Electroencephalograph (EEG) signal analysis for the Detection of Schizophrenia using Empirical Wavelet Transform

Soumya Jain, Hardik N. Thakkar, Bikesh Kumar Singh, Sai Krishna Tikka, Lokesh Kumar Singh
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引用次数: 1

Abstract

Schizophrenia (SCZ) is a severe mental disorder that affects behavior, speech, mood etc. of people across the world. Early detection of SCZ can play a vital role in planning the treatment for patients. Recent studies confirms that Electroencephalography (EEG) signal can be used effectively for detection of SCZ. This work attempts to propose a simple machine learning based model with improved performance for detection of SCZ. The study was conducted on 19 channel rest state EEG signal recording of total 16 subjects out of which 8 were SCZ and 8 healthy controls (HC). After acquiring the signal, preprocessing is done and signal is decomposed using Empirical Wavelet Transform (EWT) to analyze the EEG components. 3 different entropy features were calculated over the decomposed signal. The features of selected significant mode function were applied to the classifiers named as support vector machine (SVM), k-nearest neighbor (KNN), linear discriminant (LD) and neural network. Results indicates that EWT could be a useful method for analysis of EEG signal and classification problems as various classifiers namely Fine KNN, Quadratic SVM and Wide Neural Network achieved the best classification accuracy of 87.5% with 5-fold data division protocol.
基于经验小波变换的脑电图信号检测
精神分裂症(SCZ)是一种严重的精神障碍,影响世界各地人们的行为、语言、情绪等。早期发现SCZ对患者的治疗计划具有重要作用。近年来的研究证实,脑电图(EEG)信号可以有效地用于检测SCZ。这项工作试图提出一个简单的基于机器学习的模型,该模型具有改进的SCZ检测性能。采用19通道静息状态脑电信号记录16例被试,其中SCZ组8例,健康对照组8例。采集到信号后,对信号进行预处理,并利用经验小波变换对信号进行分解,分析脑电信号成分。对分解后的信号计算3种不同的熵特征。将选取的显著模态函数的特征应用到支持向量机(SVM)、k近邻(KNN)、线性判别(LD)和神经网络分类器中。结果表明,EWT是一种有效的脑电信号分析和分类方法,Fine KNN、Quadratic SVM和Wide Neural Network等分类器在5倍数据分割协议下的分类准确率达到了87.5%。
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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