Repeated Measures Design with Generalized Linear Mixed Models for Randomized Controlled Trials (e-bok)
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E-bok
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Språk
Engelska
Antal sidor
360
Utgivningsdatum
2017-09-14
Förlag
CRC Press
ISBN
9781351648141
Repeated Measures Design with Generalized Linear Mixed Models for Randomized Controlled Trials (e-bok)

Repeated Measures Design with Generalized Linear Mixed Models for Randomized Controlled Trials (e-bok)

E-bok (EPUB - DRM), Engelska, 2017-09-14
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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
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