Discovering Sex and Age Implicator Edges in the Human Connectome
Laszlo Keresztes, Evelin Szogi, Balint Varga, Vince Grolmusz

TL;DR
This study identifies specific brain connectome edges that can predict a person's sex or age with over 62% accuracy, revealing distinct regional patterns associated with these attributes.
Contribution
It introduces a novel method for discovering implicator edges in the human connectome that are indicative of sex and age, advancing understanding of brain connectivity.
Findings
Edges implying male sex are mainly in anterior brain regions.
Edges implying female sex are mainly in posterior brain regions.
Inter-hemispheric edges are mostly male, intra-hemispheric are mostly female.
Abstract
Determining important vertices in large graphs (e.g., Google's PageRank in the case of the graph of the World Wide Web) facilitated the construction of excellent web search engines, returning the most important hits corresponding to the submitted user queries. Interestingly, finding important edges -- instead of vertices -- in large graphs has received much less attention until now. Here we examine the human structural braingraph (or connectome), identified by diffusion magnetic resonance imaging (dMRI) methods, with edges connecting cortical and subcortical gray matter areas and weighted by fiber strengths, measured by the number of the discovered fiber tracts along the edge. We identify several "single" important edges in these braingraphs, whose high or low weights imply the sex or the age of the subject observed. We call these edges implicator edges since solely from their weight,…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Neuroimaging Techniques and Applications · Health, Environment, Cognitive Aging
MethodsDiffusion
