Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2016 Oct;33(5):855-61.
This paper explores a methodology used to discriminate the electroencephalograph(EEG)signals of patients with vegetative state(VS)and those with minimally conscious state(MCS).The model was derived from the EEG data of 33 patients in a calling name stimulation paradigm.The preprocessing algorithm was applied to remove the noises in the EEG data.Two types of features including sample entropy and multiscale entropy were chosen.Multiple kernel support vector machine was investigated to perform the training and classification.The experimental results showed that the alpha rhythm features of EEG signals in severe disorders of consciousness were significant.We achieved the average classification accuracy of 88.24%.It was concluded that the proposed method for the EEG signal classification for VS and MCS patients was effective.The approach in this study may eventually lead to a reliable tool for identifying severe disorder states of consciousness quantitatively.It would also provide the auxiliary basis of clinical assessment for the consciousness disorder degree.
本文探讨了一种用于区分植物状态(VS)患者和最低意识状态(MCS)患者脑电图(EEG)信号的方法。该模型源自33例患者在叫名刺激范式下的EEG数据。采用预处理算法去除EEG数据中的噪声。选择了样本熵和多尺度熵两种特征。研究了多核支持向量机进行训练和分类。实验结果表明,意识严重障碍患者EEG信号的α节律特征具有显著性。我们实现了88.24%的平均分类准确率。得出结论,所提出的VS和MCS患者EEG信号分类方法是有效的。本研究中的方法最终可能会产生一种可靠的工具,用于定量识别意识严重障碍状态。它还将为意识障碍程度的临床评估提供辅助依据。