Statistical Bioinformatics provides a balanced treatment of statistical theory in the context of bioinformatics applications.Designed for a one or two semester senior undergraduate or graduate bioinformatics course, the text takes a broad view of the subject – not just gene expression and sequence analysis, but a careful balance of statistical theory in the context of bioinformatics applications.The inclusion of R & SAS code as well as the development of advanced methodology such as Bayesian and Markov models provides students with the important foundation needed to conduct bioinformatics.- Integrates biological, statistical and computational concepts- Inclusion of R & SAS code- Provides coverage of complex statistical methods in context with applications in bioinformatics- Exercises and examples aid teaching and learning presented at the right level- Bayesian methods and the modern multiple testing principles in one convenient book
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