IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2022)

TIE-EEGNet: Temporal Information Enhanced EEGNet for Seizure Subtype Classification

  • Ruimin Peng,
  • Changming Zhao,
  • Jun Jiang,
  • Guangtao Kuang,
  • Yuqi Cui,
  • Yifan Xu,
  • Hao Du,
  • Jianbo Shao,
  • Dongrui Wu

DOI
https://doi.org/10.1109/TNSRE.2022.3204540
Journal volume & issue
Vol. 30
pp. 2567 – 2576

Abstract

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Electroencephalogram (EEG) based seizure subtype classification is very important in clinical diagnostics. However, manual seizure subtype classification is expensive and time-consuming, whereas automatic classification usually needs a large number of labeled samples for model training. This paper proposes an EEGNet-based slim deep neural network, which relieves the labeled data requirement in EEG-based seizure subtype classification. A temporal information enhancement module with sinusoidal encoding is used to augment the first convolution layer of EEGNet. A training strategy for automatic hyper-parameter selection is also proposed. Experiments on the public TUSZ dataset and our own CHSZ dataset with infants and children demonstrated that our proposed TIE-EEGNet outperformed several traditional and deep learning models in cross-subject seizure subtype classification. Additionally, it also achieved the best performance in a challenging transfer learning scenario. Both our code and the CHSZ dataset are publicized.

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