Bayesian inference for group-level cortical surface image-on-scalar-regression with Gaussian process priors

06/06/2023
by   Andrew S. Whiteman, et al.
0

In regression-based analyses of group-level neuroimage data researchers typically fit a series of marginal general linear models to image outcomes at each spatially-referenced pixel. Spatial regularization of effects of interest is usually induced indirectly by applying spatial smoothing to the data during preprocessing. While this procedure often works well, resulting inference can be poorly calibrated. Spatial modeling of effects of interest leads to more powerful analyses, however the number of locations in a typical neuroimage can preclude standard computation with explicitly spatial models. Here we contribute a Bayesian spatial regression model for group-level neuroimaging analyses. We induce regularization of spatially varying regression coefficient functions through Gaussian process priors. When combined with a simple nonstationary model for the error process, our prior hierarchy can lead to more data-adaptive smoothing than standard methods. We achieve computational tractability through Vecchia approximation of our prior which, critically, can be constructed for a wide class of spatial correlation functions and results in prior models that retain full spatial rank. We outline several ways to work with our model in practice and compare performance against standard vertex-wise analyses. Finally we illustrate our method in an analysis of cortical surface fMRI task contrast data from a large cohort of children enrolled in the Adolescent Brain Cognitive Development study.

READ FULL TEXT

page 4

page 16

page 17

page 19

page 29

page 36

page 37

page 38

research
09/17/2022

Bayesian Image-on-Scalar Regression with a Spatial Global-Local Spike-and-Slab Prior

In this article, we propose a novel spatial global-local spike-and-slab ...
research
03/16/2023

A Spatially Varying Hierarchical Random Effects Model for Longitudinal Macular Structural Data in Glaucoma Patients

We model longitudinal macular thickness measurements to monitor the cour...
research
06/22/2022

Bayesian nonparametric scalar-on-image regression via Potts-Gibbs random partition models

Scalar-on-image regression aims to investigate changes in a scalar respo...
research
08/28/2015

Varying-coefficient models with isotropic Gaussian process priors

We study learning problems in which the conditional distribution of the ...
research
02/28/2022

Fast Bayesian estimation of brain activation with cortical surface and subcortical fMRI data using EM

Analysis of brain imaging scans is critical to understanding the way the...
research
12/28/2017

A Divide-and-Conquer Bayesian Approach to Large-Scale Kriging

Flexible hierarchical Bayesian modeling of massive data is challenging d...
research
06/20/2022

Double soft-thresholded model for multi-group scalar on vector-valued image regression

In this paper, we develop a novel spatial variable selection method for ...

Please sign up or login with your details

Forgot password? Click here to reset