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Main Title Pharmacokinetic-Pharmacodynamic Modeling and Simulation [electronic resource] /
Type EBOOK
Author Bonate, Peter L.
Publisher Springer US : Imprint: Springer,
Year Published 2011
Call Number RM1-950
ISBN 9781441994851
Subjects Medicine ; Toxicology
Internet Access
Description Access URL
http://dx.doi.org/10.1007/978-1-4419-9485-1
Edition 2.
Collation XIX, 618 p. online resource.
Notes
Due to license restrictions, this resource is available to EPA employees and authorized contractors only
Contents Notes
The Art of Modeling -- Linear Models and Regression -- Nonlinear Models and Regression -- Variance Models, Weighting, and Transformations -- Case Studies in Linear and Nonlinear Modeling -- Linear Mixed Effects Models -- Nonlinear Mixed Effects Models: Theory -- Nonlinear Mixed Effects Models: Practical Issues -- Nonlinear Mixed Effects Models: Case Studies -- Bayesian Modeling -- Generalized Linear Models and Its Extensions -- Principles of Simulation -- Appendix -- Index. Since its publication in 2006, Pharmacokinetic-Pharmacodynamic Modeling and Simulation has become the leading text on modeling of pharmacokinetic and pharmacodynamic data using nonlinear mixed effects models and has been applauded by students and teachers for its readability and exposition of complex statistical topics. Using a building block approach, the text starts with linear regression, nonlinear regression, and variance models at the individual level and then moves to population-level models with linear and nonlinear mixed effects models. Particular emphasis is made highlighting relationships between the model types and how the models build upon one another. With the second edition, new chapters on generalized nonlinear mixed effects models and Bayesian models are presented, along with an extensive chapter on simulation. In addition, many chapters have been updated to reflect recent developments. The theory behind the methods is illustrated using real data from the literature and from the author's experiences in drug development. Data are analyzed using a variety of software, including NONMEM, SAS, SAAM II, and WinBUGS. A key component of the book is to show how models are developed using an acceptance-rejection paradigm with the ultimate goal of using models to explain data, summarize complex experiments, and use simulation to answer "what-if" questions. Scientists and statisticians outside the pharmaceutical sciences will find the book invaluable as a reference for applied modeling and simulation.