An overview of machine learning and deep learning techniques for predicting epileptic seizures

Epilepsy is a neurological disorder (the third most common, following stroke and migraines). A key aspect of its diagnosis is the presence of seizures that occur without a known cause and the potential for new seizures to occur. Machine learning has shown potential as a cost-effective alternative fo...

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Main Authors: Zurdo-Tabernero Marco, Canal-Alonso Ángel, de la Prieta Fernando, Rodríguez Sara, Prieto Javier, Corchado Juan Manuel
Format: Article
Language:English
Published: De Gruyter 2023-12-01
Series:Journal of Integrative Bioinformatics
Subjects:
Online Access:https://doi.org/10.1515/jib-2023-0002
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author Zurdo-Tabernero Marco
Canal-Alonso Ángel
de la Prieta Fernando
Rodríguez Sara
Prieto Javier
Corchado Juan Manuel
author_facet Zurdo-Tabernero Marco
Canal-Alonso Ángel
de la Prieta Fernando
Rodríguez Sara
Prieto Javier
Corchado Juan Manuel
author_sort Zurdo-Tabernero Marco
collection DOAJ
description Epilepsy is a neurological disorder (the third most common, following stroke and migraines). A key aspect of its diagnosis is the presence of seizures that occur without a known cause and the potential for new seizures to occur. Machine learning has shown potential as a cost-effective alternative for rapid diagnosis. In this study, we review the current state of machine learning in the detection and prediction of epileptic seizures. The objective of this study is to portray the existing machine learning methods for seizure prediction. Internet bibliographical searches were conducted to identify relevant literature on the topic. Through cross-referencing from key articles, additional references were obtained to provide a comprehensive overview of the techniques. As the aim of this paper aims is not a pure bibliographical review of the subject, the publications here cited have been selected among many others based on their number of citations. To implement accurate diagnostic and treatment tools, it is necessary to achieve a balance between prediction time, sensitivity, and specificity. This balance can be achieved using deep learning algorithms. The best performance and results are often achieved by combining multiple techniques and features, but this approach can also increase computational requirements.
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spelling doaj.art-dcc5ece4e57c4b22969c3524f21e7bb32024-01-16T07:18:28ZengDe GruyterJournal of Integrative Bioinformatics1613-45162023-12-01204154560210.1515/jib-2023-0002An overview of machine learning and deep learning techniques for predicting epileptic seizuresZurdo-Tabernero Marco0Canal-Alonso Ángel1de la Prieta Fernando2Rodríguez Sara3Prieto Javier4Corchado Juan Manuel5BISITE Research Group, University of Salamanca, Salamanca, SpainBISITE Research Group, University of Salamanca, Salamanca, SpainBISITE Research Group, University of Salamanca, Salamanca, SpainBISITE Research Group, University of Salamanca, Salamanca, SpainBISITE Research Group, University of Salamanca, Salamanca, SpainBISITE Research Group, University of Salamanca, Salamanca, SpainEpilepsy is a neurological disorder (the third most common, following stroke and migraines). A key aspect of its diagnosis is the presence of seizures that occur without a known cause and the potential for new seizures to occur. Machine learning has shown potential as a cost-effective alternative for rapid diagnosis. In this study, we review the current state of machine learning in the detection and prediction of epileptic seizures. The objective of this study is to portray the existing machine learning methods for seizure prediction. Internet bibliographical searches were conducted to identify relevant literature on the topic. Through cross-referencing from key articles, additional references were obtained to provide a comprehensive overview of the techniques. As the aim of this paper aims is not a pure bibliographical review of the subject, the publications here cited have been selected among many others based on their number of citations. To implement accurate diagnostic and treatment tools, it is necessary to achieve a balance between prediction time, sensitivity, and specificity. This balance can be achieved using deep learning algorithms. The best performance and results are often achieved by combining multiple techniques and features, but this approach can also increase computational requirements.https://doi.org/10.1515/jib-2023-0002seizure predictionmachine learningepilepsyelectroencephalogram
spellingShingle Zurdo-Tabernero Marco
Canal-Alonso Ángel
de la Prieta Fernando
Rodríguez Sara
Prieto Javier
Corchado Juan Manuel
An overview of machine learning and deep learning techniques for predicting epileptic seizures
Journal of Integrative Bioinformatics
seizure prediction
machine learning
epilepsy
electroencephalogram
title An overview of machine learning and deep learning techniques for predicting epileptic seizures
title_full An overview of machine learning and deep learning techniques for predicting epileptic seizures
title_fullStr An overview of machine learning and deep learning techniques for predicting epileptic seizures
title_full_unstemmed An overview of machine learning and deep learning techniques for predicting epileptic seizures
title_short An overview of machine learning and deep learning techniques for predicting epileptic seizures
title_sort overview of machine learning and deep learning techniques for predicting epileptic seizures
topic seizure prediction
machine learning
epilepsy
electroencephalogram
url https://doi.org/10.1515/jib-2023-0002
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