Author:
Laiou Petroula,Biondi Andrea,Bruno Elisa,Viana Pedro,Winston Joel S,Rashid Zulqarnain,Ranjan Yatharth,Conde Pauline,Stewart Callum,Sun Shaoxiong,Zhang Yuezhou,Folarin Amos,Dobson Richard JB,Schulze-Bonhage Andreas,Duempelmann Matthias,Richardson Mark P,
Abstract
AbstractEpilepsy is one of the most common neurological disorders, characterized by the occurrence of repeated seizures. Given that epilepsy is considered a network disorder, tools derived from network neuroscience may confer the valuable ability to quantify properties of epileptic brain networks. In this study we use well-established brain network metrics (i.e., mean strength, variance of strength, eigenvector centrality, betweenness centrality) to characterize the temporal evolution of epileptic functional networks over several days prior to seizure occurrence. We infer the networks using long-term electroencephalographic recordings from 12 people with epilepsy. We found that brain network metrics are variable across days and show a circadian periodicity. In addition, we found that in 9 out of 12 patients the distribution of variance of strength in the day (or even two last days) prior to seizure occurrence is significantly different compared to the corresponding distributions on all previous days. Our results suggest that brain network metrics computed from EEG recordings could potentially be used to characterize brain network changes that occur prior to seizures, and ultimately contribute to seizure warning systems.
Publisher
Cold Spring Harbor Laboratory