Bayesian longitudinal tensor response regression for modeling neuroplasticity
Suprateek Kundu, Alec Reinhardt, Serena Song, Joo Han, M. Lawson, Meadows, Bruce Crosson, Venkatagiri Krishnamurthy

TL;DR
This paper introduces a Bayesian tensor response regression method for longitudinal neuroimaging data, improving inference of neuroplasticity by pooling voxel information, reducing dimensionality, and enabling individual-level analysis.
Contribution
The novel Bayesian approach combines low-rank tensor decomposition, feature selection, and MCMC sampling to enhance neuroplasticity detection in longitudinal imaging studies.
Findings
Identified distinct brain activity changes associated with different treatments.
Outperformed voxel-wise regression in prediction and feature selection.
Revealed biologically plausible neuroplasticity patterns in fMRI data.
Abstract
A major interest in longitudinal neuroimaging studies involves investigating voxel-level neuroplasticity due to treatment and other factors across visits. However, traditional voxel-wise methods are beset with several pitfalls, which can compromise the accuracy of these approaches. We propose a novel Bayesian tensor response regression approach for longitudinal imaging data, which pools information across spatially-distributed voxels to infer significant changes while adjusting for covariates. The proposed method, which is implemented using Markov chain Monte Carlo (MCMC) sampling, utilizes low-rank decomposition to reduce dimensionality and preserve spatial configurations of voxels when estimating coefficients. It also enables feature selection via joint credible regions which respect the shape of the posterior distributions for more accurate inference. In addition to group level…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Tensor decomposition and applications · Functional Brain Connectivity Studies
MethodsFeature Selection
