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Main Authors: Di Gaetano, Leonardo, Santos, Fernando A. N., Battiston, Federico, Bianconi, Ginestra, Defenu, Nicolò, Nissen, Ida A., van Straaten, Elisabeth C. W., Hillebrand, Arjan, Millán, Ana P.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.02000
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author Di Gaetano, Leonardo
Santos, Fernando A. N.
Battiston, Federico
Bianconi, Ginestra
Defenu, Nicolò
Nissen, Ida A.
van Straaten, Elisabeth C. W.
Hillebrand, Arjan
Millán, Ana P.
author_facet Di Gaetano, Leonardo
Santos, Fernando A. N.
Battiston, Federico
Bianconi, Ginestra
Defenu, Nicolò
Nissen, Ida A.
van Straaten, Elisabeth C. W.
Hillebrand, Arjan
Millán, Ana P.
contents Pathological hubs in the brain networks of epilepsy patients are hypothesized to drive seizure generation and propagation. In epilepsy-surgery patients, these hubs have traditionally been associated with the resection area (RA): the region removed during the surgery with the goal of stopping the seizures, and which is typically used as a proxy for the epileptogenic zone. However, recent studies hypothesize that pathological hubs may extend to the vicinity of the RA, potentially complicating post-surgical seizure control. Here we propose a neighbourhood-based analysis of brain organization to investigate this hypothesis. We exploit a large dataset of pre-surgical magnetoencephalography-derived whole-brain networks from 91 epilepsy-surgery patients. Our neighbourhood focus is 2-fold. Firstly, we propose a partition of the brain regions into three sets, namely resected nodes, their neighbours and the remaining network nodes. Secondly, we introduce generalized centrality metrics that describe the neighbourhood of each node, providing a regional measure of hubness. Our analyses reveal that both the RA and its neighbourhood present large hub status, but with significant variability across patients. For some, hubs appear in the RA; for others, in its neighbourhood. Moreover, this variability does not correlate with surgical outcome. These results highlight the potential of neighbourhood-based analyses to uncover novel insights into brain connectivity in brain pathologies, and the need for individualized studies, with large enough cohorts, that account for patient-specific variability.
format Preprint
id arxiv_https___arxiv_org_abs_2601_02000
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Neighbourhood topology unveils pathological hubs in the brain networks of epilepsy-surgery patients
Di Gaetano, Leonardo
Santos, Fernando A. N.
Battiston, Federico
Bianconi, Ginestra
Defenu, Nicolò
Nissen, Ida A.
van Straaten, Elisabeth C. W.
Hillebrand, Arjan
Millán, Ana P.
Data Analysis, Statistics and Probability
Pathological hubs in the brain networks of epilepsy patients are hypothesized to drive seizure generation and propagation. In epilepsy-surgery patients, these hubs have traditionally been associated with the resection area (RA): the region removed during the surgery with the goal of stopping the seizures, and which is typically used as a proxy for the epileptogenic zone. However, recent studies hypothesize that pathological hubs may extend to the vicinity of the RA, potentially complicating post-surgical seizure control. Here we propose a neighbourhood-based analysis of brain organization to investigate this hypothesis. We exploit a large dataset of pre-surgical magnetoencephalography-derived whole-brain networks from 91 epilepsy-surgery patients. Our neighbourhood focus is 2-fold. Firstly, we propose a partition of the brain regions into three sets, namely resected nodes, their neighbours and the remaining network nodes. Secondly, we introduce generalized centrality metrics that describe the neighbourhood of each node, providing a regional measure of hubness. Our analyses reveal that both the RA and its neighbourhood present large hub status, but with significant variability across patients. For some, hubs appear in the RA; for others, in its neighbourhood. Moreover, this variability does not correlate with surgical outcome. These results highlight the potential of neighbourhood-based analyses to uncover novel insights into brain connectivity in brain pathologies, and the need for individualized studies, with large enough cohorts, that account for patient-specific variability.
title Neighbourhood topology unveils pathological hubs in the brain networks of epilepsy-surgery patients
topic Data Analysis, Statistics and Probability
url https://arxiv.org/abs/2601.02000