APPLICATION OF RADIAL BASIS FUNCTION NETWORK ON PARKINSON DATA
DOI:
https://doi.org/10.11113/jt.v77.7014Keywords:
Radial Basis Function (RBFN), Parkinson data, R2Abstract
Radial basis function networks have many uses, including the function approximation, time series production, classification and system control. Radial basis function based diagnosis of medical diseases has been taken into great consideration in recent studies. The real data from UCI Machine Learning websites that used 500 Parkinson’s patients and 7 different attributes as the subject were analyzed by using Statistical Package for Social Sciences (SPSS) 21.0. Next, the result of SPSS software will be used and run by MATLAB software. From the research that has been done by other researchers, it was found that MATLAB software is much better in producing the best results for Radial Basis Function. The value of R2 for Multiple Linear Regression and Radial Basis Function is 0.7450 and 0.9702 respectively. Hence, the Radial Basis Function method shows that there is more variability is explained by this modelReferences
Can, M. Neural Networks to Diagnose the Parkinson’s Disease. Southest Europe Journal of Soft Computing. 68-73.
Gharehchopogh, F. S. & Mohammadi, P. 2013. A Case Study Of Parkinson’s Disease Diagnosis Using Artificial Neural Networks. International Journal of Computer Application. 975-8887.
Santos, R. B., Markus, R., Santiago, J. B. and Ana, M. F. F. 2013. Comparison Between Multilayer Feedforward Neural Networks and a Radial Basis Function Network to Detect and Locate Leaks in Pipelines Transporting Gas. The Italian Association of Chemical Engineering. 32: 1375-1380.
Kuo, J. T., Hsieh, M. H., Lung, W. S. and She, N. 2007. Using Artificial Neural Network for Reservoir Entrophication Prediction. Ecological Modelling. 200: 171-177.
Kim, M. and Gilley, J. E. 2008. Artificial Neural Network Estimation of Soil Erosion and Nutrient Concentrations in Runoff from Land Application Areas. Computers and Electronics in Agriculture. 2: 268-275.
Hao, Y., Xie, T. T., Stanislaw, P. and Bogdan, M. W. 2011. Advantages of Radial Basis Function Networks for Dynamic System Design. IEEE Transactions on Industrial Electronics. 58: 5438-5450.
Wadhonkar, M., Tijare, P. A and Sawalkar, S. N. 2013. Classification of Heart Disease Dataset using Multilayer Feed Forward Backpropagation Algorithm. International Journal of Application or Innovation in Engineering of Management. 214-219.
Rudiger, W. B. 2001. Medical Analysis and Diagnosis by Neural Networks. J. W. Goethe University, Computer Science Department. Germany.
Saeed, M., Mehran, M., Hossein, A., Rezvan, N. and Yones, N. 2009. Application of Multilayer Perceptron and Radial Basis Function Neural Networks in Differentiating between Chronic Obstructive Pulmonary and Congestive Heart Failure Diseases. Expert Systems With Applications 3G. 6956-6959.
Tou, J. T. and Gonzalea, R. C. 1974. Pattern Recognition. Reading, MA: Addison-Wesley.
Hannan, S. A., Manza, R. R. and Ramteke, R. J. 2010. Generalized Regression Neural Network and Radial Basis Function for Heart Disease Diagnosis. International Journal of Computer Applications. 7: 7-13.
Bullinaria, J. A. 2014. Radial Basis Function Netwoks: Algorithms. Neural Computation: Lecture 14.
Defeng, W., Kevin, W., Zi, M., Burgess, J. G., Song, P. and Aziz, T. Z. 2010. Prediction of Parkinson’s Disease Tremor Onset using Radial Basis Function Neural Networks. Expert Systems with Applications. 37: 2923-2928.
Moghaddam, M. J. and Zadeh, H. S. Medical Image Segmentation Using Artificial Neural Networks. Methodological Advances and Biomedical Applications. 121-138.
Moody. J. and Darken, C. J. 1989. Fast Learning in Network of Locally-tuned Processing Units. Neural Computation. 1: 281-294.
Tao, K. A. 1993. Closer Look at The Radial Basis Function Networks. A. L. A Singh (Ed.). Conference Record of 27th Asilomar Conference on Signals, System and Computers. New York. 401-405.
Yan, X. B., Xiong, W. Q., Hu, L. and Zhao, K. 2014. Cancer Prediction Based On Radial Basis Function Neural Network With Particle Swarm Optimization. Asian Pac. J. Cancer Prev. 15: 7775-7780.
Yurtkuran, A., Tok, M., and Emel, E. 2013. A Clinical Decision Support System for Femoral Peripheral Arterial Disease Treatment. Comput Math Methods Med. 898041.
Gengaje, S. R. and Alandkar, L. S. 2012. Prediction of Survival of Burn Patient using Radial Basis Function Network. Avishkar – Solapur University Research Journal. 2: 1-6.
Arjmand, M., Kompany-Zareh, M., Vasighi, M., Parvizzadeh, N., Zamani, Z., and Nazgooei, F. 2010. Nuclear Magnetic Resonance-based Screening of Thalassemia and Quantification of Some Hematological Parameters using Chemometric Methods. Talanta. 81: 1229-1236.
Masala, G. L., Golosio, B., Cutzu, R. and Pola, R. 2013. A Two-layered Classifier Based on The Radial Basis Function for The Screening of Thalassemia. Computers in Biology and Medicine. 43: 1724-1731.
Baxt, W. 1990. Use of An Artificial Neural Network for Data Analysis in Clinical Decision Making: The Diagnosis of Acute Coronary Occlusion. Neural Computation. 2: 480-489.
Bounds, D., and Llyod, P. J. 1988. A Multilayer Perceptron Network for The Diagnosis of Low Back Pain. Proc. IEEE International Conference on Neural Networks. II: 481-489.
McGonigal, M. 1994. A New Technique for Survival Prediction In Trauma Care Using A Neural Network. Proc. World Conference on Neural Networks. 3495-3498.
Sarimveis, H., Kiranoudis, C. T., Chatziioannou, A. A., Oikonomou, N. and Aidinis, V. 2008. Radial Basis Function Neural Networks Classification for The Recognition of Idiopathic Pulmonary Fibrosis in Microscopic Images. Information Technology in Biomedicine, IEEE Transaction. 12: 42-54.
Tsanas, A., Little, M. A., McSharry, P. E. and Ramig, L.O. 2009. Parkinsons Telemonitoring Data Set. https://archive.ics.uci.edu/ml/datasets/Parkinsons+Telemonitoring
Olanrewaju, A. O., Adisa, A. J. and Pule, A. K. 2012. Comparing Performance of MLP and RBF Neural Network Models for Predicting South Africa’s Energy Consumption. Journal of Energy in Southern Africa. 23: 40-46.
Zainudin, N. F., Mohamed, N., Aleng, N. A. and Ahmad Rusmili, S. H. 2014. Modeling Multiple Linear Regression on Parkinson Data. 2014. The 10th IMT-GT International Conference on Mathematics, Statistics and its Application (ICSMA) 2014. Kuala Terengganu, Malaysia. 14-16 October 2014. 577-584.
Downloads
Published
Issue
Section
License
Copyright of articles that appear in Jurnal Teknologi belongs exclusively to Penerbit Universiti Teknologi Malaysia (Penerbit UTM Press). This copyright covers the rights to reproduce the article, including reprints, electronic reproductions, or any other reproductions of similar nature.