4. Conclusion This study uses GA based trained RFNN approach on UCI Cleveland dataset for diagnose the heart disease. The
result of the approach was evaluated with RMSEs, sensitivities, specificities, precisions, F-scores, PMEs and
accuracies of the training set, testing set and overall. The results of this study achieved a testing set (45 instances)
accuracy of 97.78% and an overall accuracy of 96.63%. Compared with the ANN-Fuzzy_AHP approach where the
accuracy is 91.1% for the testing set (45 instances), the proposed approach is distinctively better.
A future work may be considered to be jointly handled with medical experts to include different attributes that
can affect the method’s decision making capabilities. Using different data sets from other sources may also be useful
to test the proposed system performance.
6
Kaan Uyar et al./ Procedia Computer Science 00 (2018) 000–000 References AHA, 2017. American Heart Association website. http://www.heart.org (11.05.2017)
Aliev, R.A., Aliev R.R., Guirimov, B.G. ,Uyar K., 2007. Recurrent Fuzzy Neural Network Based System for Battery Charging. Lecture Notes in
Computer Science 4492-II. 307-316.
Aliev R.A., Aliev R.R., Gurimov B.G., Uyar K., 2008. Dynamic data mining technique for rules extraction in a process of battery charging,
Applied Soft Computing 8 (3).1252-1258.
Alsalamah, M., Amin, S., Halloran, J., 2014.Diagnosis of heart disease by using a radial basis function network classification technique on
patients' medical records.2014 IEEE MTT-S International Microwave Workshop Series on RF and Wireless Technologies for Biomedical and
Healthcare Applications (IMWS-Bio2014), London.1-4.
Amiri A.M., Armano, G., 2013. Early Diagnosis of Heart Disease Using Classification And Regression Trees. The 2013 International Joint
Conference on Neural Networks (IJCNN), Dallas, TX.1-4.
Anooj, P.K., 2013. Implementing Decision Tree Fuzzy Rules in Clinical Decision Support System after Comparing with Fuzzy Based and Neural
Network Based Systems. 2013 International Conference on IT Convergence and Security (ICITCS). 1-6.
Bouktif, S., Hanna, E.M., Zaki, N., Abu Khousa, E., 2014. Ant Colony Optimization Algorithm for Interpretable Bayesian Classifiers
Combination: Application to Medical Predictions. PLOS ONE 9(2).e86456, 12 pages.
Çiftçi, F.B., Incekara, H., 2011. Web based medical decision support system application of Coronary Heart Disease diagnosis with Boolean
functions minimization method. Expert Systems with Applications 38.14037–14043.
Das, R., Turkoglu, I., Sengur, A., 2009. Effective diagnosis of heart disease through neural networks ensembles.Expert Systems with
Applications 36. 7675–7680.
De Falco, I., 2013. Differential Evolution for automatic rule extraction from medical databases.Applied Soft Computing 13.1265–1283.
Hedeshi, N.G., Abadeh, M.S., 2014. Coronary Artery Disease Detection Using a Fuzzy-Boosting PSO Approach.Computational Intelligence and
Neuroscience.Article ID 783734, 12 pages.
Jabbar, M.A., Deekshatulu, B.L, Chndra, P., 2014. Alternating decision trees for early diagnosis of heart disease.Proc.of Int. Conf. on Circuits,
Communication, Control and Computing (I4C 2014), MSRIT, Bangalore, India.322-328.
Jabbar, M.A., Deekshatulu, B.L, Chandra P., 2015. Computational Intelligence Technique for early Diagnosis of Heart Disease. 2015 IEEE
International Conference on Engineering and Technology (ICETECH), 20th March 2015, Coimbatore, TN, India.1-6.
Kim, J.K., Lee, J.S., Park, D.K., Lim, Y.S., Lee, Y.H., 2014. Adaptive mining prediction model for content recommendation to coronary heart
disease patients. Cluster Comput 17(3). 881-891.
Miao K.H., Miao, J.H., Miao, G.J, 2016. Diagnosing Coronary Heart Disease Using Ensemble Machine Learning. (IJACSA) International
Journal of Advanced Computer Science and Applications 7(10).30-39.
Nahar, J., Imam, T., Tickle K.S., Chen Y.-P. P., 2013a. Computational intelligence for heart disease diagnosis: A medical knowledge driven
approach. Expert Systems with Applications 40.96–104.
Nahar, J., Imam, T., Tickle K.S., Chen Y.-P. P., 2013b. Association rule mining to detect factors which contribute to heart disease in males and
females. Expert Systems with Applications 40.1086–1093.
Nguyen, T., Khosravi, A., Creighton, D., Nahavandi, S., 2015.Medical data classification using interval type-2 fuzzy logic system and
wavelets.Applied Soft Computing 30.812–822.
NHLBI, 2017.National Heart, Lung, and Blood Institute website. https://www.nhlbi.nih.gov/health/health-topics/topics/hf (11.05.2017)
Olaniyi, E.O., Oyedotun, O.K., Helwan, A., Adnan, K., 2015. Neural network diagnosis of heart disease. 2015 International Conference on
Advances in Biomedical Engineering (ICABME), Beirut. 21-24.
Paul, A.K., Shill, P.C., Rabin, M.R.I., Kundu, A., Akhand, M.A.H., 2015. Fuzzy membership function generation using DMS-PSO for the
diagnosis of heart disease. 2015 18th International Conference on Computer and Information Technology (ICCIT), Dhaka. 456-461.
Paul, A.K., Shill, P.C., Rabin M.R.I., Akhand, M.A.H., 2016. Genetic algorithm based fuzzy decision support system for the diagnosis of heart
disease. 2016 5th International Conference on Informatics, Electronics and Vision (ICIEV), Dhaka. 145-150.
Polat, K., Güne
ş
, S., Tosun, S., 2006. Diagnosis of heart disease using artificial immune recognition system and fuzzy weighted pre-
processing.Pattern Recognition 39. 2186 – 2193.
Reddy, G.T., Khare, N., 2017. An Efficient System for Heart Disease Prediction using Hybrid OFBAT with Rule-Based Fuzzy Logic Model.
Journal of Circuits, Systems, and Computers 26 (4). 1750061-1-21
Sagir, A.M., Sathasivam, S., 2017. A Novel Adaptive Neuro Fuzzy Inference System Based Classification Model for Heart Disease Prediction.
Pertanika J. Sci. & Technol. 25 (1). 43 – 56.
Samuel, O.W., Asogbon , G.M., Sangaiah, A.K., Fang, P. , Li, G., 2017. An integrated decision support system based on ANN and Fuzzy_AHP
for heart failure risk prediction. Expert Systems With Applications 68. 163–172.
Shaoa, Y.E., Houa, C.-D., Chiuba C.-.C., 2014. Hybrid intelligent modeling schemes for heart disease classification. Applied Soft Computing
14.47–52.
UCI, 1990.Heart disease dataset. http://archive.ics.uci.edu/ml/machine-learning-databases/heart-disease/ (10.02.2017)
Uyar, K., 2006. Modeling and Simulation of NiCd Batteries Behaviour Under Fast Charging with Genetic Algorithm Based Trained Recurrent
Fuzzy Neural Network. Proc. of the 7th Int. Conf. on Application of Fuzzy Systems and Soft Computing (ICAFS2006), Siegen, Germany.
247-255
WHO, 2017. World Health Organization, Media centre, cardiovascular diseases fact sheet webpage.
http://www.who.int/mediacentre/factsheets/fs317/en/ (12.05.2017)