Wang Yiping, Dai Yang, Liu Zimo, Guo Jinjie, Cao Gongpeng, Ouyang Mowei, Liu Da, Shan Yongzhi, Kang Guixia, Zhao Guoguang
Key Laboratory of Universal Wireless Communications, Ministry of Education, Beijing University of Posts and Telecommunications, No. 10 Xitucheng Road, Haidian District, Beijing 100876, China.
Department of Neurosurgery, Xuan Wu Hospital, Capital Medical University, No. 45 Changchun Street, Xicheng District, Beijing 100053, China.
Brain Sci. 2021 May 11;11(5):615. doi: 10.3390/brainsci11050615.
Surgical intervention or the control of drug-refractory epilepsy requires accurate analysis of invasive inspection intracranial EEG (iEEG) data. A multi-branch deep learning fusion model is proposed to identify epileptogenic signals from the epileptogenic area of the brain. The classical approach extracts multi-domain signal wave features to construct a time-series feature sequence and then abstracts it through the bi-directional long short-term memory attention machine (Bi-LSTM-AM) classifier. The deep learning approach uses raw time-series signals to build a one-dimensional convolutional neural network (1D-CNN) to achieve end-to-end deep feature extraction and signal detection. These two branches are integrated to obtain deep fusion features and results. Resampling is employed to split the imbalanced epileptogenic and non-epileptogenic samples into balanced subsets for clinical validation. The model is validated over two publicly available benchmark iEEG databases to verify its effectiveness on a private, large-scale, clinical stereo EEG database. The model achieves high sensitivity (97.78%), accuracy (97.60%), and specificity (97.42%) on the Bern-Barcelona database, surpassing the performance of existing state-of-the-art techniques. It is then demonstrated on a clinical dataset with an average intra-subject accuracy of 92.53% and cross-subject accuracy of 88.03%. The results suggest that the proposed method is a valuable and extremely robust approach to help researchers and clinicians develop an automated method to identify the source of iEEG signals.
手术干预或控制药物难治性癫痫需要对侵入性检查颅内脑电图(iEEG)数据进行准确分析。提出了一种多分支深度学习融合模型,用于从大脑的致痫区域识别致痫信号。经典方法提取多域信号波形特征以构建时间序列特征序列,然后通过双向长短期记忆注意力机器(Bi-LSTM-AM)分类器对其进行抽象。深度学习方法使用原始时间序列信号构建一维卷积神经网络(1D-CNN),以实现端到端的深度特征提取和信号检测。将这两个分支集成以获得深度融合特征和结果。采用重采样将不平衡的致痫和非致痫样本拆分为平衡子集进行临床验证。该模型在两个公开可用的基准iEEG数据库上进行了验证,以验证其在私有、大规模临床立体脑电图数据库上的有效性。该模型在伯尔尼-巴塞罗那数据库上实现了高灵敏度(97.78%)、准确率(97.60%)和特异性(97.42%),超过了现有最先进技术的性能。然后在一个临床数据集上进行了演示,受试者内平均准确率为92.53%,受试者间准确率为88.03%。结果表明,所提出的方法是一种有价值且极其稳健的方法,可帮助研究人员和临床医生开发一种自动方法来识别iEEG信号的来源。