The purpose of this work is to advance in the computational study of connectome graphs from a topological point of view. Specifically, starting from a sequence of hypergraphs associated to a brain graph (obtained using the Boundary Scale model, BS2), we analyze the resulting scale-space representation using classical topological features, such as Betti numbers and average node and edge degrees. In this way, the topological information that can be extracted from the original graph is substantially enriched, thus providing an insightful description of the graph from a clinical perspective. To assess the qualitative and quantitative topological information gain of the BS2 model, we carried out an empirical analysis of neuroimaging data using a dataset that contains the connectomes of 96 healthy subjects, 52 women and 44 men, generated from MRI scans in the Human Connectome Project. The results obtained shed light on the differences between these two classes of subjects in terms of neural connectivity.

Analysis of connectome graphs based on boundary scale / Moron-Fernández, María José; Amedeo, Ludovica Maria; Monterroso Muñoz, Alberto; Molina-Abril, Helena; Díaz-Del-Río, Fernando; Bini, Fabiano; Marinozzi, Franco; Real, Pedro. - In: SENSORS. - ISSN 1424-8220. - 23:20(2023). [10.3390/s23208607]

Analysis of connectome graphs based on boundary scale

Bini, Fabiano;Marinozzi, Franco
Penultimo
;
2023

Abstract

The purpose of this work is to advance in the computational study of connectome graphs from a topological point of view. Specifically, starting from a sequence of hypergraphs associated to a brain graph (obtained using the Boundary Scale model, BS2), we analyze the resulting scale-space representation using classical topological features, such as Betti numbers and average node and edge degrees. In this way, the topological information that can be extracted from the original graph is substantially enriched, thus providing an insightful description of the graph from a clinical perspective. To assess the qualitative and quantitative topological information gain of the BS2 model, we carried out an empirical analysis of neuroimaging data using a dataset that contains the connectomes of 96 healthy subjects, 52 women and 44 men, generated from MRI scans in the Human Connectome Project. The results obtained shed light on the differences between these two classes of subjects in terms of neural connectivity.
2023
Betti numbers; connectome; hypergraph theory; topological scale
01 Pubblicazione su rivista::01a Articolo in rivista
Analysis of connectome graphs based on boundary scale / Moron-Fernández, María José; Amedeo, Ludovica Maria; Monterroso Muñoz, Alberto; Molina-Abril, Helena; Díaz-Del-Río, Fernando; Bini, Fabiano; Marinozzi, Franco; Real, Pedro. - In: SENSORS. - ISSN 1424-8220. - 23:20(2023). [10.3390/s23208607]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1695434
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