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Classification of focal EEG signals using FBSE based flexible time-frequency coverage wavelet transform

机译:基于FBSE的灵活时间频率覆盖小波变换分类焦点eEG信号

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摘要

Epilepsy is a neurological disorder which involves the whole range of age from child to elderly people. Focal (FO) epilepsy is a kind of drug resistance epilepsy in which neurosurgical resection provides an opportunity for this life-threatening problem. A most common technique used to identify FO epileptic brain area has visually classified the electroencephalogram (EEG) signals related to FO epilepsy. These EEG signals can also be classified with an automated method based on advanced signal processing techniques to overcome the errors produced during visual observation of EEG signals. In this research work, an automated FO EEG signals classification method has been developed with the help of Fourier-Bessel series expansion (FBSE) based flexible time-frequency coverage wavelet transform. In this method, the features such as mixture correntropy (MC) and exponential energy (EE) have been involved for the classification of FO EEG signals. The classification task has been performed involving 10-fold cross-validation with least-squares support vector machine (LS-SVM) classifier. The developed automated method has also been optimized with probability (p)-value based feature ranking method. The achieved highest classification performance parameters like as accuracy (ACC), sensitivity (SEN), and specificity (SPE) are 95.85%, 95.47%, and 96.24% by this developed automated method. The developed automated method has also been tested at different signal to noise ratio (SNR) levels to check the robustness against noisy environments.
机译:癫痫是一种神经系统疾病,涉及从儿童到老年人的整个年龄。焦平(FO)癫痫是一种毒性抗癫痫,其中神经外科切除为这一危及生命的问题提供了机会。用于鉴定癫痫脑面积的最常见的技术在视觉上分为与癫痫相关的脑电图(EEG)信号。这些EEG信号也可以通过基于高级信号处理技术的自动化方法进行分类,以克服EEG信号的视觉观察期间产生的错误。在这项研究工作中,借助于傅立叶贝塞尔系列扩展(FBSE)的灵活的时频覆盖小波变换,开发了一种自动化的FO EEG信号分类方法。在该方法中,诸如混合控制(MC)和指数能量(EE)的特征已经参与了FO EEG信号的分类。已经执行了分类任务,涉及用最小二乘支持向量机(LS-SVM)分类器的10倍交叉验证。开发的自动化方法也用概率(P)基于基于特征排序方法进行了优化。通过这一开发的自动化方法,实现了作为精度(ACC),灵敏度(SEN),灵敏度(SEN)和特异性(SPE)的最高分类性能参数,敏感性(SEN)和特异性(SPE)是95.85%,95.47%和96.24%。开发的自动化方法也在不同的信号中测试到噪声比(SNR)水平,以检查对嘈杂环境的鲁棒性。

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