A Spatially-Adaptive Dynamic Conditionally Autoregressive Model for Longitudinal Periodontal Data
Jim Hodges
Division of Biostatistics
University of Minnesota
Wednesday, September 20th 2006
3:30pm
Moos 2-690
Minneapolis Campus
Abstract:
Attachment loss (AL), the distance down a tooth's root that is no longer attached
to surrounding bone by periodontal ligament, is a common measure of periodontal
disease. In this paper, we develop a spatiotemporal model to monitor progression
of AL. Our model is an extension of the conditionally autoregressive (CAR) prior,
which spatially smooths estimates towards their neighbors. However, since AL
often exhibits burst of large values in space and time, we develop a non-stationary
spatiotemporal CAR model that allows the degree of spatial and temporal smoothing
to vary in different regions of the mouth. To do this, we assign each AL measurement
site its own set of variance parameters and spatially smooth the variances with
spatial priors. A heuristic is developed to measure the complexity of the site-specific
variances which is used to select priors that ensure that all the parameters
in the model will be well identified. This model is shown to improve the fit
compared to the usual dynamic CAR model for one patient's AL measurements at
four visits separated by three-month intervals.
A social tea will be held at 3:00 P.M. in A434 Mayo. All are Welcome.
For more details contact 612-624-4655 or see http://www.biostat.umn.edu/seminar_academic.html