基于支持向量机和希尔伯特振动分解的单通道脑电图癫痫识别

A. Z. Karim, Shikder Shafiul Bashar, Md. Sazal Miah, Md. Abdullah Al Mahmud, M. A. Al Amin
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引用次数: 3

摘要

癫痫是一种众所周知的神经功能障碍,由反复发作引起。由于时间分辨率较高,脑电图(EEG)测量的脑活动通常用于限制癫痫发作和区分癫痫功能障碍的证据。由于脑电图的非线性和非平稳特性,传统的基于傅里叶的脑电图检测方法和人工解释方法既繁琐又具有挑战性。在我们的研究中,首先,我们做了稳健的统计分析来检测和分类癫痫发作和非癫痫发作。但是,结果不够准确,不能有效地检测和分类癫痫发作。针对普通脑电图和癫痫脑电图的识别问题,提出了一种基于Hilbert振动分解(HVD)的新算法。HVD完成了瞬时频率的希尔伯特变换演示,并从非平稳信号中获得具有特定时间差幅度和瞬时频率的单频分量。本研究使用最小二乘支持向量机(LS-SVM)来识别癫痫发作。此外,由于其较低的数学复杂度,在实时生理信号处理应用中备受关注。在一个基准脑电数据集上进行测试,分类准确率达到97.66%。此外,利用delta, theta和alpha节律的接受者工作特征(ROC)曲线下的面积为0.9914。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of seizure from single channel EEG using Support Vector Machine & Hilbert Vibration Decomposition
A well-known neurological brain dysfunction named epilepsy which is caused by recrudescent seizures. Because of higher temporal resolution, brain activities measured by electroencephalography (EEG) are usually utilized for confinement of seizures and distinguishing proof of epileptic dysfunctions. Detection of EEG seizures by using traditional Fourier-based methods and manual interpretation is tedious and challenging because of non-linear and non-stationary dynamics of EEG. In our research, at first, we have done robust statistical analysis to detect and classify the seizure and nonseizure. But, the result was not accurate enough to detect and classify seizure effectively. For identification of ordinary and epileptic EEG measurement, we approached a novel algorithm based on Hilbert vibration decomposition (HVD). HVD accomplishes Hilbert transform demonstration of instantaneous frequency and bring outs mono components that have particular time-differing amplitudes and instantaneous frequencies from non-stationary signals. Least squares support vector machine (LS-SVM) is used for identifying epileptic seizures in this research. In addition, it is attracting for real-time physiological signal processing applications because of its lower mathematical complexity. The classification accuracy of 97.66% was attained on a test, which was conducted on a benchmark EEG data set. In addition, area of 0.9914 under the receiver operating characteristics (ROC) curve utilizing the delta, theta & alpha rhythms.
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