Tian Ziwei, Hu Bingliang, Si Yang, Wang Quan
Key Laboratory of Spectral Imaging Technology, Xi'an Institute of Optics and Precision Mechanics, Chinese Academy of Sciences, Xi'an 710119, China.
School of Optoelectronics, University of Chinese Academy of Sciences, Beijing 101408, China.
Brain Sci. 2023 May 18;13(5):820. doi: 10.3390/brainsci13050820.
(1) Background: Epilepsy is a neurological disorder that causes repeated seizures. Since electroencephalogram (EEG) patterns differ in different states (inter-ictal, pre-ictal, and ictal), a seizure can be detected and predicted by extracting various features. However, the brain connectivity network, a two-dimensional feature, is rarely studied. We aim to investigate its effectiveness for seizure detection and prediction. (2) Methods: Two time-window lengths, five frequency bands, and five connectivity measures were used to extract image-like features, which were fed into a support vector machine for the subject-specific model (SSM) and a convolutional neural networks meet transformers (CMT) classifier for the subject-independent model (SIM) and cross-subject model (CSM). Finally, feature selection and efficiency analyses were conducted. (3) Results: The classification results on the CHB-MIT dataset showed that a long window indicated better performance. The best detection accuracies of SSM, SIM, and CSM were 100.00, 99.98, and 99.27%, respectively. The highest prediction accuracies were 99.72, 99.38, and 86.17%, respectively. In addition, Pearson Correlation Coefficient and Phase Lock Value connectivity in the β and γ bands showed good performance and high efficiency. (4) Conclusions: The proposed brain connectivity features showed good reliability and practical value for automatic seizure detection and prediction, which expects to develop portable real-time monitoring equipment.
(1) 背景:癫痫是一种导致反复癫痫发作的神经系统疾病。由于脑电图(EEG)模式在不同状态(发作间期、发作前期和发作期)下有所不同,通过提取各种特征可以检测和预测癫痫发作。然而,作为二维特征的脑连接网络却很少被研究。我们旨在研究其在癫痫发作检测和预测方面的有效性。(2) 方法:使用两种时间窗长度、五个频段和五种连接性度量来提取类似图像的特征,将这些特征输入针对特定个体模型(SSM)的支持向量机以及针对独立个体模型(SIM)和跨个体模型(CSM)的卷积神经网络与变换器(CMT)分类器。最后进行特征选择和效率分析。(3) 结果:在CHB - MIT数据集上的分类结果表明,长窗口表现出更好的性能。SSM、SIM和CSM的最佳检测准确率分别为100.00%、99.98%和99.27%。最高预测准确率分别为99.72%、99.38%和86.17%。此外,β和γ频段的皮尔逊相关系数和锁相值连接性表现出良好的性能和高效率。(4) 结论:所提出的脑连接特征在自动癫痫发作检测和预测方面显示出良好的可靠性和实用价值,有望开发便携式实时监测设备。