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A Novel Feature Extraction Method for Epilepsy EEG Signals Based on Robust Generalized Synchrony Analysis

机译:基于鲁棒广义同步分析的癫痫脑电图信号的新特征提取方法

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A feature extraction method for Epilepsy diagnosis is proposed in this paper, which can be incorporated in automatic/semi-automatic epilepsy diagnosis systems to improve diagnosis efficiency from multi-channel Electroencephalogram signals. This method calculates the Robust Generalized Synchrony between pairs of Electroencephalogram channels in the first step. Then six character parameters are extracted from the Robust Generalized Synchrony values for the whole brain and the sub-brain regions. A set of Electroencephalogram data including 20 normal objects and 20 epileptic patients in interictal states were used to test the proposed method The results demonstrate that these features are effective to differentiate between epilepsy patients and the normal objects with the p-values smaller than 0.01.
机译:本文提出了一种特征提取方法,用于癫痫诊断,可在自动/半自动癫痫诊断系统中掺入,以改善来自多通道脑电图信号的诊断效率。该方法在第一步中计算轴上脑电图信道之间的鲁棒广义同步。然后从整个大脑和子脑地区的强大的广义同步值中提取六个字符参数。包括20个正常物体和20例嵌入状态的癫痫患者的一组脑电图数据用于测试所提出的方法,结果表明这些特征有效地区分癫痫患者和正常物体,其p值小于0.01。

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