Zhang Ling, Wang Xiaolu, Jiang Jun, Xiao Naian, Guo Jiayang, Zhuang Kailong, Li Ling, Yu Houqiang, Wu Tong, Zheng Ming, Chen Duo
School of Innovation and Entrepreneurship, Hubei University of Science and Technology, Xianning, China.
School of Biomedical Engineering and Medical Imaging, Xianning Medical College, Hubei University of Science and Technology, Xianning, China.
Front Mol Biosci. 2023 Apr 7;10:1146606. doi: 10.3389/fmolb.2023.1146606. eCollection 2023.
Clinical diagnosis of epilepsy significantly relies on identifying interictal epileptiform discharge (IED) in electroencephalogram (EEG). IED is generally interpreted manually, and the related process is very time-consuming. Meanwhile, the process is expert-biased, which can easily lead to missed diagnosis and misdiagnosis. In recent years, with the development of deep learning, related algorithms have been used in automatic EEG analysis, but there are still few attempts in IED detection. This study uses the currently most popular convolutional neural network (CNN) framework for EEG analysis for automatic IED detection. The research topic is transferred into a 4-labels classification problem. The algorithm is validated on the long-term EEG of 11 pediatric patients with epilepsy. The computational results confirm that the CNN-based model can obtain high classification accuracy, up to 87%. The study may provide a reference for the future application of deep learning in automatic IED detection.
癫痫的临床诊断在很大程度上依赖于在脑电图(EEG)中识别发作间期癫痫样放电(IED)。IED通常由人工解读,相关过程非常耗时。同时,该过程存在专家偏见,很容易导致漏诊和误诊。近年来,随着深度学习的发展,相关算法已被用于EEG自动分析,但在IED检测方面的尝试仍然很少。本研究使用当前最流行的卷积神经网络(CNN)框架对EEG进行分析,以实现IED的自动检测。该研究课题被转化为一个4标签分类问题。该算法在11例小儿癫痫患者的长期EEG上进行了验证。计算结果证实,基于CNN的模型可以获得高达87%的高分类准确率。该研究可能为深度学习在IED自动检测中的未来应用提供参考。