Dang Ruochen, Yu Tao, Hu Bingliang, Wang Yuqi, Pan Zhibin, Luo Rong, Wang Quan
Key Laboratory of Spectral Imaging Technology, Xi'an Institute of Optics and Precision Mechanics (XIOPM), Chinese Academy of Sciences, Xi'an, China.
School of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an, China.
Front Neurosci. 2023 Aug 28;17:1223077. doi: 10.3389/fnins.2023.1223077. eCollection 2023.
Encephalitis is a disease typically caused by viral infections or autoimmunity. The most common type of autoimmune encephalitis is anti-N-methyl-D-aspartate receptor (NMDAR) antibody-mediated, known as anti-NMDA receptor encephalitis, which is a rare disease. Specific EEG patterns, including "extreme delta brush" (EDB), have been reported in patients with anti-NMDA receptor encephalitis. The aim of this study was to develop an intelligent diagnostic model for encephalitis based on EEG signals. A total of 131 Participants were selected based on reasonable inclusion criteria and divided into three groups: health control (35 participants), viral encephalitis (58 participants), and anti NMDAR receptor encephalitis (55 participants). Due to the low prevalence of anti-NMDAR receptor encephalitis, it took several years to collect participants' EEG signals while they were in an awake state. EEG signals were collected and analyzed following the international 10-20 system layout. We proposed a model called Temporal Transformer-Spatial Graph Convolutional Network (TT-SGCN), which consists of a Preprocess Module, a Temporal Transformer Module (TTM), and a Spatial Graph Convolutional Module (SGCM). The raw EEG signal was preprocessed according to traditional procedures, including filtering, averaging, and Independent Component Analysis (ICA) method. The EEG signal was then segmented and transformed using short-time Fourier transform (STFT) to produce concatenated power density (CPD) maps, which served as inputs for the proposed model. TTM extracted the time-frequency features of each channel, and SGCM fused these features using graph convolutional methods based on the location of electrodes. The model was evaluated in two experiments: classification of the three groups and pairwise classification among the three groups. The model was trained using two stages and achieved the performance, with an accuracy of 82.23%, recall of 80.75%, precision of 82.51%, and F1 score of 81.23% in the classification of the three groups. The proposed model has the potential to become an intelligent auxiliary diagnostic tool for encephalitis.
脑炎是一种通常由病毒感染或自身免疫引起的疾病。最常见的自身免疫性脑炎类型是抗N-甲基-D-天冬氨酸受体(NMDAR)抗体介导的,称为抗NMDA受体脑炎,这是一种罕见疾病。抗NMDA受体脑炎患者中已报告有特定的脑电图模式,包括“极端δ刷”(EDB)。本研究的目的是基于脑电图信号开发一种脑炎智能诊断模型。根据合理的纳入标准共选择了131名参与者,并将其分为三组:健康对照组(35名参与者)、病毒性脑炎组(58名参与者)和抗NMDAR受体脑炎组(55名参与者)。由于抗NMDAR受体脑炎的患病率较低,花了数年时间收集参与者清醒状态下的脑电图信号。按照国际10-20系统布局收集并分析脑电图信号。我们提出了一种名为时间变压器-空间图卷积网络(TT-SGCN)的模型,它由一个预处理模块、一个时间变压器模块(TTM)和一个空间图卷积模块(SGCM)组成。原始脑电图信号按照传统程序进行预处理,包括滤波、平均和独立成分分析(ICA)方法。然后使用短时傅里叶变换(STFT)对脑电图信号进行分割和变换,以生成级联功率密度(CPD)图,这些图作为所提出模型的输入。TTM提取每个通道的时频特征,SGCM基于电极位置使用图卷积方法融合这些特征。该模型在两个实验中进行了评估:三组分类和三组之间的两两分类。该模型分两个阶段进行训练,并取得了相应性能,在三组分类中准确率为82.23%,召回率为80.75%,精确率为82.51%,F1分数为81.23%。所提出的模型有潜力成为脑炎的智能辅助诊断工具。