Publication: Thalassaemia classification by neural networks and genetic programming
Issued Date
2007-02-01
Resource Type
ISSN
00200255
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2-s2.0-33751229665
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Mahidol University
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SCOPUS
Bibliographic Citation
Information Sciences. Vol.177, No.3 (2007), 771-786
Suggested Citation
Waranyu Wongseree, Nachol Chaiyaratana, Kanjana Vichittumaros, Pranee Winichagoon, Suthat Fucharoen Thalassaemia classification by neural networks and genetic programming. Information Sciences. Vol.177, No.3 (2007), 771-786. doi:10.1016/j.ins.2006.07.009 Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/24405
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Title
Thalassaemia classification by neural networks and genetic programming
Abstract
This paper presents the use of a neural network and a decision tree, which is evolved by genetic programming (GP), in thalassaemia classification. The aim is to differentiate between thalassaemic patients, persons with thalassaemia trait and normal subjects by inspecting characteristics of red blood cells, reticulocytes and platelets. A structured representation on genetic algorithms for non-linear function fitting or STROGANOFF is the chosen architecture for genetic programming implementation. For comparison, multilayer perceptrons are explored in classification via a neural network. The classification results indicate that the performance of the GP-based decision tree is approximately equal to that of the multilayer perceptron with one hidden layer. But the multilayer perceptron with two hidden layers, which is proven to have the most suitable architecture among networks with different number of hidden layers, outperforms the GP-based decision tree. Nonetheless, the structure of the decision tree reveals that some input features have no effects on the classification performance. The results confirm that the classification accuracy of the multilayer perceptron with two hidden layers can still be maintained after the removal of the redundant input features. Detailed analysis of the classification errors of the multilayer perceptron with two hidden layers, in which a reduced feature set is used as the network input, is also included. The analysis reveals that the classification ambiguity and misclassification among persons with minor thalassaemia trait and normal subjects is the main cause of classification errors. These results suggest that a combination of a multilayer perceptron with a blood cell analysis may give rise to a guideline/hint for further investigation of thalassaemia classification. © 2006 Elsevier Inc. All rights reserved.