Smooth Scalar-on-Image Regression via Spatial Bayesian Variable Selection.
Title | Smooth Scalar-on-Image Regression via Spatial Bayesian Variable Selection. |
Publication Type | Journal Article |
Year of Publication | 2014 |
Authors | Goldsmith J, Huang L, Crainiceanu CM |
Journal | J Comput Graph Stat |
Volume | 23 |
Issue | 1 |
Pagination | 46-64 |
Date Published | 2014 Jan 1 |
ISSN | 1061-8600 |
Abstract | We develop scalar-on-image regression models when images are registered multidimensional manifolds. We propose a fast and scalable Bayes inferential procedure to estimate the image coefficient. The central idea is the combination of an Ising prior distribution, which controls a latent binary indicator map, and an intrinsic Gaussian Markov random field, which controls the smoothness of the nonzero coefficients. The model is fit using a single-site Gibbs sampler, which allows fitting within minutes for hundreds of subjects with predictor images containing thousands of locations. The code is simple and is provided in less than one page in the Appendix. We apply this method to a neuroimaging study where cognitive outcomes are regressed on measures of white matter microstructure at every voxel of the corpus callosum for hundreds of subjects. |
DOI | 10.1080/10618600.2012.743437 |
Alternate Journal | J Comput Graph Stat |
PubMed ID | 24729670 |
PubMed Central ID | PMC3979628 |
Grant List | R01 NS060910 / NS / NINDS NIH HHS / United States R01 NS085211 / NS / NINDS NIH HHS / United States T32 ES012871 / ES / NIEHS NIH HHS / United States |