A hybrid technique for EEG signals evaluation and classification as a step towards to neurological and cerebral disorders diagnosis

Q4 Mathematics
A. Abdulbaqi, M. T. Younis, Younus Tahreer Younus, Ahmed J. Obaid
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引用次数: 9

Abstract

Electroencephalography (EEG) signals are commonly used to identify and diagnose brain disorders. Each EEG normal waveform consists of the following waveforms: Gamma(γ) wave, Beta (β) wave, Alpha (α), Theta (θ), and Delta (δ). The term Neurological Diseases ” NurDis ” is used to describe a variety of conditions that affect the nervous Epilepsy, neuro infections (bacterial and viral), brain tumors, cerebrovascular diseases, Alzheimer’s disease, and various dementias are all examples of neurological disorders. Encephalitis is one of the illnesses that affects the brain. The EEG signals used in this paper were from the CHB-MIT Scalp EEG database. The discrete wavelet transform (DWT) was utilized to extract characteristics from the filtered EEG data. Finally, classifiers such as K Nearest Neighbor (KNN) and Support vector machine (SVM) were used to categorize the EEG signals into normal and pathological signal classes using all of the computed characteristics. In order to categorize the signal in a normal and anomalous group, the KNN and SVM classifiers are employed. For both classifiers, performance assessments (accuracy, sensitivity and specificity) are determined. KNN classifier accuracy is 71.88%, whereas SVM classifier accuracy is 81.23%. The sensitivity of KNN and SVM are 80.14% and 77.31%, respectively. The KNN classification specificity is 69.62% and the SVM classification specificity is 98%. Both classifiers performance is evaluated using the confusion matrix.
脑电信号评估和分类的混合技术,为神经和大脑疾病的诊断迈出了一步
脑电图(EEG)信号通常用于识别和诊断脑部疾病。每个EEG正常波形由以下波形组成:Gamma(γ)波、Beta (β)波、Alpha (α)波、Theta (θ)波和Delta (δ)波。神经系统疾病“NurDis”一词用于描述影响神经系统的各种疾病癫痫、神经感染(细菌和病毒)、脑肿瘤、脑血管疾病、阿尔茨海默病和各种痴呆症都是神经系统疾病的例子。脑炎是影响大脑的疾病之一。本文使用的脑电图信号来自CHB-MIT头皮脑电图数据库。利用离散小波变换(DWT)对滤波后的脑电数据进行特征提取。最后,利用K最近邻(KNN)和支持向量机(SVM)等分类器,结合计算得到的所有特征,将脑电信号分为正常和病理两类。为了将信号分为正常组和异常组,采用了KNN和SVM分类器。对于两种分类器,确定了性能评估(准确性,敏感性和特异性)。KNN分类器准确率为71.88%,SVM分类器准确率为81.23%。KNN和SVM的灵敏度分别为80.14%和77.31%。KNN分类特异性为69.62%,SVM分类特异性为98%。两个分类器的性能使用混淆矩阵进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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