4.7 Article

Synchronization Analysis In Epileptic EEG Signals Via State Transfer Networks Based On Visibility Graph Technique

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WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0129065721500416

关键词

Epilepsy; ictal; motif; network; synchronization; visibility graph

资金

  1. Izmir Katip Celebi University Scientific Research Projects Coordination Unit [2017- O NAP-MUMF0002]

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This study introduces a new method based on graph analysis and statistical rescale range analysis to assess and interpret the changes in EEG recordings from different brain regions in epilepsy disorders. The analysis reveals an increase in motif persistence during the seizure phase, indicating increased synchronization. The findings suggest that the new method is in good agreement with existing approaches and is more efficient. The most significant contribution of this research is the introduction of a novel nonlinear analysis technique called generalized synchronization.
Epilepsy is a persistent and recurring neurological condition in a community of brain neurons that results from sudden and abnormal electrical discharges. This paper introduces a new form of assessment and interpretation of the changes in electroencephalography (EEG) recordings from different brain regions in epilepsy disorders based on graph analysis and statistical rescale range analysis. In this study, two different states of epilepsy EEG data (preictal and ictal phases), obtained from 17 subjects (18 channels each), were analyzed by a new method called state transfer network (STN). The analysis performed by STN yields a network metric called motifs, which are averaged over all channels and subjects in terms of their persistence level in the network. The results showed an increase of overall motif persistence during the ictal over the preictal phase, reflecting the synchronization increase during the seizure phase (ictal). An evaluation of intermotif cross-correlation indicated a definite manifestation of such synchronization. Moreover, these findings are compared with several other well-known methods such as synchronization likelihood (SL), visibility graph similarity (VGS), and global field synchronization (GFS). It is hinted that the STN method is in good agreement with approaches in the literature and more efficient. The most significant contribution of this research is introducing a novel nonlinear analysis technique of generalized synchronization. The STN method can be used for classifying epileptic seizures based on the synchronization changes between multichannel data.

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