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Detection of epileptic dysfunctions in EEG signals using Hilbert vibration decomposition

机译:使用希尔伯特振动分解检测脑电信号中的癫痫功能障碍

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摘要

AbstractEpilepsy is a neurological brain dysfunction that is manifested by recrudescent seizures. Due to high temporal resolution, brain activities recorded by electroencephalography (EEG) are commonly used for localization of seizures and identification of epileptic dysfunctions. However, it is often time consuming and challenging to detect EEG seizures using conventional Fourier-based methods and manual interpretation due to nonlinear and nonstationary dynamics of EEG. In this paper, we propose a new framework based on Hilbert vibration decomposition (HVD) for discriminating normal and epileptic EEG recordings. HVD exploits Hilbert transform presentation of instantaneous frequency and extracts monocomponents that have distinctive time-varying amplitudes and instantaneous frequencies from nonstationary signals. The proposed method employs estimated instantaneous frequencies of largest energy components as features given to least squares support vector machine (LS-SVM) for recognizing epileptic seizures and is shown to be appealing for real time physiological signal processing applications due to its reduced computational complexity. Test results on a benchmark EEG data set achieved 97.66% classification accuracy and area of 0.9914 under the receiver operating characteristics (ROC) curve using the delta, theta and alpha rhythms.
机译: 摘要 癫痫病是一种神经性脑功能障碍,表现为复发性癫痫发作。由于高时间分辨率,通过脑电图(EEG)记录的大脑活动通常用于癫痫发作的定位和癫痫功能障碍的鉴定。然而,由于脑电图的非线性和非平稳动态,使用传统的基于傅立叶的方法和人工解释来检测脑电图癫痫发作通常是耗时且具有挑战性的。在本文中,我们提出了一种基于Hilbert振动分解(HVD)的新框架,用于区分正常和癫痫性脑电图记录。 HVD利用瞬时频率的希尔伯特变换表示法,并从非平稳信号中提取具有独特的时变幅度和瞬时频率的单分量。所提出的方法采用最大能量分量的估计瞬时频率作为最小二乘支持向量机(LS-SVM)的特征,以识别癫痫发作,并且由于其降低的计算复杂度,因此对实时生理信号处理应用具有吸引力。在基准EEG数据集上的测试结果使用增量,θ和阿尔法节奏在接收器工作特性(ROC)曲线下达到了97.66%的分类准确度和0.9914的面积。

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