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Predicting epileptic seizures from Electroencephalography

Predicting epileptic seizures from Electroencephalography
Predicting epileptic seizures from Electroencephalography
Epilepsy is a neurological disorder that is characterised by repeated seizures. The sudden onset of a seizure affects a patient’s quality of life. Therefore, predicting an epileptic seizure in advance can improve their life by giving them warning and thus avoiding serious accidents. In this work, two general prediction models are formulated using the electroencephalography (EEG) signals of patients with Temporal Lobe Epilepsy (TLE) and Absence seizures. EEG is the most common technique to map brain functions. Studying brain functions and how the brain regions interact is essential to understand the basis of several neurodegenerative diseases. Functional brain connectivity, as derived from multichannel EEG, is currently used as a tool to understand how the various brain regions interact with each other during a cognitive task. Researchers started to study the functional brain network by analysing the EEG data captured. Because of the high level of synchronization observed during a seizure, synchronization measures are logically the best way to assess the dynamic change in functional brain connectivity. In the current work, Phase Locking Value (PLV), Phase Lag Index (PLI) and Synchronization likelihood (SL) were used to create functional brain connectivity networks. The networks were characterized by nine graph-theoretic parameters (assortativity coefficient, transitivity, clustering coefficient, strength of node, modularity, betweenness centrality, characteristic path length, global efficiency and radius). A machine-learning framework was used to extract the patterns that the patients’ data had in common to build the prediction models. Both general prediction models were formulated using PLI and SL connectivity networks. They achieved sensitivity (both 100%) and a false prediction rate of 0.00001/h and 0.01/h, with a maximum prediction time of 19 and 40 minutes, respectively.
University of Southampton
Mubaraki, Ahmed Ali H
901cc06c-ec80-4744-8edf-251cc9f2f643
Mubaraki, Ahmed Ali H
901cc06c-ec80-4744-8edf-251cc9f2f643
White, Neil
c7be4c26-e419-4e5c-9420-09fc02e2ac9c

Mubaraki, Ahmed Ali H (2020) Predicting epileptic seizures from Electroencephalography. Doctoral Thesis, 143pp.

Record type: Thesis (Doctoral)

Abstract

Epilepsy is a neurological disorder that is characterised by repeated seizures. The sudden onset of a seizure affects a patient’s quality of life. Therefore, predicting an epileptic seizure in advance can improve their life by giving them warning and thus avoiding serious accidents. In this work, two general prediction models are formulated using the electroencephalography (EEG) signals of patients with Temporal Lobe Epilepsy (TLE) and Absence seizures. EEG is the most common technique to map brain functions. Studying brain functions and how the brain regions interact is essential to understand the basis of several neurodegenerative diseases. Functional brain connectivity, as derived from multichannel EEG, is currently used as a tool to understand how the various brain regions interact with each other during a cognitive task. Researchers started to study the functional brain network by analysing the EEG data captured. Because of the high level of synchronization observed during a seizure, synchronization measures are logically the best way to assess the dynamic change in functional brain connectivity. In the current work, Phase Locking Value (PLV), Phase Lag Index (PLI) and Synchronization likelihood (SL) were used to create functional brain connectivity networks. The networks were characterized by nine graph-theoretic parameters (assortativity coefficient, transitivity, clustering coefficient, strength of node, modularity, betweenness centrality, characteristic path length, global efficiency and radius). A machine-learning framework was used to extract the patterns that the patients’ data had in common to build the prediction models. Both general prediction models were formulated using PLI and SL connectivity networks. They achieved sensitivity (both 100%) and a false prediction rate of 0.00001/h and 0.01/h, with a maximum prediction time of 19 and 40 minutes, respectively.

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Published date: August 2020

Identifiers

Local EPrints ID: 447373
URI: http://eprints.soton.ac.uk/id/eprint/447373
PURE UUID: 87ca493b-62f8-422e-ab90-4f5a8be290ae
ORCID for Ahmed Ali H Mubaraki: ORCID iD orcid.org/0000-0001-7637-3565
ORCID for Neil White: ORCID iD orcid.org/0000-0003-1532-6452

Catalogue record

Date deposited: 10 Mar 2021 17:37
Last modified: 17 Mar 2024 02:36

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Contributors

Author: Ahmed Ali H Mubaraki ORCID iD
Thesis advisor: Neil White ORCID iD

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