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Activity Number: 109 - Innovative Approaches in Biomarkers Discovery and Subgroup Analyses
Type: Contributed
Date/Time: Monday, August 8, 2022 : 8:30 AM to 10:20 AM
Sponsor: Biopharmaceutical Section
Abstract #322062
Title: Bayesian Image-on-Scalar Regression with a Spatial Global-Local Spike-and-Slab Prior
Author(s): Zijian Zeng* and Meng Li and Marina Vannucci
Companies: Rice University and Rice University and Rice University
Keywords: Nonparametric regression; Variable selection; Spike-and-Slab prior; Smoothing; Mean-Covariance Estimation
Abstract:

In this article, we propose a novel spatial global-local spike-and-slab selection prior for image-on-scalar regression. We consider a Bayesian hierarchical Gaussian process model for image smoothing, that uses a flexible Inverse-Wishart process prior to handle within-image dependency, and propose a general global-local spatial selection prior that extends a rich class of well-studied selection priors. Unlike existing constructions, we achieve simultaneous global (i.e, at covariate-level) and local (i.e., at pixel/voxel-level) selection by introducing 'participation rate' parameters that measure the probability for the individual covariates to affect the observed images. This along with a hard-thresholding strategy leads to dependency between selections at the two levels, introduces extra sparsity at the local level, and allows the global selection to be informed by the local selection, all in a model-based manner. We design an efficient Gibbs sampler that allows inference for large image data. We show on simulated data that parameters are interpretable and lead to efficient selection. Finally, we demonstrate performance of the proposed model by using data from the ABIDE study.


Authors who are presenting talks have a * after their name.

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