An Efficient Heart Disease Prediction System Using Modified Firefly Algorithm Based Radial Basis Function with Support Vector Machine
-
2018-06-08 https://doi.org/10.14419/ijet.v7i2.33.17904 -
Firefly algorithm, heart disease, normalization, support vector machine and attribute reduction. -
Abstract
Nowadays Heart Disease is one among the main roots of death in and around countries. Accurately predicting the heart disease is difficult for doctors. Thus, it is obligatory to apply computerized technologies to support doctors for diagnose faster with greater accuracy. An existing work introduced a heart disease diagnosis system which is dependent upon Interval Type-2 Fuzzy Logic System (IT2FLS). However, the training time of IT2FLS as well as genetic hybrid algorithms is quite gentle. And also it does not achieve high recognition accuracy. To solve this problem the proposed system introduced a modified firefly algorithm and Radial Basis Function based Support Vector Machine (MFA and RBF-SVM). An input dataset encompasses 3 kinds of attributes such as Input, Key and Prediction attributes. After the normalization, an attribute reduction and feature extraction are performed by using FA and Principal Component Analysis (PCA) respectively. Finally RBF-SVM is classified a features as normal or heart diseases.
Â
Â
-
References
[1] M. Anbarasi, E. Anupriya, N.CH.S.N.Iyengar, “Enhanced Prediction of Heart Disease with Feature Subset Selection using Genetic Algorithmâ€, International Journal of Engineering Science and Technology, Vol. 2(10), 2010, pp. 5370- 5376.
[2] Ephzibah, E. P. (2011). A hybrid genetic-fuzzy expert system for effective heart disease diagnosis. Advances in Computing and Information Technology, 115-121.
[3] Carlos Ordonez, Edward Omincenski and Levien de Braal, “Mining Constraint Association Rules to Predict Heart Diseaseâ€,IEEE International Conference on Data Mining, IEEE Computer Society, ISBN-0-7695-1119- 8, pp: 433-440,2001
[4] Nilakshi P. Waghulde, Nilima P. Patil, “Genetic Neural Approach for Heart Disease Predictionâ€, International Journal of Advanced Computer Research (ISSN (print): 2249-7277, Vol 4 Number-3 Issue-Sept 2014
[5] M. Gudadhe, K. Wankhade and S. Dongre, “Decision support system for heart disease based on support vector machine and artificial neural networkâ€, IEEE International conference on computer and communication technology, pp. 741-745, November 2010.
[6] Chaitrali S. Dangare, Sulabha S. Apte, “Improved Study of Heart Disease Prediction System using Data Mining Classification Techniquesâ€; International Journal of Computer Applications (0975 – 888) Volume 47– No.10, June 2012.
[7] D. Giri, U. R. Acharya, R. J. Martis, S. V. Sree, T.-C. Lim, T. Ahamed, and J. S. Suri, “Automated diagnosis of coronary artery disease affected patients using lda, pca, ica and discrete wavelet transform,†Knowledge-Based Systems, vol. 37, pp. 274–282, 2013.
[8] E.P.Ephzibah, Dr. V. Sundarapandian, “Framing Fuzzy Rules using Support Sets for Effective Heart Disease Diagnosisâ€; International Journal of Fuzzy Logic Systems (IJFLS) Vol.2, No.1, February 2012.
[9] P.K. Anooj, “Clinical decision support system: Risk level prediction of heart disease using weighted fuzzy rulesâ€, Journal of Computer and Information Sciences, Vol.24, PP. 27–40, 2012.
[10] Shantakumar B. Patil, “Extraction of Significant Patterns from Heart Disease Warehouses for Heart Attack predictionâ€, International Journal of Computer Science and Network Security, Vol.9, No.2, February 2009.
[11] Jayshril S. Sonawane “Prediction of Heart Disease Using Learning Vector Quantization Algorithm “ IEEE publication 2014
[12] M.AkhilJabbar,Dr B.L Deekshatulu,DrPriti Chandra “Heart Disease Prediction using Lazy Associative Classification “ IEEE publication 2013
[13] Dr. D. Raghu. T. Srikanth, Ch. Raja Jacub, “Probability based Heart Disease Prediction using Data Mining Techniques†IJCST Vol. 2, Issue 4, Oct - Dec. 2011, ISSN: 0976-8491 (Online) | ISSN: 2229-4333(Print)
[14] Driscoll, A., Barnes, E. H., Blankenberg, S., Colquhoun, D. M., Hunt, D., Nestel, P. J., ...& Tonkin, A. (2017). Predictors of incident heart failure in patients after an acute coronary syndrome: The LIPID heart failure risk-prediction model. International Journal of Cardiology.
[15] Saxena, K., & Sharma, R. (2016). Efficient Heart Disease Prediction System. Procedia Computer Science, 85, 962-969.
[16] Su, H., Cai, Y., & Du, Q. (2017). Firefly-algorithm-inspired framework with band selection and extreme learning machine for hyperspectral image classification. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 10(1), 309-320.
[17] D.Senthil,G.Suseendran, “Efficient Time Series Data Classification using Sliding Window Technique Based Improved Association Rule Mining with Enhanced Support Vector Machine†submitted to International Journal of Engineering & Technology, Vol. 7 (2.33) ,June 2018) pp.218-223. DOI: 10.14419/ijet.v7i2.33.13890.
[18] M.Thiyagaraj , G.Suseendran “Survey on Heart Disease Prediction System Based on Data Mining Techniques†Indian Journal of Innovations and Developments Vol 6(1), pp.1.-9, January, 2017
[19] K.Rohini, G.Suseendran, “Aggregated K Means Clustering and Decision Tree Algorithm for Spirometry Dataâ€, Indian Journal of Science and Technology, Volume 9, Issue 44, November 2016.
[20] D.Senthil, G.Suseendran , “Data Mining Techniques using Time Series Analysis†Proceedings of the 11th INDIACom; INDIACom-2017; IEEE Conference ID: 40353 2017 4th International Conference on “Computing for Sustainable Global Developmentâ€, 01st - 03rd March, 2017 Bharati Vidyapeeth's Institute of Computer Applications and Management (BVICAM), New Delhi (INDIA) ISSN 0973-7529; ISBN 978-93-80544-24-3 pp.2864-2872
[21] M. Thiyagaraj , G.Suseendran, “Review of Chronic Kidney Disease Based on Data Mining Proceedings of the 11th INDIACom; INDIACom-2017; IEEE Conference ID: 40353 2017 4th International Conference on “Computing for Sustainable Global Developmentâ€, 01st - 03rd March, 2017 Bharati Vidyapeeth's Institute of Computer Applications and Management (BVICAM), New Delhi (INDIA) ISSN 0973-7529; ISBN 978-93-80544-24-3 pp.2873-2878
-
Downloads
-
How to Cite
Thiyagaraj, M., & G.Suseendran, D. (2018). An Efficient Heart Disease Prediction System Using Modified Firefly Algorithm Based Radial Basis Function with Support Vector Machine. International Journal of Engineering & Technology, 7(2.33), 1040-1045. https://doi.org/10.14419/ijet.v7i2.33.17904Received date: 2018-08-19
Accepted date: 2018-08-19
Published date: 2018-06-08