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Discrimination and classification of focal and non-focal EEG signals using entropy-based features in the EMD-DWT domain

机译:使用EMD-DWT域中基于熵的特征对局灶性和非局灶性EEG信号进行区分和分类

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In this paper, a comprehensive analysis of focal and non-focal electroencephalography is carried out in the empirical mode decomposition and discrete wavelet transform domains. A number of spectral entropy-based features such as the Shannon entropy, log-energy entropy and Renyi entropy are calculated in the empirical mode decomposition and discrete wavelet transform domains and their efficacy in discriminating the focal and non-focal EEG signals is investigated. The electroencephalogram signals are obtained from a publicly available electroencephalography database that consists of 7500 signal pairs which contain over 80 h of electroencephalogram data collected from five epilepsy patients. It is shown that in the log-energy entropy when calculated in the combined empirical mode decomposition-discrete wavelet transform domain gives a better discrimination of these signals as compared to that of the other entropy measures that is the Shannon and quadratic Renyi entropy as well as to that obtained in empirical mode decomposition or discrete wavelet transform domain. When the log-energy entropy values are utilized as features in a K-nearest neighbor classifier to classify the signals, it provides 89.4% accuracy (with 90.7% sensitivity), which is higher than that of the state-of-the-art methods. Overall, the proposed classification method reports a significant improvement in terms of sensitivity, specificity and accuracy in comparison to the existing techniques. Besides, for being computationally fast, the proposed method has the potential for identifying the epileptogenic zones, which is an important step prior to resective surgery usually performed on patients with low responsiveness to anti-epileptic medications. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文在经验模态分解和离散小波变换域中对局灶性和非局灶性脑电图进行了综合分析。在经验模态分解和离散小波变换域中,计算了许多基于光谱熵的特征,如香农熵,对数能量熵和仁义熵,并研究了它们在区分局灶性和非局灶性脑电信号中的功效。脑电图信号是从一个公开的脑电图数据库中获得的,该数据库由7500个信号对组成,其中包含从五名癫痫患者那里收集的80个小时以上的脑电图数据。结果表明,在对数能量熵中,在组合经验模态分解-离散小波变换域中进行计算时,与其他熵度量值(香农和二次仁义熵)以及到在经验模式分解或离散小波变换域中获得的结果。当将对数能量熵值用作K最近邻分类器中的特征以对信号进行分类时,它提供89.4%的准确性(灵敏度为90.7%),这比最新方法的准确性更高。总体而言,与现有技术相比,拟议的分类方法报告了在敏感性,特异性和准确性方面的重大改进。此外,由于计算速度快,所提出的方法具有识别癫痫发生区的潜力,这是通常在对抗癫痫药反应低的患者进行切除手术之前的重要步骤。 (C)2016 Elsevier Ltd.保留所有权利。

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