Analyzing Brain Tumor Connectomics using Graphs and Persistent Homology
Debanjali Bhattacharya, Ninad Aithal, Manish Jayswal, Neelam Sinha

TL;DR
This study combines graph theory and persistent homology to analyze whole-brain connectomes, successfully distinguishing between brain tumor sub-types with high accuracy and revealing tumor-specific connectivity alterations.
Contribution
It introduces a novel application of persistent homology combined with graph analysis for brain tumor classification using connectome data.
Findings
Achieved 88% accuracy with graph-based features.
Classified tumor sub-types with 80% accuracy.
Identified significant brain regions with altered connectivity.
Abstract
Recent advances in molecular and genetic research have identified a diverse range of brain tumor sub-types, shedding light on differences in their molecular mechanisms, heterogeneity, and origins. The present study performs whole-brain connectome analysis using diffusionweighted images. To achieve this, both graph theory and persistent homology - a prominent approach in topological data analysis are employed in order to quantify changes in the structural connectivity of the wholebrain connectome in subjects with brain tumors. Probabilistic tractography is used to map the number of streamlines connecting 84 distinct brain regions, as delineated by the Desikan-Killiany atlas from FreeSurfer. These streamline mappings form the connectome matrix, on which persistent homology based analysis and graph theoretical analysis are executed to evaluate the discriminatory power between tumor…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Bioinformatics and Genomic Networks · Computational Drug Discovery Methods
