Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework

A clinical condition known as epilepsy occurs when the brain's regular electrical activity is disturbed, resulting in a rapid, aberrant, and excessive discharge of brain neurons. The electroencephalogram (EEG) signal is the measurement of electrical activity received from the nerve cells of the...

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Main Authors: Jibon, Ferdaus Anam, Miraz, Mahadi Hasan, Khandaker, Mayeen Uddin *, Rashdan, Mostafa, Salman, Mohammad, Tasbir, Alif, Nishar, Nazibul Hasan, Siddiqui, Fazlul Hasan
Format: Article
Language:English
Published: Elsevier 2023
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Online Access:http://eprints.sunway.edu.my/2286/1/78.pdf
http://eprints.sunway.edu.my/2286/
https://doi.org/10.1016/j.jrras.2023.100607
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spelling my.sunway.eprints.22862023-06-17T14:07:47Z http://eprints.sunway.edu.my/2286/ Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework Jibon, Ferdaus Anam Miraz, Mahadi Hasan Khandaker, Mayeen Uddin * Rashdan, Mostafa Salman, Mohammad Tasbir, Alif Nishar, Nazibul Hasan Siddiqui, Fazlul Hasan QA Mathematics RC Internal medicine TK Electrical engineering. Electronics Nuclear engineering A clinical condition known as epilepsy occurs when the brain's regular electrical activity is disturbed, resulting in a rapid, aberrant, and excessive discharge of brain neurons. The electroencephalogram (EEG) signal is the measurement of electrical activity received from the nerve cells of the cerebral cortex to make precise diagnoses of disorders, which is made crucial attention for treating epilepsy patients in recent years. The concentration on grid-like data has been a significant drawback of existing deep learning-based automatic epileptic seizure detection algorithms from raw EEG signals; nevertheless, physiological recordings frequently have irregular and unordered structures, making it challenging to think of them as a matrix. In order to take advantage of the implicit information that exists in seizure detection, graph neural networks have received a lot of attention. These networks feature interacting nodes connected by edges whose weights can be either dictated by temporal correlations or anatomical junctions. To address this limitation, a novel hybrid framework is proposed for epileptic seizure detection by using linear graph convolution neural network (LGCN) and DenseNet. When compared to previous deep learning networks, DenseNet achieves the model's higher computational accuracy and memory efficiency by reducing the vanishing gradient problem and enhancing feature propagation in each of its layers. The Stockwell transform (S-transform) is used to preprocess from the raw EEG signal and then group the resulting matrix into time-frequency blocks as inputs for the LGCN to use for feature selection and after the Densenet uses for classification. The proposed hybrid framework outperforms the state-of-the-art in seizure detection tasks, achieving 98% accuracy and 98.60% specificity in extensive experiments on the publicly available CHB-MIT EEG dataset. Elsevier 2023 Article PeerReviewed text en cc_by_nc_nd_4 http://eprints.sunway.edu.my/2286/1/78.pdf Jibon, Ferdaus Anam and Miraz, Mahadi Hasan and Khandaker, Mayeen Uddin * and Rashdan, Mostafa and Salman, Mohammad and Tasbir, Alif and Nishar, Nazibul Hasan and Siddiqui, Fazlul Hasan (2023) Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework. Journal of Radiation Research and Applied Sciences, 16 (3). ISSN 1687-8507 https://doi.org/10.1016/j.jrras.2023.100607 10.1016/j.jrras.2023.100607
institution Sunway University
building Sunway Campus Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Sunway University
content_source Sunway Institutional Repository
url_provider http://eprints.sunway.edu.my/
language English
topic QA Mathematics
RC Internal medicine
TK Electrical engineering. Electronics Nuclear engineering
spellingShingle QA Mathematics
RC Internal medicine
TK Electrical engineering. Electronics Nuclear engineering
Jibon, Ferdaus Anam
Miraz, Mahadi Hasan
Khandaker, Mayeen Uddin *
Rashdan, Mostafa
Salman, Mohammad
Tasbir, Alif
Nishar, Nazibul Hasan
Siddiqui, Fazlul Hasan
Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework
description A clinical condition known as epilepsy occurs when the brain's regular electrical activity is disturbed, resulting in a rapid, aberrant, and excessive discharge of brain neurons. The electroencephalogram (EEG) signal is the measurement of electrical activity received from the nerve cells of the cerebral cortex to make precise diagnoses of disorders, which is made crucial attention for treating epilepsy patients in recent years. The concentration on grid-like data has been a significant drawback of existing deep learning-based automatic epileptic seizure detection algorithms from raw EEG signals; nevertheless, physiological recordings frequently have irregular and unordered structures, making it challenging to think of them as a matrix. In order to take advantage of the implicit information that exists in seizure detection, graph neural networks have received a lot of attention. These networks feature interacting nodes connected by edges whose weights can be either dictated by temporal correlations or anatomical junctions. To address this limitation, a novel hybrid framework is proposed for epileptic seizure detection by using linear graph convolution neural network (LGCN) and DenseNet. When compared to previous deep learning networks, DenseNet achieves the model's higher computational accuracy and memory efficiency by reducing the vanishing gradient problem and enhancing feature propagation in each of its layers. The Stockwell transform (S-transform) is used to preprocess from the raw EEG signal and then group the resulting matrix into time-frequency blocks as inputs for the LGCN to use for feature selection and after the Densenet uses for classification. The proposed hybrid framework outperforms the state-of-the-art in seizure detection tasks, achieving 98% accuracy and 98.60% specificity in extensive experiments on the publicly available CHB-MIT EEG dataset.
format Article
author Jibon, Ferdaus Anam
Miraz, Mahadi Hasan
Khandaker, Mayeen Uddin *
Rashdan, Mostafa
Salman, Mohammad
Tasbir, Alif
Nishar, Nazibul Hasan
Siddiqui, Fazlul Hasan
author_facet Jibon, Ferdaus Anam
Miraz, Mahadi Hasan
Khandaker, Mayeen Uddin *
Rashdan, Mostafa
Salman, Mohammad
Tasbir, Alif
Nishar, Nazibul Hasan
Siddiqui, Fazlul Hasan
author_sort Jibon, Ferdaus Anam
title Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework
title_short Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework
title_full Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework
title_fullStr Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework
title_full_unstemmed Epileptic seizure detection from electroencephalogram (EEG) signals using linear graph convolutional network and DenseNet based hybrid framework
title_sort epileptic seizure detection from electroencephalogram (eeg) signals using linear graph convolutional network and densenet based hybrid framework
publisher Elsevier
publishDate 2023
url http://eprints.sunway.edu.my/2286/1/78.pdf
http://eprints.sunway.edu.my/2286/
https://doi.org/10.1016/j.jrras.2023.100607
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