Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques

Automatic seizure prediction is an important task to help epilepsy patients and epilepsy specialists. In addition, measuring electrical activity in different brain parts is an important step before any prediction. The best tool for recording electrical activity is electroencephalography (EEG), whi...

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Main Authors: SIDAOUI, B., SADOUNI, K.
Format: Article
Language:English
Published: Stefan cel Mare University of Suceava 2023-05-01
Series:Advances in Electrical and Computer Engineering
Subjects:
Online Access:http://dx.doi.org/10.4316/AECE.2023.02006
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author SIDAOUI, B.
SADOUNI, K.
author_facet SIDAOUI, B.
SADOUNI, K.
author_sort SIDAOUI, B.
collection DOAJ
description Automatic seizure prediction is an important task to help epilepsy patients and epilepsy specialists. In addition, measuring electrical activity in different brain parts is an important step before any prediction. The best tool for recording electrical activity is electroencephalography (EEG), which uses electrodes placed on the head. This paper examines the performance of the convolutional neural network (CNN) architectures and support vector machine (SVM) method for predicting epileptic seizure activity using rich information recorded in the signal of EEG segments. The proposed approach is based on 22 features extracted from different EEG segments to produce a representative dataset. SVM classification models and two CNN architectures are proposed to predict ongoing seizures and different states of epilepsy patients. Two CNN architectures are presented: the first is trained with a dataset of features extracted from the EEG signal, and the second is trained with a dataset of Scalogram images from the EEG signal, whose purpose is to predict the imminence of an epileptic seizure in patients. A dataset of 6 patients is used to predict all states of epilepsy patients. Both CNN architectures and binary SVM classifiers achieve a classification rate above 98%.
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spelling doaj.art-1ba4f1c23bad42a68c369920525c87152023-06-05T20:19:26ZengStefan cel Mare University of SuceavaAdvances in Electrical and Computer Engineering1582-74451844-76002023-05-01232475410.4316/AECE.2023.02006Epilepsy Seizure Prediction from EEG Signal Using Machine Learning TechniquesSIDAOUI, B.SADOUNI, K.Automatic seizure prediction is an important task to help epilepsy patients and epilepsy specialists. In addition, measuring electrical activity in different brain parts is an important step before any prediction. The best tool for recording electrical activity is electroencephalography (EEG), which uses electrodes placed on the head. This paper examines the performance of the convolutional neural network (CNN) architectures and support vector machine (SVM) method for predicting epileptic seizure activity using rich information recorded in the signal of EEG segments. The proposed approach is based on 22 features extracted from different EEG segments to produce a representative dataset. SVM classification models and two CNN architectures are proposed to predict ongoing seizures and different states of epilepsy patients. Two CNN architectures are presented: the first is trained with a dataset of features extracted from the EEG signal, and the second is trained with a dataset of Scalogram images from the EEG signal, whose purpose is to predict the imminence of an epileptic seizure in patients. A dataset of 6 patients is used to predict all states of epilepsy patients. Both CNN architectures and binary SVM classifiers achieve a classification rate above 98%.http://dx.doi.org/10.4316/AECE.2023.02006epilepsy seizureeegpredictionconvolutional neural networksvm
spellingShingle SIDAOUI, B.
SADOUNI, K.
Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques
Advances in Electrical and Computer Engineering
epilepsy seizure
eeg
prediction
convolutional neural network
svm
title Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques
title_full Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques
title_fullStr Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques
title_full_unstemmed Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques
title_short Epilepsy Seizure Prediction from EEG Signal Using Machine Learning Techniques
title_sort epilepsy seizure prediction from eeg signal using machine learning techniques
topic epilepsy seizure
eeg
prediction
convolutional neural network
svm
url http://dx.doi.org/10.4316/AECE.2023.02006
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