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首页> 外文期刊>Journal of mechanics in medicine and biology >AUTOMATED IDENTIFICATION OF EPILEPTIC AND ALCOHOLIC EEG SIGNALS USING RECURRENCE QUANTIFICATION ANALYSIS
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AUTOMATED IDENTIFICATION OF EPILEPTIC AND ALCOHOLIC EEG SIGNALS USING RECURRENCE QUANTIFICATION ANALYSIS

机译:使用递归定量分析自动识别癫痫和酒精性脑电信号

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摘要

Epilepsy is a common neurological disorder characterized by recurrence seizures. Alcoholism causes organic changes in the brain, resulting in seizure attacks similar to epileptic fits. Hence, it is challenging to differentiate the cause of fits as epileptic or alcoholism, which is important for deciding on the treatment in the neurology ward. The focus of this paper is to automatically differentiate epileptic, normal, and alcoholic electroencephalogram (EEG) signals. As the EEG signals are non-linear and dynamic in nature, it is difficult to tell the subtle changes in these signals with the help of linear techniques or by the naked eye. Therefore, to analyze the normal (control), epileptic, and alcoholic EEG signals, two non-linear methods, such as recurrence plots (RPs) and then recurrence quantification analysis (RQA) are adopted. Approximately 10 RQA parameters have been used to classify the EEG signals into three distinct classes, i.e., normal, epileptic, and alcoholic. Six classifiers, such as support vector machine (SVM), radial basis probabilistic neural network (RBPNN), decision tree (DT), Gaussian mixture model (GMM), k-nearest neighbor (kNN), and fuzzy Sugeno classifiers have been developed to accomplish this task. Results show that the GMM classifier outperformed the other classifiers with a classification sensitivity of 99.6%, specificity of 98.3%, and accuracy of 98.6%.
机译:癫痫病是一种常见的神经系统疾病,其特征在于复发性癫痫发作。酒精中毒会引起大脑的有机变化,导致癫痫发作类似于癫痫发作。因此,区分癫痫或酒精中毒的病因是具有挑战性的,这对于决定神经病房的治疗方法很重要。本文的重点是自动区分癫痫,正常和酒精性脑电图(EEG)信号。由于EEG信号本质上是非线性和动态的,因此很难借助线性技术或肉眼分辨出这些信号的细微变化。因此,为了分析正常(对照),癫痫和酒精性脑电信号,采用了两种非线性方法,例如递归图(RP)和递归定量分析(RQA)。已经使用了大约10个RQA参数将EEG信号分为三个不同的类别,即正常,癫痫和酒精。已经开发了六个分类器,例如支持向量机(SVM),径向基概率神经网络(RBPNN),决策树(DT),高斯混合模型(GMM),k最近邻(kNN)和模糊Sugeno分类器完成这项任务。结果表明,GMM分类器以99.6%的分类灵敏度,98.3%的特异性和98.6%的准确性优于其他分类器。

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