Classifying HCP Task-fMRI Networks Using Heat Kernels
Ai Wern Chung, Emanuele Pesce, Ricardo Pio Monti, Giovanni, Montana

TL;DR
This paper introduces heat kernel-based features to classify human brain functional networks from fMRI data, demonstrating their effectiveness over traditional metrics in distinguishing different cognitive tasks.
Contribution
It presents a novel application of heat kernels to model energy diffusion in brain networks and uses these features for task classification, outperforming traditional network metrics.
Findings
Heat kernel features effectively differentiate brain tasks.
Heat kernel metrics outperform traditional network measures.
Heat kernels capture intrinsic properties of functional networks.
Abstract
Network theory provides a principled abstraction of the human brain: reducing a complex system into a simpler representation from which to investigate brain organisation. Recent advancement in the neuroimaging field are towards representing brain connectivity as a dynamic process in order to gain a deeper understanding of the interplay between functional modules for efficient information transport. In this work, we employ heat kernels to model the process of energy diffusion in functional networks. We extract node-based, multi-scale features which describe the propagation of heat over 'time' which not only inform the importance of a node in the graph, but also incorporate local and global information of the underlying geometry of the network. As a proof-of-concept, we test the efficacy of two heat kernel features for discriminating between motor and working memory functional networks…
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