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Analyzing epileptogenic brain connectivity networks using clinical EEG data

机译:使用临床EEG数据分析癫痫源性大脑连接网络

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Epileptogenic brain connectivity networks are altered compared to normal ones. Here, we have investigated the properties of epileptogenic networks by applying graph theoretical, statistical and machine learning approaches to the resting state electroencephalography (EEG) recordings obtained from 30 normal volunteers and 51 patients suffering from generalized epilepsy. In the case of epileptic patients, we have found that the brain networks behave like random networks. There is some loss in node connectivity. Hub nodes are more affected during epilepsy. Hence, the epileptogenic networks show less clustering coefficient than normal ones. In addition, we have identified 11 specific regions of brains and ten most significant connections among them as an epileptogenic signature by feature extraction. The ten most significant features are used to classify 81 sample data sets into two classes, i.e., epileptogenic and normal, with 79.01% accuracy. The highly probable eleven regions of human brain according to the positions of electrodes and connections among them may lead to a progress in the clinical treatment of epileptic patients.
机译:与正常人相比,癫痫性脑连通性网络发生了变化。在这里,我们通过将图理论,统计和机器学习方法应用于从30名正常志愿者和51名患有全身性癫痫的患者获得的静息状态脑电图(EEG)记录中,研究了癫痫发生网络的特性。对于癫痫患者,我们发现大脑网络的行为类似于随机网络。节点连接性有所损失。枢纽节点在癫痫发作期间受到的影响更大。因此,癫痫发生网络显示出比正常网络更小的聚类系数。此外,我们已经通过特征提取将11个特定的大脑区域和其中的10个最重要的连接确定为癫痫发作特征。十个最重要的特征用于将81个样本数据集分为两类,即癫痫发生和正常,准确度为79.01%。根据电极的位置和它们之间的连接,人脑极有可能的11个区域可能会导致癫痫患者的临床治疗取得进展。

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