Department of Statistics
Seminar
North Carolina State University
presents
Dan
Nettleton
Iowa State University
Identifying
Differentially Expressed Gene Categories via a Hidden Markov Model Approach for
Testing Nodes on a Directed Acyclic Graph
ABSTRACT
Gene category testing problems involve testing hundreds of null
hypotheses that correspond to nodes in a directed acyclic graph. The
logical relationships among the nodes in the graph imply that only some
configurations of true and false null hypotheses are possible and that a test
for a given node should depend on data from neighboring nodes. We use a
multivariate nonparametric permutation test to obtain a p-value for each gene
category. We then model these p-values with a hidden Markov model that
takes the relationships among categories into account. Using a
Markov chain Monte Carlo approach, we provide coherent decisions about the
differential expression status of each category in this structured multiple
hypothesis testing problems. The method - which provides an alternative
to get set enrichment analysis and related techniques - will be illustrated by
testing Gene Ontology terms for evidence of differential expression. This
is joint work with Iowa State Ph.D. student Kun Liang.
Friday, December 05, 2008
3:35 pm--4:35 pm
321 Riddick
Refreshments
will be served in the Riddick Hearth at 3:00 pm. NOTE: No food or drink is allowed in any of the
classrooms in Riddick Hall.