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Automatic epilepsy detection using wavelet-based nonlinear analysis and optimized SVM

机译:使用基于小波的非线性分析和优化的SVM进行癫痫自动检测

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Aiming at the problems of low accuracy, poor universality and functional singleness for seizure detection, an effective approach using wavelet-based non-linear analysis and genetic algorithm optimized support vector machine (GA-SVM) is proposed to deal with five challenging classification problems in this study. Instead of the traditional discrete wavelet transform (DWT), we attempt to explore the ability of double-density discrete wavelet transform (DD-DWT) to decompose the original EEG into specific sub-bands. The Hurst exponent (HE) and fuzzy entropy (FuzzyEn) are extracted as input features and then fed into two classifiers. On using these ranking non-linear features, the GA-SVM configured with fewer features is found to achieve the prominent classification performance for various combinations such as AB-CD-E, A-D-E, ABCD-E, C-E and D-E, achieving accuracies of 99.36%, 99.60%, 99.40%, 100% and 100%, respectively. The results have indicated that our scheme is not only appropriate in solving problems with multiple classes but also of lower complexity and better expansibility. These characteristics would make this method become an attractive alternative for actual clinical diagnosis. (C) 2016 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier Sp. z o.o. All rights reserved.
机译:针对癫痫发作检测的准确性低,通用性差和功能单一性问题,提出了一种基于小波非线性分析和遗传算法优化支持向量机(GA-SVM)的有效方法来解决癫痫发作中的五个挑战性分类问题。这项研究。代替传统的离散小波变换(DWT),我们尝试探索双密度离散小波变换(DD-DWT)将原始EEG分解为特定子带的能力。提取赫斯特指数(HE)和模糊熵(FuzzyEn)作为输入特征,然后将其输入两个分类器中。通过使用这些排名的非线性特征,发现配置较少特征的GA-SVM可以对AB-CD-E,ADE,ABCD-E,CE​​和DE等各种组合实现出色的分类性能,从而达到99.36的精度%,99.60%,99.40%,100%和100%。结果表明,我们的方案不仅适用于解决多类问题,而且具有较低的复杂度和较好的可扩展性。这些特征将使该方法成为实际临床诊断的有吸引力的替代方法。 (C)2016年波兰科学院纳勒奇生物cybernetics和生物医学工程研究所。由Elsevier Sp。发行。动物园。版权所有。

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