Xu Gaowei, Ren Tianhe, Chen Yu, Che Wenliang
Department of Cardiology, Shanghai Tenth People's Hospital, Tongji University School of Medicine, Shanghai, China.
School of Informatics, Xiamen University, Xiamen, China.
Front Neurosci. 2020 Dec 10;14:578126. doi: 10.3389/fnins.2020.578126. eCollection 2020.
Frequent epileptic seizures cause damage to the human brain, resulting in memory impairment, mental decline, and so on. Therefore, it is important to detect epileptic seizures and provide medical treatment in a timely manner. Currently, medical experts recognize epileptic seizure activity through the visual inspection of electroencephalographic (EEG) signal recordings of patients based on their experience, which takes much time and effort. In view of this, this paper proposes a one-dimensional convolutional neural network-long short-term memory (1D CNN-LSTM) model for automatic recognition of epileptic seizures through EEG signal analysis. Firstly, the raw EEG signal data are pre-processed and normalized. Then, a 1D convolutional neural network (CNN) is designed to effectively extract the features of the normalized EEG sequence data. In addition, the extracted features are then processed by the LSTM layers in order to further extract the temporal features. After that, the output features are fed into several fully connected layers for final epileptic seizure recognition. The performance of the proposed 1D CNN-LSTM model is verified on the public UCI epileptic seizure recognition data set. Experiments results show that the proposed method achieves high recognition accuracies of 99.39% and 82.00% on the binary and five-class epileptic seizure recognition tasks, respectively. Comparing results with traditional machine learning methods including k-nearest neighbors, support vector machines, and decision trees, other deep learning methods including standard deep neural network and CNN further verify the superiority of the proposed method.
频繁的癫痫发作会对人脑造成损害,导致记忆障碍、智力衰退等。因此,检测癫痫发作并及时进行治疗非常重要。目前,医学专家根据经验通过目视检查患者的脑电图(EEG)信号记录来识别癫痫发作活动,这需要花费大量时间和精力。鉴于此,本文提出了一种一维卷积神经网络-长短期记忆(1D CNN-LSTM)模型,用于通过EEG信号分析自动识别癫痫发作。首先,对原始EEG信号数据进行预处理和归一化。然后,设计一个一维卷积神经网络(CNN)来有效提取归一化EEG序列数据的特征。此外,提取的特征随后由LSTM层进行处理,以进一步提取时间特征。之后,将输出特征输入到几个全连接层进行最终的癫痫发作识别。在公开的UCI癫痫发作识别数据集上验证了所提出的1D CNN-LSTM模型的性能。实验结果表明,该方法在二分类和五分类癫痫发作识别任务上分别达到了99.39%和82.00%的高识别准确率。与包括k近邻、支持向量机和决策树在内的传统机器学习方法以及包括标准深度神经网络和CNN在内的其他深度学习方法的比较结果进一步验证了该方法的优越性。