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A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS

The brain is made up of billions of neurons, which control all actions performed by us. In epilepsy, the pattern order of brain signals is altered, causing epileptiform discharges in an individual’s brain. Approximately 1% of the world population has epilepsy and, therefore, there is a need for stud...

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Autores principales: Rebello, Bruna Carolina, Ramirez, Alejandro Rafael Garcia, Heredia-Negron, Frances, Roche-Lima, Abiel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9199360/
https://www.ncbi.nlm.nih.gov/pubmed/35711293
http://dx.doi.org/10.22533/at.ed.317282219056
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author Rebello, Bruna Carolina
Ramirez, Alejandro Rafael Garcia
Heredia-Negron, Frances
Roche-Lima, Abiel
author_facet Rebello, Bruna Carolina
Ramirez, Alejandro Rafael Garcia
Heredia-Negron, Frances
Roche-Lima, Abiel
author_sort Rebello, Bruna Carolina
collection PubMed
description The brain is made up of billions of neurons, which control all actions performed by us. In epilepsy, the pattern order of brain signals is altered, causing epileptiform discharges in an individual’s brain. Approximately 1% of the world population has epilepsy and, therefore, there is a need for studies that can help in the diagnosis and treatment of this disorder. The objective of this work is to develop a machine learning-based approach to predict epileptic seizures using non-invasive electroencephalography (EEG). Therefore, the classification of interictal and preictal states was performed using the CHB-MIT database. The algorithm was developed to predict epileptic seizures in multiple subjects using a patient-independent approach. The Discrete Wavelet Transform was used to perform the decomposition of the EEG signals in 5 levels and, as characteristics, the Spectral Power, the Mean and the Standard Deviation were studied, in order to analyze which one would present the best result and as a classifier, the Supported Vector Machine (SVM). The study achieved an accuracy of 92.30%, 84.60% and 76.92% for the Power, Standard Deviation and Mean characteristics, respectively.
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spelling pubmed-91993602022-06-15 A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS Rebello, Bruna Carolina Ramirez, Alejandro Rafael Garcia Heredia-Negron, Frances Roche-Lima, Abiel J Eng Res (Ponta Grossa) Article The brain is made up of billions of neurons, which control all actions performed by us. In epilepsy, the pattern order of brain signals is altered, causing epileptiform discharges in an individual’s brain. Approximately 1% of the world population has epilepsy and, therefore, there is a need for studies that can help in the diagnosis and treatment of this disorder. The objective of this work is to develop a machine learning-based approach to predict epileptic seizures using non-invasive electroencephalography (EEG). Therefore, the classification of interictal and preictal states was performed using the CHB-MIT database. The algorithm was developed to predict epileptic seizures in multiple subjects using a patient-independent approach. The Discrete Wavelet Transform was used to perform the decomposition of the EEG signals in 5 levels and, as characteristics, the Spectral Power, the Mean and the Standard Deviation were studied, in order to analyze which one would present the best result and as a classifier, the Supported Vector Machine (SVM). The study achieved an accuracy of 92.30%, 84.60% and 76.92% for the Power, Standard Deviation and Mean characteristics, respectively. 2022 /pmc/articles/PMC9199360/ /pubmed/35711293 http://dx.doi.org/10.22533/at.ed.317282219056 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/All content in this magazine is licensed under a Creative Commons Attribution License. Attribution-Non-Commercial-Non-Derivatives 4.0 International (CC BY-NC-ND 4.0).
spellingShingle Article
Rebello, Bruna Carolina
Ramirez, Alejandro Rafael Garcia
Heredia-Negron, Frances
Roche-Lima, Abiel
A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS
title A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS
title_full A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS
title_fullStr A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS
title_full_unstemmed A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS
title_short A MACHINE LEARNING-BASED APPROACH TO EPILEPTIC SEIZURE PREDICTION USING ELECTRO-ENCEPHALOGRAPHIC SIGNALS
title_sort machine learning-based approach to epileptic seizure prediction using electro-encephalographic signals
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9199360/
https://www.ncbi.nlm.nih.gov/pubmed/35711293
http://dx.doi.org/10.22533/at.ed.317282219056
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