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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Classification of focal and non focal EEG signals using empirical mode decomposition (EMD), phase space reconstruction (PSR) and neural networks
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Classification of focal and non focal EEG signals using empirical mode decomposition (EMD), phase space reconstruction (PSR) and neural networks

机译:使用经验模式分解(EMD),相空间重构(PSR)和神经网络的焦点和非焦点EEG信号的分类

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Electroencephalogram (EEG) signals can be used to identify the human brain in different disease conditions. Nonetheless, it is difficult to detect the subtle and vital differences in EEG simply by visual inspection because of the non-stationary nature of EEG signals. Specifically, in order to find the epileptogenic focus for medical treatment in the case of a partial epilepsy, an intelligent system that can accurately and automatically detect and discriminate focal and non focal groups of EEG signals is required. This will assist clinicians in locating epileptogenic foci before surgery. In this study we propose a novel method for classification between focal and non focal EEG signals based upon empirical mode decomposition (EMD), phase space reconstruction (PSR) and neural networks. First, EEG signals are decomposed into Intrinsic Mode Functions (IMFs) using EMD, and the third and fourth IMFs components are extracted which contain most of the EEG signals' energy and are considered to be the predominant IMFs. Second, phase space of the two IMFs componets is reconstructed, in which the properties associated with the EEG system dynamics are preserved. Three-dimensional (3D) PSR together with Euclidean distance has been utilized to derive features, which demonstrate significant difference in EEG system dynamics between the focal and non focal groups of EEG signals. Third, neural networks are then used as the classifier with feature vectors as the input to distinguish between focal and non focal EEG signals based on the difference of system dynamics between the two groups. Finally, experiments are carried out on the Bern Barcelona database to assess the effectiveness of the proposed method. By using the 10-fold cross-validation style, the achieved accuracy on the 50 pairs and 3750 pairs of EEG signals is reported to be 96% and 95.37%, respectively. Compared with other state-of-the-art methods, the results demonstrate superior performance and the proposed method can serve as a potential candidate for the automatic detection of focal EEG signals in the clinical application.
机译:脑电图(EEG)信号可用于鉴定不同疾病条件下的人脑。尽管如此,由于EEG信号的非静止性质,难以通过目视检查来检测EEG的微妙和重要差异。具体地,为了在部分癫痫的情况下找到用于医疗的癫痫焦点,需要一种可以准确和自动检测和区分EEG信号的焦点和非焦点组的智能系统。这将帮助临床医生在手术前定位癫痫病灶。在本研究中,我们提出了一种基于经验模式分解(EMD),相空间重建(PSR)和神经网络的焦点和非焦点EEG信号之间分类的新方法。首先,EEG信号用EMD分解为内在模式功能(IMF),并提取第三和第四IMFS组件,其包含大多数EEG信号的能量,并且被认为是主要的IMF。其次,重建了两个IMFS组件的相位空间,其中保留与EEG系统动态相关联的属性。三维(3D)PSR与欧几里德距离一起用于推导特征,其在EEG信号的焦点和非焦点组之间表现出EEG系统动态的显着差异。第三,然后用作具有特征向量的分类器作为分类器,作为分类基于两组之间的系统动态的差异区分焦点和非焦点EEG信号。最后,在Bern Barcelona数据库上进行实验,以评估所提出的方法的有效性。通过使用10倍的交叉验证风格,据报道,50对和3750对EEG信号的精度分别为96%和95.37%。与其他最先进的方法相比,结果证明了优异的性能,并且所提出的方法可以作为临床应用中自动检测焦点脑电图信号的潜在候选者。

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