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Statistics 516 Statistical Design and Analysis of Gene Expression Experiments 1/11/2011 Copyright © 2011 Dan Nettleton 1 Instructor: Dan Nettleton • 2115 Snedecor Hall • http://www.public.iastate.edu/~dnett/ • 294-7754 • Office Hours: Monday and Wednesday from 10:00-10:50 and other times by appointment 2 STAT 516 • This course introduces technologies used to measure gene messenger RNA levels. • Currently, the most commonly used technologies are microarray technology and next-generation sequencing technology. 3 STAT 516 • Although we will spend some time learning about these technologies, the main focus of the course is on a variety of statistical techniques useful for the design and analysis of gene expression experiments. • Such experiments are useful for understanding the functions of genes and have become common in biological and biomedical research. 4 Students completing STAT 516 should • be able to provide expert advice on the design of experiments that measure gene expression, • perform appropriate analyses in collaboration with biological researchers, • be ready to consider research problems in the statistical design and analysis of gene expression experiments, • gain a sound understanding of the statistical principles important for good design and analysis of experiments that involve thousands of response variables. 5 Computing • We will use R extensively throughout the course. • Students are expected to be familiar with R. • We may also use SAS occasionally. 6 No Required Textbook • Notes posted prior to class. • Cartoon Guide to Genetics by Larry Gonick and Mark Wheelis provides a basic introduction to the biology behind gene expression experiments • I have no book recommendations for the statistics of gene expression experiments. 7 Grading in Statistics 516 • 25% homework • 25% midterm exam • 15% project (written & oral presentation) • 35% final exam See syllabus for more detail. 8