fMRI-Kernel Regression: A Kernel-based Method for Pointwise Statistical Analysis of rs-fMRI for Population Studies
Anand A. Joshi, Soyoung Choi, Haleh Akrami, Richard M. Leahy

TL;DR
This paper introduces a kernel-based pointwise analysis method for rs-fMRI data that measures pairwise subject distances and uses kernel regression to relate brain activity to clinical variables, enhancing group study capabilities.
Contribution
The paper presents a novel kernel regression approach for rs-fMRI that operates on pairwise subject distances, enabling pointwise analysis without relying on a single reference or atlas.
Findings
Identified cortical regions linked to ADHD variability.
Demonstrated effectiveness of the kernel method in group analysis.
Provided a new framework for rs-fMRI pointwise analysis.
Abstract
Due to the spontaneous nature of resting-state fMRI (rs-fMRI) signals, cross-subject comparison and therefore, group studies of rs-fMRI are challenging. Most existing group comparison methods use features extracted from the fMRI time series, such as connectivity features, independent component analysis (ICA), and functional connectivity density (FCD) methods. However, in group studies, especially in the case of spectrum disorders, distances to a single atlas or a representative subject do not fully reflect the differences between subjects that may lie on a multi-dimensional spectrum. Moreover, there may not exist an individual subject or even an average atlas in such cases that is representative of all subjects. Here we describe an approach that measures pairwise distances between the synchronized rs-fMRI signals of pairs of subjects instead of to a single reference point. We also…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications
