Brain Chains as Topological Signatures for Alzheimer's Disease
Christian Goodbrake, David Beers, Travis B. Thompson, Heather A., Harrington, Alain Goriely

TL;DR
This paper introduces a topological framework using graph filtrations and homotopy to analyze brain connectivity changes in Alzheimer's disease, providing a new way to classify disease subtypes.
Contribution
It develops a novel combinatorial and topological method to analyze brain graph filtrations and define signatures for Alzheimer's disease subtypes.
Findings
Topological signatures distinguish different Alzheimer's subtypes.
The framework effectively analyzes tau protein dynamics on brain graphs.
New algorithms for graph quotient computation and chain comparison are proposed.
Abstract
We propose a topological framework to study the evolution of Alzheimer's disease, the most common neurodegenerative disease. The modeling of this disease starts with the representation of the brain connectivity as a graph and the seeding of a toxic protein in a specific region represented by a vertex. Over time, the accumulation of toxic proteins at vertices and their propagation along edges are modeled by a dynamical system on this graph. These dynamics provide an order on the edges of the graph according to the damage created by high concentrations of proteins. This sequence of edges defines a filtration of the graph. We consider different filtrations given by different disease seeding locations. To study this filtration we propose a new combinatorial and topological method. A filtration defines a maximal chain in the partially ordered set of spanning subgraphs ordered by inclusion.…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Alzheimer's disease research and treatments · Bioinformatics and Genomic Networks
