Document Type
Article
Publication Date
1-1-2010
Abstract
The scope of the difficulties that has been addressed in dengue disease includes the definition of the risk criteria in dengue disease and the prediction of the risk in dengue patients. It is critical to precisely and efficiently predict the level of risk in dengue disease for clinical care, surveillance and lifesaving. Even though some studies showed significant results in this area, a complete, systematic approach for predicting the risk in dengue disease has never been attained yet. Therefore, this study was carried out to develop a noninvasive intelligent technique for predicting the risk in dengue patients. A combination of the self-organizing map (SOM) and multilayer feed-forward neural networks (MFNN) was employed for this task. Clinical manifestations and bioelectrical impedance analysis (BIA) parameters belonging to the dengue patients were considered for this aim. The SOM was used to define the significant risk predictors, whereas the MFNN was employed for constructing the prediction model. Seven significant risk predictors as defined by SOM were employed for the dengue patient risk classification. The MFNN prediction model defined by 10 hidden neurons, momentum of 0.99, learning rate of 0.1 and iteration rate of 20,000 achieved a 70 predicative accuracy with 0.121 sum squared error. © 2009 Elsevier Ltd. All rights reserved.
Keywords
Artificial neural networks, Bioelectrical impedance analysis, Dengue fever, Multilayered perceptron, Self-organizing map, Symptoms/signs, Backpropagation, Conformal mapping, Electric impedance, Learning algorithms, Mathematical models, Strength of materials, Multilayer neural networks
Publication Title
Expert Systems with Applications
ISSN
0957-4174
Recommended Citation
Faisal, T.; Ibrahim, F.; and Taib, M.N., "A noninvasive intelligent approach for predicting the risk in dengue patients" (2010). Research Publications (2006 to 2010). 4258.
https://knova.um.edu.my/research_publications_2006_2010/4258
Divisions
fac_eng
Volume
37
Issue
3
Additional Information
533SY Times Cited:7 Cited References Count:32