Recently Transformer and Convolution neural network (CNN) based models have shown promising results in EEG signal processing. Transformer models can capture the global dependencies in EEG signals through a self-attention mechanism, while CNN models can capture local features such as sawtooth waves. In this work, we propose an end-to-end neural epilepsy detection model, EENED, that combines CNN and Transformer. Specifically, by introducing the convolution module into the Transformer encoder, EENED can learn the time-dependent relationship of the patient’s EEG signal features and notice local EEG abnormal mutations closely related to epilepsy, such as the appearance of spikes and the sprinkling of sharp and slow waves. Our proposed framework combines the ability of Transformer and CNN to capture different scale features of EEG signals and holds promise for improving the accuracy and reliability of epilepsy detection. Our source code will be released soon on GitHub.
EENED: End-to-End Neural Epilepsy Detection based on Convolutional Transformer
Chenyu Liu,Xin-qiu Zhou,Yang Liu
Published 2023 in Conference on Algebraic Informatics
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- Publication year
2023
- Venue
Conference on Algebraic Informatics
- Publication date
2023-05-17
- Fields of study
Medicine, Computer Science, Engineering
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