Multiple-view clustering for identifying subject clusters and brain sub-networks using functional connectivity matrices without vectorization
Tomoki Tokuda, Okito Yamashita, Junichiro Yoshimoto

TL;DR
This paper introduces a novel multiple-view clustering method for fMRI data that preserves the correlation matrix structure, enabling more accurate identification of subject clusters and brain sub-networks without data distortion.
Contribution
It proposes a Wishart mixture model-based clustering approach that maintains correlation matrix integrity and identifies ROI sub-networks associated with subject clusters.
Findings
Effective on synthetic data
Demonstrated usefulness on real fMRI data
Identifies meaningful brain sub-networks
Abstract
In neuroscience, the functional magnetic resonance imaging (fMRI) is a vital tool to non-invasively access brain activity. Using fMRI, the functional connectivity (FC) between brain regions can be inferred, which has contributed to a number of findings of the fundamental properties of the brain. As an important clinical application of FC, clustering of subjects based on FC recently draws much attention, which can potentially reveal important heterogeneity in subjects such as subtypes of psychiatric disorders. In particular, a multiple-view clustering method is a powerful analytical tool, which identifies clustering patterns of subjects depending on their FC in specific brain areas. However, when one applies an existing multiple-view clustering method to fMRI data, there is a need to simplify the data structure, independently dealing with elements in a FC matrix, i.e., vectorizing a…
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