Modeling Dose-Response Microarray Data in Early Drug Development Experiments Using R

Modeling Dose-Response Microarray Data in Early Drug Development Experiments Using R
Author :
Publisher : Springer Science & Business Media
Total Pages : 285
Release :
ISBN-10 : 9783642240072
ISBN-13 : 3642240070
Rating : 4/5 (070 Downloads)

Book Synopsis Modeling Dose-Response Microarray Data in Early Drug Development Experiments Using R by : Dan Lin

Download or read book Modeling Dose-Response Microarray Data in Early Drug Development Experiments Using R written by Dan Lin and published by Springer Science & Business Media. This book was released on 2012-08-27 with total page 285 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book focuses on the analysis of dose-response microarray data in pharmaceutical settings, the goal being to cover this important topic for early drug development experiments and to provide user-friendly R packages that can be used to analyze this data. It is intended for biostatisticians and bioinformaticians in the pharmaceutical industry, biologists, and biostatistics/bioinformatics graduate students. Part I of the book is an introduction, in which we discuss the dose-response setting and the problem of estimating normal means under order restrictions. In particular, we discuss the pooled-adjacent-violator (PAV) algorithm and isotonic regression, as well as inference under order restrictions and non-linear parametric models, which are used in the second part of the book. Part II is the core of the book, in which we focus on the analysis of dose-response microarray data. Methodological topics discussed include: • Multiplicity adjustment • Test statistics and procedures for the analysis of dose-response microarray data • Resampling-based inference and use of the SAM method for small-variance genes in the data • Identification and classification of dose-response curve shapes • Clustering of order-restricted (but not necessarily monotone) dose-response profiles • Gene set analysis to facilitate the interpretation of microarray results • Hierarchical Bayesian models and Bayesian variable selection • Non-linear models for dose-response microarray data • Multiple contrast tests • Multiple confidence intervals for selected parameters adjusted for the false coverage-statement rate All methodological issues in the book are illustrated using real-world examples of dose-response microarray datasets from early drug development experiments.


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