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Epileptic focus localization using EEG based on discrete wavelet transform through full-level decomposition

机译:癫痫聚焦本地化使用eEG基于离散小波变换通过全级分解

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Electroencephalogram (EEG) is a gold standard in epilepsy diagnosis and has been widely studied for epilepsy-related signal classification, such as seizure detection or focus localization. In the past few years, discrete wavelet transform (DWT) has been widely used to analyze epileptic EEG. However, one practical question unanswered is the optimal levels of wavelet decomposition. Deeper DWT can yield a more detailed depiction of signals but it requires substantially more computational time. In this paper, we study this problem, using the most difficult epileptic EEG classification task, focus localization, as an example. The results show that decomposition level effects the localization accuracy more significantly than mother wavelets. For all wavelets, decomposition beyond level 7 improves accuracy limitedly and even decreases accuracy. We further study what are the most effective bands and features for focus localization. An interpretation of our results is that focal and non-focal epileptic EEGs differ the most at high frequencies of EEG rhythms. The best accuracy of epileptic focus localization achieved in this research is 83.07% using sym6 from levels 1 to 7.
机译:脑电图(EEG)是癫痫诊断中的黄金标准,已被广泛研究癫痫相关信号分类,如癫痫发作检测或聚焦定位。在过去几年中,离散小波变换(DWT)已被广泛用于分析癫痫脑电图。然而,一个未解决的实际问题是小波分解的最佳水平。更深的DWT可以产生更详细的信号描述,但它需要大量的计算时间。在本文中,我们使用最困难的癫痫脑电图分类任务,焦点本地化来研究这个问题,作为一个例子。结果表明,分解水平比母小波更显着地影响定位精度。对于所有小波来说,超出级别7的分解有限地提高了精度,甚至降低了精度。我们进一步研究了聚焦本地化最有效的乐队和特征是什么。对我们的结果的解释是,局灶性和非局灶性癫痫患者在EEG节奏的高频下差异。在本研究中实现的癫痫聚焦定位的最佳准确性是83.07%,使用1至7分。

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