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Department of Statistics, The Ohio State University
Statistics and Biostatistics Colloquium Series
Modeling Survival Data using Bayesian Random Effects Threshold
Regression
Michael Pennell
Biostatistics Division, The Ohio State University
3:30PM - Thursday, October 2, 2008
Room 170, Eighteenth Avenue Bldg. (EA 170)
ABSTRACT
In epidemiological and clinical studies, time to event data often violate
the assumptions of Cox regression due to the presence of time-dependent
covariate effects and unmeasured risk factors. An alternative approach,
which does not require proportional hazards, is to use a first hitting
time model which treats a subject's health status as a latent stochastic
process that fails when it reaches a threshold value. Although more
flexible than Cox regression, existing methods do not account for
unmeasured covariates in the initial state and rate of the process. To
address this issue, we propose a Bayesian methodology which models an
individual's health status as a Wiener process with subject-specific
initial state and drift. Posterior inference proceeds via an MCMC
methodology with data augmentation steps to sample the final health status
of censored observations. We apply our method to data from melanoma
patients with nonproportional hazards and find interesting differences
from a similar model without random effects. In a simulation study,
we show that failure to account for unmeasured covariates can lead to
inaccurate estimates of survival probabilities.
Meet the speaker in Room 212 Cockins Hall at 4:30
p.m. Refreshments will be served.
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