A Novel Machine Learning Approach for Detection of Coronary Artery Disease Using Reduced Non-linear and Chaos Features

Q4 Agricultural and Biological Sciences International Journal Bioautomation Pub Date : 2022-09-01 DOI:10.7546/ijba.2022.26.3.000786
R. Singh, D. Gelmecha, Satyasis Mishra, Gemechu Dengia, D. Sinha
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Abstract

In this research paper, authors present an automated system in this paper that integrates a ranking technique with Principal Component Analysis (PCA), Generalized Discriminant Analysis (GDA) and a 1-Norm Bidirectional Extreme Learning Machine (1-NBELM) to reliably classify normal and coronary artery disease groups. Twenty chaotic and non-linear attributes were hauling out from the Heart Rate Variability (HRV) signal to detect coronary artery disease groups. The HRV data for this study derived from a typical database of Normal Old (ELY), Young (YNG), and Coronary Artery Disease (CAD) people. Fisher, Wilcoxon and Bhattacharya were used to compute the rankings of attributes. GDA then turned the ranking features into a new feature. The Radial Basis Function (RBF) kernel was used to transfer original features to a high-dimensional feature space in GDA and PCA, and then it was deployed to 1-NBELM, which utilized the sigmoidal or multiquadric non-linear activation. Numerical experiments were performed on the combination of database sets as Young-ELY, Healthy-CAD, and Healthy ELY-CAD subjects. The numerical results show that ROC with GDA and 1-NBELM approach achieved an accuracy of 98.12±0.14, 96.21±0.12 and 99.87±0.28 for Young-CAD, Young-ELY and Healthy ELY-CAD groups with the use of sigmoidal and multiquadric activation function. The Fisher with GDA and 1-NBELM and Bhattacharya with GDA and 1-Norm Extreme Learning Machine (1-NELM) approach achieved an accuracy of 99.98±0.21 for all databases.
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一种利用减少的非线性和混沌特征检测冠状动脉疾病的新型机器学习方法
在这篇研究论文中,作者在本文中提出了一个自动化系统,该系统将排序技术与主成分分析(PCA)、广义判别分析(GDA)和1-范数双向极限学习机(1-NBELM)相结合,以可靠地对正常组和冠状动脉疾病组进行分类。从心率变异性(HRV)信号中提取出20个混沌和非线性属性来检测冠状动脉疾病组。本研究的HRV数据来源于正常老年人(ELY)、年轻人(YNG)和冠状动脉疾病(CAD)的典型数据库。Fisher、Wilcoxon和Bhattacharya被用来计算属性的排名。GDA随后将排名功能变成了一个新功能。在GDA和PCA中,径向基函数(RBF)核用于将原始特征转移到高维特征空间,然后将其部署到1-NBELM中,1-NBELM利用了S形或二次非线性激活。在数据库集的组合上作为年轻ELY、健康CAD和健康ELY-CAD受试者进行了数值实验。数值结果表明,采用GDA和1-NBELM方法的ROC在青年CAD、青年ELY和健康ELY-CAD组中使用乙状体和多股激活函数的准确度分别为98.12±0.14、96.21±0.12和99.87±0.28。Fisher与GDA和1-NBELM以及Bhattacharya与GDA与1-Norm极限学习机(1-NELM)方法在所有数据库中实现了99.98±0.21的精度。
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来源期刊
International Journal Bioautomation
International Journal Bioautomation Agricultural and Biological Sciences-Food Science
CiteScore
1.10
自引率
0.00%
发文量
22
审稿时长
12 weeks
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