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首页> 外文期刊>Neurocomputing >EEG signal classification for epilepsy diagnosis via optimum path forest - A systematic assessment
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EEG signal classification for epilepsy diagnosis via optimum path forest - A systematic assessment

机译:通过最佳路径森林进行癫痫诊断的EEG信号分类-系统评估

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摘要

Epilepsy refers to a set of chronic neurological syndromes characterized by transient and unexpected electrical disturbances of the brain. The detailed analysis of the electroencephalogram (EEG) is one of the most influential steps for the proper diagnosis of this disorder. This work presents a systematic performance evaluation of the recently introduced optimum path forest (OPF) classifier when coping with the task of epilepsy diagnosis directly through EEG signal analysis. For this purpose, we have made extensive use of a benchmark dataset composed of five classes, whose full discrimination is very hard to achieve. Four types of wavelet functions and three well-known filter methods were considered for the tasks of feature extraction and selection, respectively. Moreover, support vector machines configured with radial basis function (SVM-RBF) kernel, multilayer perceptron neural networks (ANN-MLP), and Bayesian classifiers were used for comparison in terms of effectiveness and efficiency. Overall, the results evidence the outperformance of the OPF classifier in both types of criteria. Indeed, the OPF classifier was usually extremely fast, with average training/testing times much lower than those required by SVM-RBF and ANN-MLP. Moreover, when configured with Coiflets as feature extractors, the performance scores achieved by the OPF classifier include 89.2% as average accuracy and sensitivity/specificity values higher than 80% for all five classes.
机译:癫痫病是指一组慢性神经系统综合症,其特征是大脑的短暂和意想不到的电干扰。脑电图(EEG)的详细分析是正确诊断该疾病的最有影响力的步骤之一。当通过EEG信号分析直接应对癫痫诊断任务时,这项工作提出了对最近引入的最佳路径森林(OPF)分类器的系统性能评估。为此,我们广泛使用了由五个类别组成的基准数据集,很难完全分辨它们。分别考虑了四种类型的小波函数和三种著名的滤波方法来进行特征提取和选择。此外,使用配置有径向基函数(SVM-RBF)内核,多层感知器神经网络(ANN-MLP)和贝叶斯分类器的支持向量机进行有效性和效率比较。总体而言,结果证明了在两种标准中OPF分类器的性能均优于同类。实际上,OPF分类器通常非常快,平均训练/测试时间比SVM-RBF和ANN-MLP所需的时间低得多。此外,当将Coiflet配置为特征提取器时,由OPF分类器获得的性能得分包括所有五个类别的平均准确度和灵敏度/特异性值均高于80%的89.2%。

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