A Statistical Summary Analysis of Window-Based Extracted Features for EEG Signal Classification

Mohammad Masum, H. Shahriar, Hisham M. Haddad, Wenzhan Song
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引用次数: 1

Abstract

Epilepsy is a common chronic neurological disorder affecting approximately 50 million people worldwide. The electroencephalogram (EEG) signal, which contains valuable information of electrical activity in the brain, is a standard neuroimaging tool used by clinicians to monitor and diagnose epilepsy. Visually inspecting the EEG signal is an expensive, tedious, and error-prone practice. Moreover, the result can be varied with different neurophysiologists for an identical reading. Thus, automatically classify different epileptic states with a high accuracy rate is an urgent requirement and has long been investigated. In this paper, we propose a novel framework to effectively classify epilepsy leveraging summary statistics analysis of window-based features of EEG signals. The framework first denoised the signals using power spectrum density analysis, replaced outliers with k-NN imputer, and then window level features extracted from statistical, temporal, and spectral domains. Basic summary statistics are then computed from the extracted features to feed into different Machine Learning (ML) classifiers. An optimal set of features are selected leveraging variance thresholding and dropping correlated features before feeding the features for classification. Finally, different ML classifiers such as Support Vector Machine, Decision Tree, Random Forest, and k-Nearest Neighbors classifiers are applied to the extracted features. The proposed framework applying the Random Forest classifier can significantly enhance the EEG signal classification performance compared to other existing state-of-the-art epilepsy classification methods in terms of accuracy, precision, recall, and F-beta score.
基于窗口特征提取的脑电信号分类统计汇总分析
癫痫是一种常见的慢性神经系统疾病,影响全世界约5000万人。脑电图(EEG)信号包含有价值的脑电活动信息,是临床医生用于监测和诊断癫痫的标准神经成像工具。目视检查脑电图信号是一种昂贵、乏味且容易出错的做法。此外,对于相同的读数,不同的神经生理学家可能会得出不同的结果。因此,对不同的癫痫状态进行高准确率的自动分类是一个迫切的需求,并已被长期研究。在本文中,我们提出了一种新的框架,利用脑电信号窗口特征的汇总统计分析来有效地分类癫痫。该框架首先使用功率谱密度分析对信号进行降噪,用k-NN imputer替换异常值,然后从统计域、时间域和谱域提取窗级特征。然后从提取的特征中计算基本的汇总统计数据,以提供给不同的机器学习(ML)分类器。在输入特征进行分类之前,利用方差阈值和删除相关特征来选择最优特征集。最后,将不同的ML分类器(如支持向量机、决策树、随机森林和k近邻分类器)应用于提取的特征。与现有的癫痫分类方法相比,采用随机森林分类器的框架在准确率、精密度、查全率和F-beta分数方面显著提高了脑电信号的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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