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| Designing an Artificial Neural Network Model for the Prediction of Thrombo-embolic Stroke
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Source |
International Journal of Biometrics and Bioinformatics (IJBB) |
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Table of Contents |
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Volume: 3 Issue: 1 |
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Pages: 1-18 |
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Publication
Date: February 2009 |
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ISSN
(Online): 1985-2347 |
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Pages |
10 - 18 |
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Author(s) |
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Published
Date |
15-03-2009 |
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Publisher |
CSC
Journals, Kuala Lumpur,
Malaysia |
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ADDITIONAL
INFORMATION |
| Keywords Abstract References Cited by Related Articles Collaborative
Colleague |
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KEYWORDS: Artificial Intelligence, BPN, Neural Network, Thrombo-embolic Stroke |
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| Artificial Neural Networks (ANN) are established analytical methods in bio-medical research. They have repeatedly outperformed traditional tools for pattern recognition and clinical outcome prediction while assuring continued adoption and learning. Extensive research had confirmed the utility of ANN for the solution of clinical diagnosis and prognostic problems. In this paper, we propose an ANN model that is understandable, practicable and capable of achieving accurate prediction of Thrombo-embolic Stroke disease. This model assists the physicians in taking decisions in the stages of diagnosis, based on the output generated by the system. |
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| 1 |
Mohr, J.P., (2001). Stroke Analysis, 4th Edition, Oxford Press, New York. |
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| 2 |
American Heart Association. Heart Disease and Stroke Statistics — 2004 Update. Dallas, Tex.: American Heart Association; 2003. |
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| 3 |
Maurizio Bevilacqua (2005), Failure rate prediction with artificial neural networks, Journal of Quality in Maintenance Engineering Vol. 11 No. 3, 2005 pp. 279-294 Emerald Group Publishing Limited 1355-2511 |
|
|
| 4 |
Nazeran, H., & Behbehani, K. (2001). Neural networks in processing and analysis of biomedical signals. In M. Akay (Ed.), Nonlinear biomedical signal processing: Fuzzy logic, neural networks and new algorithms, pp. 69–97. |
|
|
| 5 |
Celler, B.G., & Chazal, P. (1998). Low computational cost classifiers for ECG diagnosis using neural networks. Proceedings of the International Conference of Engineering in Medicine & Biology Society (EMBC 1998) ,pp. 1337–1340. |
|
|
| 6 |
Rupa banerjee et al.,(2003) , Predicting mortality in patients with cirrhosis of liver with application of neural network technology, 2003 Blackwell Publishing Asia Pvt. Ltd. |
|
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| 7 |
Green, M. et al.(2006).Comparison between neural networks and multiple logistic regression to predict acute coronary syndrome in the emergency room , Elsevier B.V. |
|
|
| 8 |
Ham, P.M. and Han, S. "Classification of cardiac arrhythmias using fuzzy artmap," IEEE Transactions on Biomedical Engineering, 43(4): 425–430 (1996). |
|
|
| 9 |
Modai, I., Israel, A., Mendel, S., Hines, E.L. and Weizman, R., "Neural network based on adaptive resonance theory as compared to experts in suggesting treatment for schizophrenic and unipolar depressed in-patients," Journal of Medical Systems, 20(6):403–412 (1996). |
|
|
| 10 |
Mattias Ohlsson et al., (2006). The added value of ECG-gating for the diagnosis of myocardial infarction using myocardial perfusion scintigraphy and artificial neural networks, Clinical Physiological Functional Imaging 26, pp301–304. |
|
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| 11 |
Furness P N, Levesley J, Luo Z, Taub N, Kazi J I, Bates W D & Nicholson M L (1999) , A neural network approach to the biopsy diagnosis of early acute renal transplant rejection Histopathology 35, 461–467. |
|
|
| 12 |
Papaloukas, C.,Fotiadis, D. I.,Likas, A., &Michalis, L. K. (2002b). An ischemia detection method based on artificial neural networks. Artificial Intelligence in Medicine, 24, 167–178 |
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| 13 |
Elmer Andres Fernández, Rodolfo Valtuille, Jesus Rodriguez Presedo, and Peter Willshaw (2005) Comparison of Standard and Artificial Neural Network Estimators of Hemodialysis Adequacy , International Center for Artificial Organs and Transplantation. 29(2):159–165, Blackwell Publishing, Inc. |
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| 14 |
Peter Gjertsson et al.,(2006) The added value of ECG-gating for the diagnosis of myocardial infarction using myocardial perfusion scintigraphy and artificial neural networks, Clinical Physiological Functional Imaging 26, pp301–304. |
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| 15 |
Baxt WG. Application of artificial neural networks to clinical medicine. Lancet. 1995; 346 (8983): 1135- 8. |
|
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| 16 |
Rumelhart, D.E., McClelland, J.L., and the PDF Research Group (1986), Parallel Distributed Processing, MA: MIT Press, Cambridge. |
|
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| 17 |
Neuro Intelligence using Alyuda. Source Available at www.alyuda.com. Last Accessed 10 May 2008. |
|
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| 18 |
D.Shanthi, G.Sahoo & N.Saravanan (2008). Input Feature Selection using Hybrid Neuro-Genetic Approach in the diagnosis of Stroke. International Journal of Computer Science and Network Security, ISSN: 1738-7906, Vol.8, No.12, pp.99-107. |
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R. Köker, “A Neuro-Genetic Approach to the Inverse Kinematics Solution of Robotic Manipulators” Scientific Research and Essays, 6(13), pp. 2784-2794, 4 July, 2011. |
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S. Gupta, S. Bhardwaj and P. K. Bhatia, “A Reminiscent Study Of Nature Inspired Computation” International Journal of Advances in Engineering & Technology 1(2), pp.117-125, May 2011. |
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M. A. Sapon, K. Ismail and S. Zainudin, “Prediction of Diabetes by Using Artificial Neural Networks" in Proceedings of International Conference on Circuits, System and Simulation IPCSIT vol.7 (2011) © (2011) IACSIT Press, Singapore, 2011, pp. 299-303. |
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S. Gupta, S. Bhardwaj and P. K. Bhatia, “A Reminiscent Study of Nature Inspired Computation” International Journal of Advances in Engineering & Technology, 1(2), ,pp.117-125, May 2011. |
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N. Islam,N. I. Bin Hamid , A. Mahmud , S..M. Rahman and A. H. Khan, ” Detection of Some Major Heart Diseases Using Fractal Analysis” International Journal of Biometrics and Bioinformatics (IJBB) Volume: 4 (2), pp. 63 – 70, June 2010. |
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D. R. Chowdhury, M. Chatterjee and R. K. Samanta, “An Artificial Neural Network Model for Neonatal Disease Diagnosis” International Journal of Artificial Intelligence and Expert Systems (IJAE), 2 (3), pp. 96 – 106, Aug. 2011. |
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| Shanthi Dhanushkodi : Colleagues
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| G.Sahoo : Colleagues
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| Saravanan Nallaperumal : Colleagues
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