Buradasınız

A New Generalized Regression Artificial Neural Networks Approach for Diagnosing Heart Disease

Journal Name:

Publication Year:

Abstract (Original Language): 
Artificial Neural Networks (ANNs) play an important role in the field of medical science in solving health problems and diagnosing diseases both in critical illnesses and in common diseases. Since it is important to diagnose accurately the people' disease condition, therefore for the precisely diagnosing those condition, we must use appropriate methods that to minimize the errors in diagnosis. So, using an appropriate method to diagnose heart disease and to prevent complications of the disease is an important step toward patients' improvement. Therefore, in this paper the presence or the absence of heart disease of the four datasets using Generalized Regression Neural Networks (GRNN) will be discussed. Each of the four datasets contains of 14 features that they are used to diagnose heart disease with GRNN. In this paper, GRNN have been implemented in MATLAB environment. The aim is maximizing the precision of measurement in accurately diagnosing heart disease in the process of training and testing. By comparing the results of each dataset, we found the best accuracy in the training phase that is equal to 100% which belongs to Switzerland and Long Beach VA datasets, and the best accuracy in the testing phase belongs to the Cleveland dataset that is equal to 96.6667%.
679
689

REFERENCES

References: 

[1] C.S. Dangare, S.S. Apte, “Improved Study of Heart Disease Prediction System using Data Mining Classification
Techniques”, International Journal of Computer Applications, vol. 47– No. 10, pp. 44-48, June 2012.
[2] X.Yanwei, J. Wang ,Z. Zhao, Y.Gao, “Combination data mining models with new medical data to predict outcome of
coronary heart disease”, IEEE, Proceedings International Conference on Convergence Information Technology, Gyeongju,
pp. 868–872, 2007.
[3] N. Ganesan, K. Venkatesh, M.A. Rama, A. Malathi Palani, “Application of Neural Networks in Diagnosing Cancer Disease
Using Demographic Data”, International Journal of Computer Applications, vol. 1, no. 26, pp. 76-85, 2010.
[4] F.S. Gharehchopogh, “Neural Network Application in Software Cost Estimation: A Case Study”, International Symposium
on Innovations in Intelligent Systems and Applications (INISTA 2011), pp. 69-73, IEEE, Istanbul, Turkey, 15-18 June 2011.
[5] W. Sibanda, P. Pretorius, “Novel Application of Multi-Layer Perceptrons (MLP) Neural Networks to Model HIV in South
Africa using Seroprevalence Data from Antenatal Clinics”, International Journal of Computer Applications, vol. 35, no. 5,
pp. 26-31, December 2011.
[6] Q. K. Al-Shayea, “Artificial Neural Networks in Medical Diagnosis”, International Journal of Computer Science Issues, Vol.
8, No. 2, pp. 150-154, March 2011.
[7] J.L. Patel, R.K. Goyal, “Applications of artificial neural networks in medical science,” Curr. Clin. Pharmacol., 2(3), pp. 217-
226, 2007.
[8] J. Jiang, P. Trundle, J. Ren, “Medical image analysis with artificial neural networks”, Computerized Medical Imaging and
Graphics, pp. 617-631, 2010.
[9] S.M. Patil, R.R. Mudholkar, “An Osteoarthritis Classifier Using Back Propagation Neural Network”, International Journal
of Advances in Engineering & Technology (IJAET), Vol. 4, pp. 292-301, Sept 2012.
[10] F.S. Gharehchopogh, E. Ahmadzadeh, “Artificial Neural Network Application in Letters Recognition for Farsi/Arabic
Manuscripts”, International Journal of Scientific & Technology Research, vol. 1, No. 8, pp. 90-94, September 2012.
[11] S. Mozaffari, K. Faez, V. Margner, H. El-Abed, “Lexicon reduction using dots for off-line Farsi/Arabic hand written word
recognition,” Pattern Recognition Letters, vol. 29, No. 6, pp. 724-734, April 2008.
[12] S. Sathasivam, “Application of neural networks in predictive data mining”, 2nd international conference on business and
economic research, Langkawi Kedah, Malaysia, pp. 371-376, 14-16 March 2011.
[13] W. Gao, “New Evolutionary Neural Networks”, International Conference on Neural Interface and Control, Wuhan
Polytech. Univ., China, pp. 167-171, 26-28 May 2005.
[14] P.A. Maiellaro, R. Cozzolongo, P. Marino, “Artificial Neural Networks for the Prediction of Response to Interferon Plus
Ribavirin Treatment in Patients with Chronic Hepatitis C”, Current Pharmaceutical Design, Vol. 10, No. 17, pp. 2101-
2110, 2004.
[15] S. A. Hannan, R. R. Manza, R. J. Ramteke, “Generalized Regression Neural Network and Radial Basis Function for Heart
Disease Diagnosis”, International Journal of Computer Applications, vol. 7, No. 13, October 2010.
[16] N. Elfadil, A. Hossen, “Identification of Patients With Congestive Heart Failure Using Different Neural Networks
Approaches”, Journal Technology and Health Core, vol. 17, No. 4, December 2009.
[17] F.S. Gharehchopogh, Z.A. Khalifelu, “Neural Network Application in Diagnosis of Patient: A Case Study”, IEEE,
International Conference on Computer Networks and Information Technology (ICCNIT 2011), Abbottabad, Pakistan, pp.
245-249, 11-13 July 2011.
[18] V.G. Koutkias, I. Chouvarda and N. Maglaveras, “Multi-Agent System Architecture for Heart Failure Management in a
Home Care Environment”, IEEE, Computers' in Cardiology, vol. 30, pp. 383-386, 2003.
[19] S. M. Jadhav, S. L. Nalbalwar, A.A. Ghatol, “Artificial Neural Network Models based Cardiac Arrhythmia Disease
Diagnosis from ECG Signal Data”, International Journal of Computer Applications, vol. 44, No. 15, pp. 8-13, April 2012.
[20] G.T. Tsenov, V.M. Mladenov, “Speech recognition using neural networks”, Neural Network Applications in Electrical
Engineering (NEUREL), 10th Symposium on, Belgrade, pp. 181-186, 23-25 Sep. 2010.
[21] J. Parojcić, S. Ibrić , Z. Djurić, M. Jovanović , O.I. Corrigan, “An investigation into the usefulness of generalized regression
neural network analysis in the development of level A in vitro-in vivo correlation”, European journal of pharmaceutical
sciences, vol. 30, pp. 264-272, 2007.
Behnam Zebardast, Ali Ghaffari, and Mohammad Masdari
ISSN : 2028-9324 Vol. 4 No. 4, Dec. 2013 689
[22] O. Er, N. Yumusak, F. Temurtas, “Chest diseases diagnosis using artificial neural networks”, Expert Systems with
Applications, Vol. 37, pp. 7648–7655, 2010.
[23] S. Chittineni, R. B. Bhogapathi, “A Study on the Behavior of a Neural Network for Grouping the data”, International
Journal of Computer Science, vol. 9, No. 1, pp. 228-234, January 2012.
[24] A. Roy, D. Dutta, K. choudhury, “Training Artificial Neural Network using Particle Swarm Optimization Algorithm”,
International Journal of Advanced Research in Computer Science and Software Engineering, Vol. 3, No. 3, pp. 430-434,
March 2013.
[25] Demuth, Beale, Neural Network Toolbox for Use with MATLAB, User’s Guide, Version 4, The MathWorks, Inc. 3 Apple Hill
Drive Natick, MA 01760-2098, 840 pages, 2002.

Thank you for copying data from http://www.arastirmax.com