book useful and interesting as an introduction to the
subject.
|
|