Recognition of regions of stroke injury using multi-modal frequency features of electroencephalogram

Yan Jin, Jing Li, Zhuyao Fan, Xian Hua, Ting Wang, Shunlan Du, Xugang Xi, Lihua Li
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Abstract

Nowadays, increasingly studies are attempting to analyze strokes in advance. The identification of brain damage areas is essential for stroke rehabilitation.We proposed Electroencephalogram (EEG) multi-modal frequency features to classify the regions of stroke injury. The EEG signals were obtained from stroke patients and healthy subjects, who were divided into right-sided brain injury group, left-sided brain injury group, bilateral brain injury group, and healthy controls. First, the wavelet packet transform was used to perform a time-frequency analysis of the EEG signal and extracted a set of features (denoted as WPT features). Then, to explore the nonlinear phase coupling information of the EEG signal, phase-locked values (PLV) and partial directed correlations (PDC) were extracted from the brain network, and the brain network produced a second set of features noted as functional connectivity (FC) features. Furthermore, we fused the extracted multiple features and used the resnet50 convolutional neural network to classify the fused multi-modal (WPT + FC) features.The classification accuracy of our proposed methods was up to 99.75%.The proposed multi-modal frequency features can be used as a potential indicator to distinguish regions of brain injury in stroke patients, and are potentially useful for the optimization of decoding algorithms for brain-computer interfaces.
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利用脑电图的多模态频率特性识别中风损伤区域
如今,越来越多的研究试图提前分析脑卒中。我们提出了脑电图(EEG)多模态频率特性来对脑卒中损伤区域进行分类。我们提出了脑电图(EEG)多模态频率特征来对脑卒中损伤区域进行分类。脑电图信号来自脑卒中患者和健康受试者,他们被分为右侧脑损伤组、左侧脑损伤组、双侧脑损伤组和健康对照组。首先,利用小波包变换对脑电图信号进行时频分析,提取出一组特征(称为 WPT 特征)。然后,为了探索脑电信号的非线性相位耦合信息,我们从脑网络中提取了锁相值(PLV)和部分定向相关性(PDC),脑网络产生了第二组特征,称为功能连接(FC)特征。此外,我们还融合了提取的多种特征,并使用 resnet50 卷积神经网络对融合后的多模态(WPT + FC)特征进行分类。
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