Volume entropy and information flow in a brain graph
Hyekyoung Lee, Eunkyung Kim, Hyejin Kang, Youngmin Huh, Youngjo Lee,, Seonhee Lim, Dong Soo Lee

TL;DR
This paper introduces volume entropy, a new graph invariant for brain networks, which quantifies information flow and distinguishes graph topology better than existing measures, with applications to aging-related brain changes.
Contribution
It proposes volume entropy as a novel measure for brain graphs, modeling information flow via a generalized Markov system and estimating it through stationary equations.
Findings
Volume entropy effectively differentiates graph topology and geometry.
Volume entropy correlates with healthy aging from 20s to 60s.
Stationary distribution reveals information flow patterns in brain graphs.
Abstract
Entropy is a classical measure to quantify the amount of information or complexity of a system. Various entropy-based measures such as functional and spectral entropies have been proposed in brain network analysis. However, they are less widely used than traditional graph theoretic measures such as global and local efficiencies because either they are not well-defined on a graph or difficult to interpret its biological meaning. In this paper, we propose a new entropy-based graph invariant, called volume entropy. It measures the exponential growth rate of the number of paths in a graph, which is a relevant measure if information flows through the graph forever. We model the information propagation on a graph by the generalized Markov system associated to the weighted edge-transition matrix. We estimate the volume entropy using the stationary equation of the generalized Markov system. A…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Mental Health Research Topics
