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πŸ“

Statistical Modelling of Survival Data with Random Effects: H-Likelihood Approach

✍ Scribed by Il Do Ha,Jong-Hyeon Jeong,Youngjo Lee (auth.)


Publisher
Springer Singapore
Year
2017
Tongue
English
Leaves
288
Series
Statistics for Biology and Health
Edition
1
Category
Library

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✦ Synopsis


This book provides a groundbreaking introduction to the likelihood inference for correlated survival data via the hierarchical (or h-) likelihood in order to obtain the (marginal) likelihood and to address the computational difficulties in inferences and extensions. The approach presented in the book overcomes shortcomings in the traditional likelihood-based methods for clustered survival data such as intractable integration. The text includes technical materials such as derivations and proofs in each chapter, as well as recently developed software programs in R (β€œfrailtyHL”), while the real-world data examples together with an R package, β€œfrailtyHL” in CRAN, provide readers with useful hands-on tools. Reviewing new developments since the introduction of the h-likelihood to survival analysis (methods for interval estimation of the individual frailty and for variable selection of the fixed effects in the general class of frailty models) and guiding future directions, the book is of interest to researchers in medical and genetics fields, graduate students, and PhD (bio) statisticians.

✦ Table of Contents


Front Matter ....Pages i-xiv
Introduction (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 1-5
Classical Survival Analysis (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 7-36
H-Likelihood Approach to Random-Effect Models (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 37-65
Simple Frailty Models (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 67-104
Multicomponent Frailty Models (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 105-123
Competing Risks Frailty Models (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 125-171
Variable Selection for Frailty Models (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 173-197
Mixed-Effects Survival Models (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 199-227
Joint Model for Repeated Measures and Survival Data (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 229-243
Further Topics (Il Do Ha, Jong-Hyeon Jeong, Youngjo Lee)....Pages 245-260
Back Matter ....Pages 261-283

✦ Subjects


Statistical Theory and Methods


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