Medical
Imaging and Functional MRI Analysis
|
Robert Gibbons
is a Professor of Biostatistics and Psychiatry and
Director of the Center for Health Statistics at UIC. He is a
Fellow of the American Statistical Association and a member of the
Institute of Medicine of the National Academy of Sciences. He is a
recipient of the Youden Prize for Statistical contributions to
Chemistry and the Harvard Award for contributions to Psychiatric
Epidemiology and Biostatistics. His research interests span many
areas including analysis of longitudinal data, environmental
statistics, and statistical applications in health services
research, mental health, fMRI, molecular genetics, chemistry, and
organ transplantation. |
Estimation and Classification of fMRI Hemodynamic Response Patterns
In this paper we propose an approach to
modeling functional magnetic resonance imaging (fMRI) data that
combines hierarchical polynomial models, Bayes estimation and
clustering. A cubic polynomial is used to fit the voxel time courses
of event-related design experiments. The coefficients of the
polynomials are estimated by Bayes estimation, in a two-level
hierarchical model, which allows us to borrow strength from all voxels.
The voxel-specific Bayes polynomial coefficients are then transformed
to the times and magnitudes of the minimum and maximum points on the
hemodynamic response curve, which are in turn used to classify the
voxels as being activated or not. The procedure is demonstrated on
real data from an event-related design experiment of visually guided
saccades and shown to be an effective alternative to existing methods.
|