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      EEG Synchronization Analysis for Seizure Prediction: A Study on Data of Noninvasive Recordings

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          Abstract

          Objective: Epilepsy is a neurological disorder arising from anomalies of the electrical activity in the brain, affecting ~65 million individuals worldwide. Prediction methods, typically based on machine learning methods, require a large amount of data for training, in order to correctly classify seizures with small false alarm rates. Methods: In this work, we present a new database containing EEG scalp signals of 14 epileptic patients acquired at the Unit of Neurology and Neurophysiology of the University of Siena, Italy. Furthermore, a patient-specific seizure prediction method, based on the detection of synchronization patterns in the EEG, is proposed and tested on the data of the database. The use of noninvasive EEG data aims to explore the possibility of developing a noninvasive monitoring/control device for the prediction of seizures. The prediction method employs synchronization measures computed over all channel pairs and a computationally inexpensive threshold-based classification approach. Results and conclusions: The experimental analysis, performed by inspection and by the proposed threshold-based classifier on all the patients of the database, shows that the features extracted by the synchronization measures are able to detect preictal and ictal states and allow the prediction of the seizures few minutes before the seizure onsets.

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          Contributors
          Journal
          PROCCO
          Processes
          Processes
          MDPI AG
          2227-9717
          July 2020
          July 16 2020
          : 8
          : 7
          : 846
          Article
          10.3390/pr8070846
          32891224-606c-4270-a75f-31d429d32fea
          © 2020

          https://creativecommons.org/licenses/by/4.0/

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