Improving Reliability of Subject-Level Resting-State fMRI Parcellation with Shrinkage Estimators
Amanda F. Mejia, Mary Beth Nebel, Haochang Shou, Ciprian M., Crainiceanu, James J. Pekar, Stewart Mostofsky, Brian Caffo, Martin A., Lindquist

TL;DR
This paper introduces shrinkage estimators to improve the reliability of individual brain parcellations from rsfMRI data, addressing low signal-to-noise issues and enhancing reproducibility in single-subject analyses.
Contribution
The study develops empirical Bayes shrinkage methods for correlation measures, improving subject-specific brain parcellation reproducibility in rsfMRI data.
Findings
Shrinkage estimators increase parcellation reliability by up to 30%.
Method improves reproducibility across test-retest datasets.
Applicable as a pre-processing step for various clustering algorithms.
Abstract
A recent interest in resting state functional magnetic resonance imaging (rsfMRI) lies in subdividing the human brain into anatomically and functionally distinct regions of interest. For example, brain parcellation is often used for defining the network nodes in connectivity studies. While inference has traditionally been performed on group-level data, there is a growing interest in parcellating single subject data. However, this is difficult due to the low signal-to-noise ratio of rsfMRI data, combined with typically short scan lengths. A large number of brain parcellation approaches employ clustering, which begins with a measure of similarity or distance between voxels. The goal of this work is to improve the reproducibility of single-subject parcellation using shrinkage estimators of such measures, allowing the noisy subject-specific estimator to "borrow strength" in a principled…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Advanced MRI Techniques and Applications
