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首页> 外文期刊>Science, Measurement & Technology, IET >Multifractal detrended fluctuation analysis based novel feature extraction technique for automated detection of focal and non-focal electroencephalogram signals
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Multifractal detrended fluctuation analysis based novel feature extraction technique for automated detection of focal and non-focal electroencephalogram signals

机译:基于多重分形趋势分析的新颖特征提取技术可自动检测局灶性和非局灶性脑电图信号显示[AQ ID = Q1]>

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摘要

In this contribution, a method to segregate electroencephalogram (EEG) signals into focal (F) and non-focal (NF) groups has been proposed, employing a novel multifractal detrended fluctuation analysis (MFDFA)-based feature sets. Manifestations in the fractal behaviour occurring due to the subtle morphological changes in F and NF EEG signals, can serve as an essential presurgical intervention for automated detection of structural epileptogenic area within the human brain. Considering the above-said fact, in the present approach, EEG signals acquired from a publicly available database, are analysed using multifractal parameters to investigate the complex, non-linear and stochastic fluctuations. Based on MFDFA of EEG signals, four statistically significant, new set of features have been extracted, which are eventually being used as inputs to a support vector machines and k-nearest-neighbour classifiers for the purpose of classification of EEG signals. It has been observed that the proposed MFDFA aided feature extraction method delivers quite commensurable and even better results in discriminating F and NF EEG signals, compared with the existing methods studied on the similar database.
机译:在此贡献中,已经提出了一种使用基于新颖的多分形去趋势波动分析(MFDFA)的特征集将脑电图(EEG)信号分离为焦点(F)和非焦点(NF)组的方法。由于F和NF EEG信号的细微形态变化而引起的分形行为表现,可作为自动检测人脑内结构性癫痫发生区域的必要的术前干预。考虑到上述事实,在本方法中,使用多重分形参数分析从公共可用数据库中获取的脑电信号,以研究复杂的,非线性的和随机的波动。基于脑电信号的MFDFA,提取了四个具有统计意义的重要新特征集,这些特征最终用作支持向量机和 k -近邻分类器的输入,以进行分类脑电信号。已经观察到,与在类似数据库中研究的现有方法相比,所提出的MFDFA辅助特征提取方法在区分F和NF EEG信号方面提供了相当可比的甚至更好的结果。

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