2020
DOI: 10.1038/s41598-020-78899-7
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Reconfiguration of human evolving large-scale epileptic brain networks prior to seizures: an evaluation with node centralities

Abstract: Previous research has indicated that temporal changes of centrality of specific nodes in human evolving large-scale epileptic brain networks carry information predictive of impending seizures. Centrality is a fundamental network-theoretical concept that allows one to assess the role a node plays in a network. This concept allows for various interpretations, which is reflected in a number of centrality indices. Here we aim to achieve a more general understanding of local and global network reconfigurations duri… Show more

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Cited by 16 publications
(19 citation statements)
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“…We also found a decrease in strength ( Figure 7 ) and an increase in eigenvector centrality ( Figure 10 ) for before and mid classes compared with far for motifs in the beta band. A 2020 scientific report from Fruengel and colleagues ( 33 ) analyzes these graph metrics on a group of 38 patients with intracranial EEG in multiday recordings. Though their patients' epilepsies were inhomogeneous, they used a different connectivity function, and their work was specifically focused on preseizure networks (instead of IEDs), some of the scenarios hypothesized there might apply to our research.…”
Section: Discussionmentioning
confidence: 99%
“…We also found a decrease in strength ( Figure 7 ) and an increase in eigenvector centrality ( Figure 10 ) for before and mid classes compared with far for motifs in the beta band. A 2020 scientific report from Fruengel and colleagues ( 33 ) analyzes these graph metrics on a group of 38 patients with intracranial EEG in multiday recordings. Though their patients' epilepsies were inhomogeneous, they used a different connectivity function, and their work was specifically focused on preseizure networks (instead of IEDs), some of the scenarios hypothesized there might apply to our research.…”
Section: Discussionmentioning
confidence: 99%
“…This inconsistency, however, can be resolved when considering the following model of a stimulation-induced stretching and compression of the network (see Figure 4 ; cf. Fruengel et al, 2020 ), which may be due to some nonlinear mechanism. The stimulation-induced increase of global clustering coefficient and decrease of average shortest path length points to an, on average, global compression of the evolving functional brain network.…”
Section: Discussionmentioning
confidence: 99%
“…We derived these phase time series adaptively with the Hilbert transform from the respective EEG time series (Osterhage et al, 2007 ). Non-overlapping windows (with index w ) had a duration of 20 s (5,120 data points), which represents a compromise between the required statistical accuracy for the calculation of r nm and approximate stationarity within a window length (Osterhage et al, 2007 ; Kuhnert et al, 2013 ; Fruengel et al, 2020 ). The synchronization index was repeatedly shown to serve as an indicator for the strength of interactions in functional brain networks and is confined to the unit interval: r nm = 1 indicates fully phase-synchronized brain regions and r nm = 0 indexes no phase synchronization.…”
Section: Methodsmentioning
confidence: 99%
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