Fr. 135.00

The Frailty Model

Inglese · Copertina rigida

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni

Clustered survival data are encountered in many scientific disciplines including human and veterinary medicine, biology, epidemiology, public health and demography. Frailty models provide a powerful tool to analyse clustered survival data. In contrast to the large number of research publications on frailty models, relatively few statistical software packages contain frailty models.
It is demanding for statistical practitioners and graduate students to grasp a good knowledge on frailty models from the existing literature. This book provides an in-depth discussion and explanation of the basics of frailty model methodology for such readers. The discussion includes parametric and semiparametric frailty models and accelerated failure time models. Common techniques to fit frailty models include the EM-algorithm, penalised likelihood techniques, Laplacian integration and Bayesian techniques. More advanced frailty models for hierarchical data are also included.
Real-lifeexamples are used to demonstrate how particular frailty models can be fitted and how the results should be interpreted. The programs to fit all the worked-out examples in the book are available from the Springer website with most of the programs developed in the freeware packages R and Winbugs. The book starts with a brief overview of some basic concepts in classical survival analysis, collecting what is needed for the reading on the more complex frailty models.

Sommario

Introduction.- Parametric proportional hazards models with gamma frailty.- Alternatives for the frailty model.- Frailty densities.- The semiparametric frailty model.- Multi-frailty and multilevel models.- Extensions of the frailty model.

Riassunto

This book discusses the statistical analysis of clustered survival data. Such data are encountered in many scientific disciplines including human and veterinary medicine, biology, epidemiology, public health and demography. A typical example is the time to death in cancer patients, with patients clustered in hospitals. Frailty models provide a powerful tool to analyse clustered survival data. In this book different methods based on the frailty model are described and it is demonstrated how they can be used to analyse clustered survival data. Worked-out examples based on real data are used to show how particular frailty models can be fitted and to explain how the results should be interpreted. All programs used for these examples are available on the Springer website.

Testo aggiuntivo

From the reviews:

"The book by Duchateau and Jansen is generally easy to follow. The book starts with introduction to the most popular parametric and semiparametric survival models. … this book can be recommended also for undergraduate students in statistics. … the book contains several further extensions of frailty models such as multifrailty and multilevel models with references. Therefore it is valuable also for researchers in survival analysis." (Tommi Härkänen, International Statistical Review, Vol. 76 (3), 2008)
"This book focuses on frailty models and provides an in-depth discussion of the basics of frailty model methodology using numerous real data sets. … The book is well structured and covers very nicely the material for frailty models. … The book is directed towards statistical practitioners and graduate students but it may be useful to a broad interdisciplinary readership of researchers and practitioners in applied statistics, biomedicine and biostatistics. … a reference book for a one-semester applied course in survival analysis focusing on frailties." (Filia Vonta, Journal of Applied Statistics, Vol. 36 (6), August, 2009)
"This book studies so-called frailty models intended for time-to-event data with a cluster structure. … provide a thorough presentation of the most current techniques used in this area of time-to-event analysis with emphasis on analysis of real data sets. The book is intended for students and applied statisticians. … this book gives a good description of frailty models. It is well written and its many real applications and the availability of computer code make it a valuable resource for the applied statistician … ." (Torben Martinussen, Biometrical Journal, Vol. 51 (3), 2009)

Relazione

From the reviews:

"The book by Duchateau and Jansen is generally easy to follow. The book starts with introduction to the most popular parametric and semiparametric survival models. ... this book can be recommended also for undergraduate students in statistics. ... the book contains several further extensions of frailty models such as multifrailty and multilevel models with references. Therefore it is valuable also for researchers in survival analysis." (Tommi Härkänen, International Statistical Review, Vol. 76 (3), 2008)
"This book focuses on frailty models and provides an in-depth discussion of the basics of frailty model methodology using numerous real data sets. ... The book is well structured and covers very nicely the material for frailty models. ... The book is directed towards statistical practitioners and graduate students but it may be useful to a broad interdisciplinary readership of researchers and practitioners in applied statistics, biomedicine and biostatistics. ... a reference book for a one-semester applied course in survival analysis focusing on frailties." (Filia Vonta, Journal of Applied Statistics, Vol. 36 (6), August, 2009)
"This book studies so-called frailty models intended for time-to-event data with a cluster structure. ... provide a thorough presentation of the most current techniques used in this area of time-to-event analysis with emphasis on analysis of real data sets. The book is intended for students and applied statisticians. ... this book gives a good description of frailty models. It is well written and its many real applications and the availability of computer code make it a valuable resource for the applied statistician ... ." (Torben Martinussen, Biometrical Journal, Vol. 51 (3), 2009)

Dettagli sul prodotto

Autori I. L. Duchateau, Lu Duchateau, Luc Duchateau, Paul Janßen
Editore Springer, Berlin
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 14.01.2008
 
EAN 9780387728346
ISBN 978-0-387-72834-6
Pagine 316
Dimensioni 160 mm x 25 mm x 243 mm
Peso 672 g
Illustrazioni XVII, 316 p.
Serie Statistics for Biology and Health
Statistics for Biology and Health
Categorie Scienze naturali, medicina, informatica, tecnica > Matematica > Teoria delle probabilità, stocastica, statistica matematica

Stochastik, Informatik, Wahrscheinlichkeitsrechnung, Onkologie, 3D-Druck, für die Hochschulausbildung, B, KI, Epidemiology & medical statistics, Statistics, Mustererkennung, Wahrscheinlichkeitsrechnung und Statistik, EPIDEMIOLOGIE, INTERNAL MEDICINE, Intelligenz / Künstliche Intelligenz, Künstliche Intelligenz - AI, Mathematik / Statistik, Infektiologie, Maschinelles Sehen, Bildverstehen, Computermodellierung und -simulation, Datenverarbeitung / Simulation, 3D-Grafik und Modellierung, Onkologie - Radioonkologie, Krebs (Krankheit) / Onkologie, Infektiöse und ansteckende Krankheiten, MEDICAL / Oncology, MEDICAL / Infectious Diseases, MEDICAL / Biostatistics, Biostatistik, Statistik / Biostatistik, computer science, Oncology, Computer Vision, Infectious & contagious diseases, Mathematics and Statistics, pattern recognition, infectious diseases, Statistics for Life Sciences, Medicine, Health Sciences, Probability Theory and Stochastic Processes, Cancer Research, Probability & statistics, Statistics in Life Sciences, Medicine, Health Sciences, Probabilities, Stochastics, Probability Theory, Biomedical Research, Computer simulation, Computer modelling & simulation, Simulation and Modeling, Biometrics, Biometrics (Biology)

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