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Classification of epilepsy seizure phase using interval Type-2 fuzzy support vector machines

机译:使用区间2型模糊支持向量机对癫痫发作期进行分类

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摘要

An interval type-2 fuzzy support vector machine (IT2FSVM) is proposed to solve a classification problem which aims to classify three epileptic seizure phases (seizure-free, pre-seizure and seizure) from the electroencephalogram (EEG) captured from patients with neurological disorder symptoms. The effectiveness of the IT2FSVM classifier is evaluated based on a set of EEG samples which are collected from 10 patients at Peking university hospital. The EEG samples for the three seizure phases were captured by the 112 2-second 19 channel EEG epochs, where each patient were extracted for each sample. Feature extraction was used to reduce the feature vector of the EEG samples to 45 elements and the EEG samples with the reduced features are used for training the IT2FSVM classifier. The classification results obtained by the IT2FSVM are compared with three traditional classifiers namely Support Vector Machine, k-Nearest Neighbour and naive Bayes. The experimental results show that the IT2FSVM classifier is able to achieve superior learning capabilities with respect to the uncontaminated samples when compared with the three classifiers. In order to validate the level of robustness of the IT2FSVM, the original EEG samples are contaminated with Gaussian white noise at levels of 0.05, 0.1, 0.2 and 0.5. The simulation results show that the IT2FSVM classifier outperforms the traditional classifiers under the original dataset and also shows a high level of robustness when compared to the traditional classifiers with white Gaussian noise applied to it.
机译:提出了一种区间2型模糊支持向量机(IT2FSVM),以解决分类问题,该分类问题旨在从神经病患者捕获的脑电图(EEG)中将癫痫发作的三个阶段(无癫痫发作,癫痫发作前发作和癫痫发作)进行分类。症状。根据从北京大学医院的10名患者收集的一组EEG样本评估IT2FSVM分类器的有效性。通过112个2秒,19通道EEG时期捕获三个癫痫发作阶段的EEG样本,在每个样本中分别提取每个患者。特征提取用于将EEG样本的特征向量减少到45个元素,而特征减少的EEG样本用于训练IT2FSVM分类器。将IT2FSVM获得的分类结果与三个传统分类器(支持向量机,k最近邻和朴素贝叶斯)进行比较。实验结果表明,与这三个分类器相比,IT2FSVM分类器能够对未污染的样品实现卓越的学习能力。为了验证IT2FSVM的鲁棒性水平,原始的EEG样本受到高斯白噪声的污染,分别为0.05、0.1、0.2和0.5。仿真结果表明,与应用白高斯噪声的传统分类器相比,IT2FSVM分类器在原始数据集下的性能优于传统分类器,并且显示出较高的鲁棒性。

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