IEEE Trans Neural Syst Rehabil Eng. 2022;30:2567-2576. doi: 10.1109/TNSRE.2022.3204540. Epub 2022 Sep 15.
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.
基于脑电图(EEG)的癫痫发作亚型分类在临床诊断中非常重要。然而,手动癫痫发作亚型分类既昂贵又耗时,而自动分类通常需要大量的标记样本进行模型训练。本文提出了一种基于 EEGNet 的精简深度神经网络,它减轻了基于 EEG 的癫痫发作亚型分类中对标记数据的需求。使用具有正弦编码的时间信息增强模块来增强 EEGNet 的第一层卷积。还提出了一种自动超参数选择的训练策略。在公共 TUSZ 数据集和我们自己的包含婴儿和儿童的 CHSZ 数据集上的实验表明,我们提出的 TIE-EEGNet 在跨主题癫痫发作亚型分类方面优于几种传统和深度学习模型。此外,它在具有挑战性的迁移学习场景中也取得了最佳性能。我们的代码和 CHSZ 数据集都是公开的。