The statistical analysis of multivariate time data: a marginal modeling approach
The Statistical Analysis of Multivariate Failure Time Data: A Marginal Modeling Approach provides an innovative look at methods for the analysis of correlated failure times. The focus is on the use of marginal single and marginal double failure hazard rate estimators for the extraction of regression...
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Main Authors: | , |
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Format: | Electronic eBook |
Language: | English |
Published: |
Boca Raton
CRC Press, Taylor & Francis Group
2019
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Subjects: | |
Online Access: | Volltext |
Summary: | The Statistical Analysis of Multivariate Failure Time Data: A Marginal Modeling Approach provides an innovative look at methods for the analysis of correlated failure times. The focus is on the use of marginal single and marginal double failure hazard rate estimators for the extraction of regression information. For example, in a context of randomized trial or cohort studies, the results go beyond that obtained by analyzing each failure time outcome in a univariate fashion. The book is addressed to researchers, practitioners, and graduate students, and can be used as a reference or as a graduate course text. Much of the literature on the analysis of censored correlated failure time data uses frailty or copula models to allow for residual dependencies among failure times, given covariates. In contrast, this book provides a detailed account of recently developed methods for the simultaneous estimation of marginal single and dual outcome hazard rate regression parameters, with emphasis on multiplicative (Cox) models. Illustrations are provided of the utility of these methods using Women's Health Initiative randomized controlled trial data of menopausal hormones and of a low-fat dietary pattern intervention. As byproducts, these methods provide flexible semiparametric estimators of pairwise bivariate survivor functions at specified covariate histories, as well as semiparametric estimators of cross ratio and concordance functions given covariates. The presentation also describes how these innovative methods may extend to handle issues of dependent censorship, missing and mismeasured covariates, and joint modeling of failure times and covariates, setting the stage for additional theoretical and applied developments. This book extends and continues the style of the classic Statistical Analysis of Failure Time Data by Kalbfleisch and Prentice. Ross L. Prentice is Professor of Biostatistics at the Fred Hutchinson Cancer Research Center and University of Washington in Seattle, Washington. He is the recipient of COPSS Presidents and Fisher awards, the AACR Epidemiology/Prevention and Team Science awards, and is a member of the National Academy of Medicine. Shanshan Zhao is a Principal Investigator at the National Institute of Environmental Health Sciences in Research Triangle Park, North Carolina |
Item Description: | OCLC-licensed vendor bibliographic record |
Physical Description: | 1 online resource |
ISBN: | 9780429162367 0429162367 9781482256581 1482256584 9780429544408 0429544405 9780429529702 0429529708 |
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520 | |a The Statistical Analysis of Multivariate Failure Time Data: A Marginal Modeling Approach provides an innovative look at methods for the analysis of correlated failure times. The focus is on the use of marginal single and marginal double failure hazard rate estimators for the extraction of regression information. For example, in a context of randomized trial or cohort studies, the results go beyond that obtained by analyzing each failure time outcome in a univariate fashion. The book is addressed to researchers, practitioners, and graduate students, and can be used as a reference or as a graduate course text. Much of the literature on the analysis of censored correlated failure time data uses frailty or copula models to allow for residual dependencies among failure times, given covariates. | ||
520 | |a In contrast, this book provides a detailed account of recently developed methods for the simultaneous estimation of marginal single and dual outcome hazard rate regression parameters, with emphasis on multiplicative (Cox) models. Illustrations are provided of the utility of these methods using Women's Health Initiative randomized controlled trial data of menopausal hormones and of a low-fat dietary pattern intervention. As byproducts, these methods provide flexible semiparametric estimators of pairwise bivariate survivor functions at specified covariate histories, as well as semiparametric estimators of cross ratio and concordance functions given covariates. The presentation also describes how these innovative methods may extend to handle issues of dependent censorship, missing and mismeasured covariates, and joint modeling of failure times and covariates, setting the stage for additional theoretical and applied developments. | ||
520 | |a This book extends and continues the style of the classic Statistical Analysis of Failure Time Data by Kalbfleisch and Prentice. Ross L. Prentice is Professor of Biostatistics at the Fred Hutchinson Cancer Research Center and University of Washington in Seattle, Washington. He is the recipient of COPSS Presidents and Fisher awards, the AACR Epidemiology/Prevention and Team Science awards, and is a member of the National Academy of Medicine. Shanshan Zhao is a Principal Investigator at the National Institute of Environmental Health Sciences in Research Triangle Park, North Carolina | ||
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author | Prentice, Ross L. Zhao, Shanshan 1983- |
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isbn | 9780429162367 0429162367 9781482256581 1482256584 9780429544408 0429544405 9780429529702 0429529708 |
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spelling | Prentice, Ross L. Verfasser aut The statistical analysis of multivariate time data a marginal modeling approach Ross L. Prentice, Shanshan Zhao Boca Raton CRC Press, Taylor & Francis Group 2019 1 online resource txt rdacontent c rdamedia cr rdacarrier OCLC-licensed vendor bibliographic record The Statistical Analysis of Multivariate Failure Time Data: A Marginal Modeling Approach provides an innovative look at methods for the analysis of correlated failure times. The focus is on the use of marginal single and marginal double failure hazard rate estimators for the extraction of regression information. For example, in a context of randomized trial or cohort studies, the results go beyond that obtained by analyzing each failure time outcome in a univariate fashion. The book is addressed to researchers, practitioners, and graduate students, and can be used as a reference or as a graduate course text. Much of the literature on the analysis of censored correlated failure time data uses frailty or copula models to allow for residual dependencies among failure times, given covariates. In contrast, this book provides a detailed account of recently developed methods for the simultaneous estimation of marginal single and dual outcome hazard rate regression parameters, with emphasis on multiplicative (Cox) models. Illustrations are provided of the utility of these methods using Women's Health Initiative randomized controlled trial data of menopausal hormones and of a low-fat dietary pattern intervention. As byproducts, these methods provide flexible semiparametric estimators of pairwise bivariate survivor functions at specified covariate histories, as well as semiparametric estimators of cross ratio and concordance functions given covariates. The presentation also describes how these innovative methods may extend to handle issues of dependent censorship, missing and mismeasured covariates, and joint modeling of failure times and covariates, setting the stage for additional theoretical and applied developments. This book extends and continues the style of the classic Statistical Analysis of Failure Time Data by Kalbfleisch and Prentice. Ross L. Prentice is Professor of Biostatistics at the Fred Hutchinson Cancer Research Center and University of Washington in Seattle, Washington. He is the recipient of COPSS Presidents and Fisher awards, the AACR Epidemiology/Prevention and Team Science awards, and is a member of the National Academy of Medicine. Shanshan Zhao is a Principal Investigator at the National Institute of Environmental Health Sciences in Research Triangle Park, North Carolina MATHEMATICS / Probability & Statistics / General bisacsh MEDICAL / Epidemiology bisacsh REFERENCE / General bisacsh Failure time data analysis Multivariate analysis Zhao, Shanshan 1983- aut https://www.taylorfrancis.com/books/9780429162367 Verlag URL des Erstveröffentlichers Volltext |
spellingShingle | Prentice, Ross L. Zhao, Shanshan 1983- The statistical analysis of multivariate time data a marginal modeling approach MATHEMATICS / Probability & Statistics / General bisacsh MEDICAL / Epidemiology bisacsh REFERENCE / General bisacsh Failure time data analysis Multivariate analysis |
title | The statistical analysis of multivariate time data a marginal modeling approach |
title_auth | The statistical analysis of multivariate time data a marginal modeling approach |
title_exact_search | The statistical analysis of multivariate time data a marginal modeling approach |
title_exact_search_txtP | The statistical analysis of multivariate time data a marginal modeling approach |
title_full | The statistical analysis of multivariate time data a marginal modeling approach Ross L. Prentice, Shanshan Zhao |
title_fullStr | The statistical analysis of multivariate time data a marginal modeling approach Ross L. Prentice, Shanshan Zhao |
title_full_unstemmed | The statistical analysis of multivariate time data a marginal modeling approach Ross L. Prentice, Shanshan Zhao |
title_short | The statistical analysis of multivariate time data |
title_sort | the statistical analysis of multivariate time data a marginal modeling approach |
title_sub | a marginal modeling approach |
topic | MATHEMATICS / Probability & Statistics / General bisacsh MEDICAL / Epidemiology bisacsh REFERENCE / General bisacsh Failure time data analysis Multivariate analysis |
topic_facet | MATHEMATICS / Probability & Statistics / General MEDICAL / Epidemiology REFERENCE / General Failure time data analysis Multivariate analysis |
url | https://www.taylorfrancis.com/books/9780429162367 |
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