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Ictal EEG classification based on amplitude and frequency contours of IMFs

机译:基于IMF的幅度和频率轮廓的ICTAL eEG分类

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Electroencephalogram (EEG) signal serves is a powerful tool in epilepsy detection. This study decomposes intrinsic mode functions (IMPs) into amplitude envelope and frequency functions on a time-scale basis using the analytic function of Hilbert transform. IMFs results from the empirical mode decomposition of EEG signals. Features such as energy and entropy parameters were calculated from the amplitude contour of each IMF. Other features, such as interquartile range, mean absolute deviation and standard deviation are also computed for their instantaneous frequencies. Discriminative features were extracted using a large database to classify healthy and ictal EEG signals. Normal EEG segments were differentiated from the seizure attack in individual IMF features, multiple features with individual IMF, and individual features with multiple IMFs. Discriminating capability of three Cases was tested. (i) Artificial neural network and (ii) adaptive neuro-fuzzy inference system classification were used to identify EEG segments with seizure attacks. ANOVA was used to analyze statistical performance. Energy and entropy-based features of instantaneous amplitude and standard deviation of instantaneous frequency of IMF2 and IMF1 have 100% accuracy, sensitivity, and specificity. Good performance with a single feature that represents information of the whole data was obtained. The result involved less complicated computation than other time frequency analysis techniques. (C) 2017 Nalecz Institute of Biocybemetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:脑电图(EEG)信号服务是癫痫检测中的强大工具。本研究使用Hilbert变换的分析功能将内在模式功能(IMPS)分解为幅度信封和频率函数。 IMFS来自EEG信号的经验模式分解。从每个IMF的幅度轮廓计算诸如能量和熵参数等特征。其他特征,例如狭隘的范围,平均绝对偏差和标准偏差也被计算出瞬时频率。使用大型数据库提取差异特征以对健康和ICTAL EEG信号进行分类。正常的EEG段与个人IMF功能中的癫痫发作,多个功能的癫痫发作,具有多个IMF的单个功能。测试了三种病例的辨别能力。 (i)人工神经网络和(ii)自适应神经模糊推理系统分类用于识别癫痫发作的脑电图段。 ANOVA用于分析统计表现。 IMF2和IMF1瞬时频率瞬时幅度和标准偏差的能量和基于熵的特征具有100%的精度,灵敏度和特异性。使用表示整个数据信息的单个功能的良好性能。结果涉及比其他时间频率分析技术更易于复杂的计算。 (c)2017年纳雷斯州博士科学院生物群和生物医学工程研究所。 elsevier b.v出版。保留所有权利。

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