Coronary Heart Disease Diagnosis Through Self-Organizing Map and Fuzzy Support Vector Machine with Incremental Updates

被引:0
作者
Mehrbakhsh Nilashi
Hossein Ahmadi
Azizah Abdul Manaf
Tarik A. Rashid
Sarminah Samad
Leila Shahmoradi
Nahla Aljojo
Elnaz Akbari
机构
[1] Ton Duc Thang University,Department for Management of Science and Technology Development
[2] Ton Duc Thang University,Faculty of Information Technology
[3] University of Human Development,Department of Information Technology
[4] University Of Jeddah,Department of Cybersecurity, College of Computer Science and Engineering
[5] University of Kurdistan Hewler,Computer Science and Engineering Department
[6] Princess Nourah bint Abdulrahman University,Department of Business Administration, College of Business and Administration
[7] Halal Research Center of IRI,Health Information Management Department, School of Allied Medical Sciences
[8] FDA,Department of Information System and Technology, College of Computer Science and Engineering
[9] Tehran University of Medical Sciences,Institute of Research and Development
[10] University Of Jeddah,Faculty of Information Technology
[11] Duy Tan University,undefined
[12] Duy Tan University,undefined
来源
International Journal of Fuzzy Systems | 2020年 / 22卷
关键词
Fuzzy support vector machine; Coronary heart disease; Self-organizing map; Incremental learning; Prediction accuracy;
D O I
暂无
中图分类号
学科分类号
摘要
The trade-off between computation time and predictive accuracy is important in the design and implementation of clinical decision support systems. Machine learning techniques with incremental updates have proven its usefulness in analyzing large collection of medical datasets for diseases diagnosis. This research aims to develop a predictive method for heart disease diagnosis using machine learning techniques. To this end, the proposed method is developed by unsupervised and supervised learning techniques. In particular, this research relies on Principal Component Analysis (PCA), Self-Organizing Map, Fuzzy Support Vector Machine (Fuzzy SVM), and two imputation techniques for missing value imputation. Furthermore, we apply the incremental PCA and FSVM for incremental learning of the data to reduce the computation time of disease prediction. Our data analysis on two real-world datasets, Cleveland and Statlog, showed that the use of incremental Fuzzy SVM can significantly improve the accuracy of heart disease classification. The experimental results further revealed that the method is effective in reducing the computation time of disease diagnosis in relation to the non-incremental learning technique.
引用
收藏
页码:1376 / 1388
页数:12
相关论文
共 109 条
  • [1] Paul AK(2018)Adaptive weighted fuzzy rule-based system for the risk level assessment of heart disease Appl. Intell. 48 1739-1756
  • [2] McAloon CJ(2016)The changing face of cardiovascular disease 2000–2012: an analysis of the world health organisation global health estimates data Int. J. Cardiol. 224 256-264
  • [3] Luengo-Fernandez R(2012)UK research expenditure on dementia, heart disease, stroke and cancer: are levels of spending related to disease burden? Eur. J. Neurol. 19 149-154
  • [4] Leal J(2015)Feature analysis of coronary artery heart disease data sets Procedia Comput. Sci. 65 459-468
  • [5] Gray A(2014)The relation between hepatitis C virus and coronary heart disease Med. Hypotheses 82 505-7680
  • [6] El-Bialy R(2009)Effective diagnosis of heart disease through neural networks ensembles Expert Syst. Appl. 36 7675-142
  • [7] Metwally AH(1994)Effects of computer-based clinical decision support systems on clinician performance and patient outcome: a critical appraisal of research Ann. Intern. Med. 120 135-220
  • [8] Elgamal M-AF(1967)The detection of disease clustering and a generalized regression approach Cancer Res. 27 209-11
  • [9] Das R(2016)Hybrid approach using fuzzy sets and extreme learning machine for classifying clinical datasets Inform. Med. Unlocked 2 1-144
  • [10] Turkoglu I(2017)A knowledge-based system for breast cancer classification using fuzzy logic method Telematics Inform. 34 133-140