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DWT-Net: Seizure Detection System with Structured EEG Montage and Multiple Feature Extractor in Convolution Neural Network

مؤلف البحث
Z. Zhang, Y. Ren, N. Sabor, J. Pan, X. Luo, Y. Li, Y. Chen, and G. Wang
المشارك في البحث
تاريخ البحث
سنة البحث
2020
مجلة البحث
Journal of Sensors
الناشر
Hindawi
عدد البحث
2020
صفحات البحث
1-23
موقع البحث
https://doi.org/10.1155/2020/3083910
ملخص البحث

Automated seizure detection system based on electroencephalograms (EEG) is an interdisciplinary research problem between computer science and neuroscience. Epileptic seizure affects 1% of the worldwide population and can lead to severe long-term harm to safety and life quality. The automation of seizure detection can greatly improve the treatment of patients. In this work, we propose a neural network model to extract features from EEG signals with a method of arranging the dimension of feature extraction inspired by the traditional method of neurologists. A postprocessor is used to improve the output of the classifier. The result of our seizure detection system on the TUSZ dataset reaches a false alarm rate of 12 per 24 hours with a sensitivity of 59%, which approaches the performance of average human detector based on qEEG tools.

Research Rank
International Journal