EEG Signal Epilepsy Detection with a Weighted Neighbour Graph Representation and Two-stream Graph-based Framework
Epilepsy is one of the most common neurological diseases. Clinically, epileptic seizure detection is usually performed by analyzing electroencephalography (EEG) signals. At present, deep learning models have been widely used for single-channel EEG signal epilepsy detection, but this method is diffic...
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Published in | IEEE transactions on neural systems and rehabilitation engineering Vol. 31; p. 1 |
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Main Authors | , , , , , , , |
Format | Journal Article |
Language | English |
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United States
IEEE
01.01.2023
The Institute of Electrical and Electronics Engineers, Inc. (IEEE) |
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Online Access | Get full text |
ISSN | 1534-4320 1558-0210 1558-0210 |
DOI | 10.1109/TNSRE.2023.3299839 |
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Abstract | Epilepsy is one of the most common neurological diseases. Clinically, epileptic seizure detection is usually performed by analyzing electroencephalography (EEG) signals. At present, deep learning models have been widely used for single-channel EEG signal epilepsy detection, but this method is difficult to explain the classification results. Researchers have attempted to solve interpretive problems by combining graph representation of EEG signals with graph neural network models. Recently, the combination of graph representations and graph neural network (GNN) models has been increasingly applied to single-channel epilepsy detection. By this methodology, the raw EEG signal is transformed to its graph representation, and a GNN model is used to learn latent features and classify whether the data indicates an epileptic seizure episode. However, existing methods are faced with two major challenges. First, existing graph representations tend to have high time complexity as they generally require each vertex to traverse all other vertices to construct a graph structure. Some of them also have high space complexity for being dense. Second, while separate graph representations can be derived from a single-channel EEG signal in both time and frequency domains, existing GNN models for epilepsy detection can learn from a single graph representation, which makes it hard to let the information from the two domains complement each other. For addressing these challenges, we propose a Weighted Neighbour Graph (WNG) representation for EEG signals. Reducing the redundant edges of the existing graph, WNG can be both time and space-efficient, and as informative as its less efficient counterparts. We then propose a two-stream graph-based framework to simultaneously learn features from WNG in both time and frequency domain. Extensive experiments demonstrate the effectiveness and efficiency of the proposed methods. |
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AbstractList | Epilepsy is one of the most common neurological diseases. Clinically, epileptic seizure detection is usually performed by analyzing electroencephalography (EEG) signals. At present, deep learning models have been widely used for single-channel EEG signal epilepsy detection, but this method is difficult to explain the classification results. Researchers have attempted to solve interpretive problems by combining graph representation of EEG signals with graph neural network models. Recently, the combination of graph representations and graph neural network (GNN) models has been increasingly applied to single-channel epilepsy detection. By this methodology, the raw EEG signal is transformed to its graph representation, and a GNN model is used to learn latent features and classify whether the data indicates an epileptic seizure episode. However, existing methods are faced with two major challenges. First, existing graph representations tend to have high time complexity as they generally require each vertex to traverse all other vertices to construct a graph structure. Some of them also have high space complexity for being dense. Second, while separate graph representations can be derived from a single-channel EEG signal in both time and frequency domains, existing GNN models for epilepsy detection can learn from a single graph representation, which makes it hard to let the information from the two domains complement each other. For addressing these challenges, we propose a Weighted Neighbour Graph (WNG) representation for EEG signals. Reducing the redundant edges of the existing graph, WNG can be both time and space-efficient, and as informative as its less efficient counterparts. We then propose a two-stream graph-based framework to simultaneously learn features from WNG in both time and frequency domain. Extensive experiments demonstrate the effectiveness and efficiency of the proposed methods. Epilepsy is one of the most common neurological diseases. Clinically, epileptic seizure detection is usually performed by analyzing electroencephalography (EEG) signals. At present, deep learning models have been widely used for single-channel EEG signal epilepsy detection, but this method is difficult to explain the classification results. Researchers have attempted to solve interpretive problems by combining graph representation of EEG signals with graph neural network models. Recently, the combination of graph representations and graph neural network (GNN) models has been increasingly applied to single-channel epilepsy detection. By this methodology, the raw EEG signal is transformed to its graph representation, and a GNN model is used to learn latent features and classify whether the data indicates an epileptic seizure episode. However, existing methods are faced with two major challenges. First, existing graph representations tend to have high time complexity as they generally require each vertex to traverse all other vertices to construct a graph structure. Some of them also have high space complexity for being dense. Second, while separate graph representations can be derived from a single-channel EEG signal in both time and frequency domains, existing GNN models for epilepsy detection can learn from a single graph representation, which makes it hard to let the information from the two domains complement each other. For addressing these challenges, we propose a Weighted Neighbour Graph (WNG) representation for EEG signals. Reducing the redundant edges of the existing graph, WNG can be both time and space-efficient, and as informative as its less efficient counterparts. We then propose a two-stream graph-based framework to simultaneously learn features from WNG in both time and frequency domain. Extensive experiments demonstrate the effectiveness and efficiency of the proposed methods.Epilepsy is one of the most common neurological diseases. Clinically, epileptic seizure detection is usually performed by analyzing electroencephalography (EEG) signals. At present, deep learning models have been widely used for single-channel EEG signal epilepsy detection, but this method is difficult to explain the classification results. Researchers have attempted to solve interpretive problems by combining graph representation of EEG signals with graph neural network models. Recently, the combination of graph representations and graph neural network (GNN) models has been increasingly applied to single-channel epilepsy detection. By this methodology, the raw EEG signal is transformed to its graph representation, and a GNN model is used to learn latent features and classify whether the data indicates an epileptic seizure episode. However, existing methods are faced with two major challenges. First, existing graph representations tend to have high time complexity as they generally require each vertex to traverse all other vertices to construct a graph structure. Some of them also have high space complexity for being dense. Second, while separate graph representations can be derived from a single-channel EEG signal in both time and frequency domains, existing GNN models for epilepsy detection can learn from a single graph representation, which makes it hard to let the information from the two domains complement each other. For addressing these challenges, we propose a Weighted Neighbour Graph (WNG) representation for EEG signals. Reducing the redundant edges of the existing graph, WNG can be both time and space-efficient, and as informative as its less efficient counterparts. We then propose a two-stream graph-based framework to simultaneously learn features from WNG in both time and frequency domain. Extensive experiments demonstrate the effectiveness and efficiency of the proposed methods. |
Author | Wu, Yingpei Zhang, Lanying Shi, C.-J. Richard Wang, Jialin Zhang, Jiawei Gao, Rui Liang, Shen He, Dake |
Author_xml | – sequence: 1 givenname: Jialin orcidid: 0000-0003-4202-9656 surname: Wang fullname: Wang, Jialin organization: the Institute of Brain-Inspired Circuits and Systems (iBiCAS), State Key Laboratory of ASIC and Systems, Fudan University, Shanghai, China – sequence: 2 givenname: Shen surname: Liang fullname: Liang, Shen organization: Data Intelligence Institute of Paris (diiP), Université Paris Cité, Paris, France – sequence: 3 givenname: Jiawei surname: Zhang fullname: Zhang, Jiawei organization: Department of New Networks, Peng Cheng Laboratory, Shenzhen, Guangdong, China – sequence: 4 givenname: Yingpei surname: Wu fullname: Wu, Yingpei organization: School of Information Technology, Jiangxi University of Finance and Economics, Nanchang, China – sequence: 5 givenname: Lanying surname: Zhang fullname: Zhang, Lanying organization: the Institute of Brain-Inspired Circuits and Systems (iBiCAS), State Key Laboratory of ASIC and Systems, Fudan University, Shanghai, China – sequence: 6 givenname: Rui orcidid: 0000-0001-7570-8140 surname: Gao fullname: Gao, Rui organization: Department of Naval Architecture and Ocean Engineering, Shanghai Jiao Tong University, Shanghai, China – sequence: 7 givenname: Dake surname: He fullname: He, Dake organization: Xinhua Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, China – sequence: 8 givenname: C.-J. Richard orcidid: 0000-0002-3157-3464 surname: Shi fullname: Shi, C.-J. Richard organization: Department of Electrical and Computer Engineering, University of Washington, Seattle, USA |
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SubjectTerms | Algorithms Apexes Brain modeling Complexity Convulsions & seizures Deep learning EEG EEG signal Electroencephalography Electroencephalography - methods Epilepsy Epilepsy - diagnosis Frequency domain analysis Graph neural network Graph neural networks Graph representation Graph representations Graph theory Graphical representations Humans Machine learning Memory management Neural networks Neurological diseases Rivers Seizure detection Seizures Seizures - diagnosis Signal Processing, Computer-Assisted Time complexity Weighted neighbour graph |
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Title | EEG Signal Epilepsy Detection with a Weighted Neighbour Graph Representation and Two-stream Graph-based Framework |
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