Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning
Epilepsy is a chronic, non-communicable disease caused by paroxysmal abnormal synchronized electrical activity of brain neurons, and is one of the most common neurological diseases worldwide. Electroencephalography (EEG) is currently a crucial tool for epilepsy diagnosis. With the development of art...
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my.um.eprints.454702024-10-22T06:39:43Z http://eprints.um.edu.my/45470/ Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning Hu, Xiujian Xie, Yicheng Zhao, Hui Sheng, Guanglei Lai, Khin Wee Zhang, Yuanpeng QA75 Electronic computers. Computer science R Medicine (General) Epilepsy is a chronic, non-communicable disease caused by paroxysmal abnormal synchronized electrical activity of brain neurons, and is one of the most common neurological diseases worldwide. Electroencephalography (EEG) is currently a crucial tool for epilepsy diagnosis. With the development of artificial intelligence, multi-view learning-based EEG analysis has become an important method for automatic epilepsy recognition because EEG contains difficult types of features such as time-frequency features, frequency-domain features and time-domain features. However, current multi-view learning still faces some challenges, such as the difference between samples of the same class from different views is greater than the difference between samples of different classes from the same view. In view of this, in this study, we propose a shared hidden space-driven multi-view learning algorithm. The algorithm uses kernel density estimation to construct a shared hidden space and combines the shared hidden space with the original space to obtain an expanded space for multi-view learning. By constructing the expanded space and utilizing the information of both the shared hidden space and the original space for learning, the relevant information of samples within and across views can thereby be fully utilized. Experimental results on a dataset of epilepsy provided by the University of Bonn show that the proposed algorithm has promising performance, with an average classification accuracy value of 0.9787, which achieves at least 4% improvement compared to single-view methods. PeerJ 2024-03 Article PeerReviewed Hu, Xiujian and Xie, Yicheng and Zhao, Hui and Sheng, Guanglei and Lai, Khin Wee and Zhang, Yuanpeng (2024) Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning. PeerJ Computer Science, 10. e1874. ISSN 2376-5992, DOI https://doi.org/10.7717/peerj-cs.1874 <https://doi.org/10.7717/peerj-cs.1874>. https://doi.org/10.7717/peerj-cs.1874 10.7717/peerj-cs.1874 |
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QA75 Electronic computers. Computer science R Medicine (General) Hu, Xiujian Xie, Yicheng Zhao, Hui Sheng, Guanglei Lai, Khin Wee Zhang, Yuanpeng Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
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Epilepsy is a chronic, non-communicable disease caused by paroxysmal abnormal synchronized electrical activity of brain neurons, and is one of the most common neurological diseases worldwide. Electroencephalography (EEG) is currently a crucial tool for epilepsy diagnosis. With the development of artificial intelligence, multi-view learning-based EEG analysis has become an important method for automatic epilepsy recognition because EEG contains difficult types of features such as time-frequency features, frequency-domain features and time-domain features. However, current multi-view learning still faces some challenges, such as the difference between samples of the same class from different views is greater than the difference between samples of different classes from the same view. In view of this, in this study, we propose a shared hidden space-driven multi-view learning algorithm. The algorithm uses kernel density estimation to construct a shared hidden space and combines the shared hidden space with the original space to obtain an expanded space for multi-view learning. By constructing the expanded space and utilizing the information of both the shared hidden space and the original space for learning, the relevant information of samples within and across views can thereby be fully utilized. Experimental results on a dataset of epilepsy provided by the University of Bonn show that the proposed algorithm has promising performance, with an average classification accuracy value of 0.9787, which achieves at least 4% improvement compared to single-view methods. |
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Article |
author |
Hu, Xiujian Xie, Yicheng Zhao, Hui Sheng, Guanglei Lai, Khin Wee Zhang, Yuanpeng |
author_facet |
Hu, Xiujian Xie, Yicheng Zhao, Hui Sheng, Guanglei Lai, Khin Wee Zhang, Yuanpeng |
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Hu, Xiujian |
title |
Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
title_short |
Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
title_full |
Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
title_fullStr |
Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
title_full_unstemmed |
Electroencephalography (EEG) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
title_sort |
electroencephalography (eeg) based epilepsy diagnosis via multiple feature space fusion using shared hidden space-driven multi-view learning |
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PeerJ |
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2024 |
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http://eprints.um.edu.my/45470/ https://doi.org/10.7717/peerj-cs.1874 |
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1814047565151207424 |
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13.214268 |