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A review of feature extraction and performance evaluation in epileptic seizure detection using EEG

机译:脑电图癫痫发作特征提取与性能评价研究进展

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摘要

Since the manual detection of electrographic seizures in continuous electroencephalogram (EEG) monitoring is very time-consuming and requires a trained expert, attempts to develop automatic seizure detection are diverse and ongoing. Machine learning approaches are intensely being applied to this problem due to their ability to classify seizure conditions from a large amount of data, and provide pre-screened results for neurologists. Several features, data transformations, and classifiers have been explored to analyze and classify seizures via EEG signals. In the literature, some jointly-applied features used in the classification may have shared similar contributions, making them redundant in the learning process. Therefore, this paper aims to comprehensively summarize feature descriptions and their interpretations in characterizing epileptic seizures using EEG signals, as well as to review classification performance metrics. To provide meaningful information of feature selection, we conducted an experiment to examine the quality of each feature independently. The Bayesian error and non-parametric probability distribution estimation were employed to determine the significance of the individual features. Moreover, a redundancy analysis using a correlation-based feature selection was applied. The results showed that the following features - variance, energy, nonlinear energy, and Shannon entropy computed on a raw EEG signal, as well as variance, energy, kurtosis, and line length calculated on wavelet coefficients - were able to significantly capture the seizures. When compared with a baseline method of classifying all epochs as normal, an improvement of 4.77-13.51% in the Bayesian error was obtained. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于在连续脑电图(EEG)监视中手动检测电图癫痫发作非常耗时并且需要训练有素的专家,因此开发自动癫痫发作检测的尝试多种多样且仍在进行中。由于机器学习方法能够从大量数据中对癫痫发作状况进行分类,并为神经病学家提供预筛查的结果,因此正被广泛应用于此问题。已经探索了几种功能,数据转换和分类器,以通过EEG信号对癫痫发作进行分析和分类。在文献中,分类中使用的一些共同应用的功能可能具有相似的贡献,从而使它们在学习过程中变得多余。因此,本文旨在全面总结使用脑电信号表征癫痫发作的特征描述及其解释,并复习分类性能指标。为了提供有意义的特征选择信息,我们进行了一项实验,以独立检查每个特征的质量。贝叶斯误差和非参数概率分布估计被用来确定各个特征的重要性。此外,应用了基于相关特征选择的冗余分析。结果表明,以下特征-在原始EEG信号上计算出的方差,能量,非线性能量和香农熵,以及在小波系数上计算出的方差,能量,峰度和线长-能够显着捕获癫痫发作。与将所有时期分类为正常的基线方法相比,贝叶斯误差提高了4.77-13.51%。 (C)2019 Elsevier Ltd.保留所有权利。

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