Open Access
Subscription Access
Open Access
Subscription Access
An ANN Based Classification Algorithm for Swine Flu Diagnosis
Subscribe/Renew Journal
Machine learning technology adds a new potential to medical diagnosis systems. This paper presents an Artificial Neural Network (ANN) based swine flu diagnosis model. The proposed model selects significant features for swine flu diagnosis by a feature selection algorithm using k- Nearest Neighbour (k-NN) classifier, which reduces the size of data to be used for training the ANN model with an objective of making the training more efficient and accurate. A threshold value is determined by ANN to identify positive and negative cases and the model classifies the test cases either positive or negative based on the threshold value. The results obtained with the proposed model demonstrate the ability of the model to provide high level of accuracy for swine flu diagnosis. The assessment (classification) ability of the proposed ANN based model is compared with that of Case Based Reasoning (CBR) approaches and is observed that the proposed model is superior to others.
Keywords
Artificial Neural Network, Back-Propagation, Pattern, Pattern Classification, CBR.
Subscription
Login to verify subscription
User
Font Size
Information
- Benjamin, A., Altman, B., O’Gorman, C., Rodeman, R., & Peaz, T. L. (1997). Use of artificial neural networks for engineering analysis o f complex physical systems. Proceedings of the 13th Hawaii International Conference on System Sciences, (pp. 511-520).
- Bhatikar, S. R., & Mahajan, R. L. (2002). Artificial neural-network-based diagnosis of CVD barrel reactor. IEEE Transactions on Semiconductor Manufacturing, February, 15(1), 71-78.
- Chakraborty, B., Srinivas, S. I., Sood, P., Nabhi, V., & Ghosh, D. (2011). Case based reasoning methodology for diagnosis o f swine flu. IEEE GCC Conference and Exhibition (GCC), February, 19(22), 132-135.
- Dogan, S. Z., Arditi, D., & Gunaydin, H. M. (2006). Comparison of ANN and CBR models for early cost predictioni ofi structurali systems. 17th International Conference on the Applications of Computer Science and Mathematics in Architecture and Civil Engineering K. Gurlebeck and C. Konke (eds.) Weimar, Germany, July, (pp. 12-14).
- Fung, C. C., Iyer, V., Brown, W., & Wong, K. K. (2005). Comparing the performance of different neural networks architectures for the prediction of mineral prospectively. IEEE Proceedings of the Fourth International Conference on Machine Learning and Cybernetics, Guangzhou, August, (pp. 394-398).
- Grossi, E., & Buscema, M. (2010). Artificial adaptive systems and predictive medicine. IEEE Annual Meeting of the North American Fuzzy Information Processing Society (NAFIPS 2010), July, Toronto, Ontario, Canada, (pp. 1-6).
- Hashem and, R. R., & Stafford, N. L. (1993). A back-propagation neural network for risk assessment. IEEE Conference on Computers and Communications 12th Annual International Phoenix Conference on March, (pp. 565-570).
- Janghel, R. R., Shukla, A., Tiwari, R., & Tiwari, P. (2009). International conference on new trends in information and service science. IEEE Computer Society, (pp. 170-175).
- Jeatrakul, P. & Wong, K.W. (2009). Comparing the Performance o f Different Neural Networks for Binary Classification Problems. IEEE Eighth International Symposium on Natural Language Processing, (pp. 20-22).
- Khoa, N. L. D., Sakakibara, K., & Nishikawa, I. (2006). Stock price forecasting using back propagation neural networks with time and profit based adjusted weight factors. SICE-ICASE International Joint Conference in Bexco, Busan, Korea, October, (pp. 5484-5488).
- Lei, S., & Cheng, W. X. (2010). Artificial neural networks: Current applications in modern medicine. International Conference on Computer and Communication Technologies in Agriculture Engineering, June, 2(12-13), 383-387.
- Paola, J. D., & Schowengerdt, R. A. (1995). A detailed comparison o f back propagation neural network and maximum-likelihood classifiers for urban land use classification. IEEE Transactions on Geoscience and Remote Sensing, July, 33(4), 981-996.
- Pattichis, C. S., & Pattichis, M. S. (2001). Adaptive neural network imaging in medical systems. In IEEE Proceedings: Signals, Systems and Computers, 1, 313-317.
- Rajoura, O. P., Roy, R., Agarwal, P., & Kannan, A. T. (2011). A study of the swine flu (H1N1) epidemic among health care providers of a medical college hospital of Delhi. Indian Journal o f Community Medicine, July-September, 36(3), 187-190.
- Simoes, M. G., Furukawa, C. M., Mafra, A. T., & Adamowski, J. C. (2000). A Novel competitive learning neural network based acoustic transmission system for oil-well monitoring. IEEE Transactions on Industry Applications, March/April, 36(2), 484-491.
- Soda, P., Pechenizkiy, M., Tortorella, F., & Tsymbal, A.i (2010). Knowledge discovery and computer based decision support in biomedicine. Artificial Intelligence in Medicine, 50, 1-2.
- Teng, C. C., & Wah, B. W. (1996). Automated learning fo r reducing the configuration o f a fe ed forward neural network. IEEE Transactions on Neural Networks, September, 7(5), 1072-1085.
- Thakkar, B. A., Hasan, M. I., & Desai, M. A. (2010). Health care decision support system for swine flu prediction using naive bayes classifer. International Conference on Advances in Recent Technologies in Communication and Computing: IEEE Computer society, October, 16(17), 101-105.
- Villiers, J. D., & Barnard, E. (1993). Back propagation neural nets with one and two hidden layers. IEEE Transactions on Neural Network, January, 4(1), 136-141.
- Xu, Y., & Chaudhari, N. S. (2003). Application of binary neural network for classification. Proceedings of the 2nd International Conference on Machine Learning and Cybernetics, Wan, November, 2-5, 1343-1348.
Abstract Views: 382
PDF Views: 0