Fahmida Ahmed Antara, A. Arefin, Md Tamjid Rayhan, Sabbir Ahmed Chowdhury
{"title":"Detection of Schizophrenia from EEG Signals using Dual Tree Complex Wavelet Transform and Machine Learning Algorithms","authors":"Fahmida Ahmed Antara, A. Arefin, Md Tamjid Rayhan, Sabbir Ahmed Chowdhury","doi":"10.3329/bjmp.v15i1.63559","DOIUrl":null,"url":null,"abstract":"This research was conducted with the aim to detect schizophrenia automatically from EEG signals using machine learning algorithms. The 16 electrode EEG data were collected from the online repository where 43 schizophrenic and 39 healthy persons’ dataset is available. By applying Low Pass Filter and Total Variation Denoising method, raw EEG signals were denoised and were decomposed into beta, alpha, theta and delta waves by using Dual Tree Complex Wavelet Transform. To apply machine learning algorithms, five features: mean, median, standard deviation, energy and kurtosis were considered for all the four wave bands. With Linear Support Vector Machine and Random Forest classifier machine learning algorithms, 12 out of 16 channels were classified with test accuracy above 95% and F1 score above 90%. Among them, 7 channels were predicted with 100% test accuracy. This research thus has the potential to detect schizophrenia unsupervised and within a noticeably short period of time giving the opportunity to real time monitoring of patients. Hence, people living in remote areas or deprived of adequate healthcare professionals can be benefitted through the outcome of this research. \nBangladesh Journal of Medical Physics Vol.15 No.1 2022 P 8-27","PeriodicalId":134261,"journal":{"name":"Bangladesh Journal of Medical Physics","volume":"40 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-12-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Bangladesh Journal of Medical Physics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3329/bjmp.v15i1.63559","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
This research was conducted with the aim to detect schizophrenia automatically from EEG signals using machine learning algorithms. The 16 electrode EEG data were collected from the online repository where 43 schizophrenic and 39 healthy persons’ dataset is available. By applying Low Pass Filter and Total Variation Denoising method, raw EEG signals were denoised and were decomposed into beta, alpha, theta and delta waves by using Dual Tree Complex Wavelet Transform. To apply machine learning algorithms, five features: mean, median, standard deviation, energy and kurtosis were considered for all the four wave bands. With Linear Support Vector Machine and Random Forest classifier machine learning algorithms, 12 out of 16 channels were classified with test accuracy above 95% and F1 score above 90%. Among them, 7 channels were predicted with 100% test accuracy. This research thus has the potential to detect schizophrenia unsupervised and within a noticeably short period of time giving the opportunity to real time monitoring of patients. Hence, people living in remote areas or deprived of adequate healthcare professionals can be benefitted through the outcome of this research.
Bangladesh Journal of Medical Physics Vol.15 No.1 2022 P 8-27
本研究的目的是利用机器学习算法从脑电图信号中自动检测精神分裂症。16个电极脑电图数据来自在线存储库,其中有43个精神分裂症患者和39个健康人的数据集。采用低通滤波和全变差去噪方法,对原始脑电信号进行去噪,并利用对偶树复小波变换将其分解为β、α、θ和δ波。为了应用机器学习算法,对所有四个波段考虑了五个特征:平均值、中位数、标准差、能量和峰度。使用线性支持向量机和随机森林分类器机器学习算法,16个通道中有12个通道的分类测试准确率在95%以上,F1得分在90%以上。其中7个通道的预测准确率达到100%。因此,这项研究有可能在无人监督的情况下,在非常短的时间内发现精神分裂症,从而有机会对患者进行实时监测。因此,生活在偏远地区或缺乏适当保健专业人员的人们可以通过这项研究的结果受益。孟加拉国医学物理杂志Vol.15 no . 2022 P . 8-27