Department of Statistics Seminar
North Carolina State University

 presents

 

Dr. Marina Vannucci

mvannucci at stat dot tamu dot edu

 Texas A&M University

 
Bayesian Methods for Genomics with Variable Selection

ABSTRACT


The analysis of the high-dimensional data generated by DNA microarrays poses challenge to standard statistical methods. In this talk I will describe how Bayesian methodologies for variable selection can be successfully employed in the analysis of genomics data. In particular I will describe how mixture priors and stochastic search techniques, originally developed for variable selection in regression settings, can be successfully adapted to a variety of different problems, including methods for sample classification and clustering, and to survival models. I will describe the key ideas of these statistical methods and will present applications to data from microarray studies. The proposed methods will allow the identification of genes that discriminate the samples into distinct subclasses. Molecular classes defined on a small number of genes can lead to a better understanding of the underlying biological processes.  In addition, the selected genes can serve as biomarkers for improved diagnosis and targets for therapeutic intervention. If time allows I will describe recent work that exploits the flexibility of the prior models in an effort to incorporate biological information, such as biological pathways and gene ontologies.

Friday, November 3, 2006

3:35 - 4:35 pm

206 Cox Hall

Refreshments will be served on the second floor of Dabney Hall (left of Room 222) at 3:00 pm.