Department of Statistics Seminar
North Carolina State University
presents
Dr. Malay Ghosh
University of Florida
"Bayesian Neural Networks for Prostate Cancer Study"
ABSTRACT
Prostate cancer is one of the most common cancers in
American men. The cancer could either be locally confined, or it
could spread outside the organ. When locally confined, there are
several options for treating and curing this disease. Otherwise,
surgery is the only option, and in extreme cases of outside
spread, it could very easily recur within a short time even after
surgery and subsequent radiation therapy. Hence, it is important
to know, based on pre-surgery biopsy results how likely the cancer
is organ-confined or not.
The talk presents a hierarchical Bayesian neural network
approach for posterior prediction probabilities of certain
features indicative of non-organ confined prostate cancer. In
particular, we find such probabilities for margin positivity (MP)
and seminal vesicle (SV) positivity jointly. The available
training set consists of bivariate binary outcomes indicating the
presence or absence of the two. In addition, we have certain
covariates such as prostate specific antigen (PSA), gleason score
and the indicator for the cancer to be unilateral or bilateral
(i.e. spread on one or both sides) in one data set and gene
expression microarrays in another data set. We take a hierarchical
Bayesian neural network approach to find the posterior prediction
probabilities for a test and validation set, and compare these
with the actual outcomes for the first data set. In case of the
microarray data we use leave one out cross-validation to access
the accuracy of our method. We also demonstrate the superiority of
our method to the other competing methods through a simulation
study. The Bayesian procedure is implemented by an application of
the Markov chain Monte Carlo numerical integration technique. For
the problem at hand, our Bayesian bivariate neural network
procedure is shown to be superior to the classical neural network,
Radford Neal's Bayesian neural network as well as bivariate
logistic models to predict jointly the MP and SV in a patient in
both the datasets as well as in the simulation study.
(Slides available)
Friday, October, 29, 2004
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.