College of Automation and Electronic Engineering, Qingdao University of Science and Technology Qingdao, 266061, China.
College of Automation and Electronic Engineering, Qingdao University of Science and Technology Qingdao, 266061, China.
Neural Netw. 2024 Apr;172:106119. doi: 10.1016/j.neunet.2024.106119. Epub 2024 Jan 9.
To decrease the interference in the process of epileptic feature extraction caused by insufficient detection capability in partial channels of focal epilepsy, this paper proposes a novel epilepsy detection method based on dynamic electroencephalogram (EEG) channel screening. This method not only extracts more effective epilepsy features but also finds common features among different epilepsy subjects, providing an effective approach and theoretical support for across-subject epilepsy detection in clinical scenarios. Firstly, we use the Refine Composite Multiscale Dispersion Entropy (RCMDE) to measure the complexity of EEG signals between normal and seizure states and realize the dynamic EEG channel screening among different subjects, which can enhance the capability of feature extraction and the robustness of epilepsy detection. Subsequently, we discover common epilepsy features in 3-15 Hz among different subjects by the screened EEG channels. By this finding, we construct the Residual Convolutional Long Short-Term Memory (ResCon-LSTM) neural network to accomplish across-subject epilepsy detection. The experiment results on the CHB-MIT dataset indicate that the highest accuracy of epilepsy detection in the single-subject experiment is 98.523 %, improved by 5.298 % compared with non-channel screening. In the across-subject experiment, the average accuracy is 96.596 %. Therefore, this method could be effectively applied to different subjects by dynamically screening optimal channels and keep a good detection performance.
为了降低局灶性癫痫部分通道检测能力不足对癫痫特征提取过程的干扰,本文提出了一种基于动态脑电图(EEG)通道筛选的新型癫痫检测方法。该方法不仅可以提取更有效的癫痫特征,而且可以找到不同癫痫患者之间的共同特征,为临床场景中的跨患者癫痫检测提供了有效的方法和理论支持。首先,我们使用改进的复合多尺度散布熵(RCMDE)来测量正常和发作状态下 EEG 信号的复杂度,并在不同的受试者之间实现动态 EEG 通道筛选,从而增强特征提取能力和癫痫检测的鲁棒性。随后,我们通过筛选的 EEG 通道在 3-15 Hz 频段内发现不同受试者的共同癫痫特征。通过这一发现,我们构建了残差卷积长短期记忆(ResCon-LSTM)神经网络来完成跨患者癫痫检测。在 CHB-MIT 数据集上的实验结果表明,在单患者实验中,癫痫检测的最高准确率为 98.523%,比非通道筛选提高了 5.298%。在跨患者实验中,平均准确率为 96.596%。因此,该方法通过动态筛选最佳通道可以有效地应用于不同的患者,并保持良好的检测性能。