Physiological Gaussian Process Priors for the Hemodynamics in fMRI Analysis
Josef Wilz\'en, Anders Eklund, Mattias Villani

TL;DR
This paper introduces a Bayesian Gaussian process model for fMRI analysis that jointly estimates brain activity and nonparametrically models hemodynamics, improving detection accuracy and capturing dynamic responses.
Contribution
It presents a novel nonparametric Gaussian process prior on the predicted BOLD response, allowing physiological information integration and flexible modeling of hemodynamics.
Findings
Better detection of active voxels in simulated data
Identifies brain activity missed by LTI models in real data
Finds time-varying hemodynamic dynamics in fMRI
Abstract
Background: Inference from fMRI data faces the challenge that the hemodynamic system that relates neural activity to the observed BOLD fMRI signal is unknown. New Method: We propose a new Bayesian model for task fMRI data with the following features: (i) joint estimation of brain activity and the underlying hemodynamics, (ii) the hemodynamics is modeled nonparametrically with a Gaussian process (GP) prior guided by physiological information and (iii) the predicted BOLD is not necessarily generated by a linear time-invariant (LTI) system. We place a GP prior directly on the predicted BOLD response, rather than on the hemodynamic response function as in previous literature. This allows us to incorporate physiological information via the GP prior mean in a flexible way, and simultaneously gives us the nonparametric flexibility of the GP. Results: Results on simulated data show that the…
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