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A new method for the detection of epilepsy and epileptic seizures based on the variance of EEG signals and its derivatives with a simple kernel trick

机译:一种新方法,用于检测癫痫和癫痫癫痫发作的脑电图和衍生物与简单的内核伎俩

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In this paper, we propose a new method for the automatic diagnosis of epilepsy via encephalographic signals (EEG). Our objective is the detection of epilepsy and epileptic seizures through EEG of healthy subjects (H), epileptic subject (E) and epileptic subject during seizures (S). Two novelties are deliberated in this paper. In the first method, we have exploited EEG and its derivatives, which gives significant results from calculations of just three features, the variances of the signals and its first and second derivatives. In the second one, we have used a kernel trick that allows an implicit redescription of the extracted features, by the conversion of the nonlinear problem to linear space, which ultimately facilitates the classification step and gives reliable result in fast running time. The experimental test via the Bonn EEG dataset proves the efficiency of the proposed method, an accuracy of 100 % is achieved in seizures detection problem and of 99.8 % in epilepsy detection problem, moreover for the differentiation of three cases 99.85 % of accuracy was achieved.
机译:在本文中,我们提出了一种新方法,用于通过侧脑信号(EEG)自动诊断癫痫症。我们的目的是通过在癫痫发作期间通过健康受试者(h),癫痫毒性(E)和癫痫受试者的脑电图来检测癫痫和癫痫发作。本文审议了两份新奇。在第一种方法中,我们已经利用了EEG及其衍生物,这给出了只有三个特征的计算,信号的差异及其第一和第二衍生物的显着结果。在第二个中,我们使用了允许提取的特征的隐式重新排列的内核技巧,通过将非线性问题转换为线性空间,这最终促进了分类步骤并在快速运行时间内提供可靠的结果。通过BONN EEG数据集的实验测试证明了所提出的方法的效率,在癫痫发作检测问题中实现了100%的准确度,并且癫痫检测问题中的99.8%,而且对于三种情况的分化,实现了99.85%的准确性。

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