Download PowerPoint

Survey
yes no Was this document useful for you?
   Thank you for your participation!

* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project

Document related concepts

Transcriptional regulation wikipedia , lookup

Genome evolution wikipedia , lookup

Promoter (genetics) wikipedia , lookup

RNA silencing wikipedia , lookup

Gene desert wikipedia , lookup

Community fingerprinting wikipedia , lookup

Gene therapy of the human retina wikipedia , lookup

Endogenous retrovirus wikipedia , lookup

Gene nomenclature wikipedia , lookup

Expression vector wikipedia , lookup

Gene expression wikipedia , lookup

Silencer (genetics) wikipedia , lookup

Gene regulatory network wikipedia , lookup

Artificial gene synthesis wikipedia , lookup

RNA-Seq wikipedia , lookup

Gene expression profiling wikipedia , lookup

Transcript
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