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Automatic classification of brain diseases in mr images using genetic algorithm and support vector machine

Authors
Kim, G.Y.Lee, J.H.Hwang, Y.N.Kim, S.M.
Issue Date
2016
Publisher
Acta Press
Keywords
Brain diseases; Genetic algorithm; Magnetic resonance image; Support vector machine
Citation
Proceedings of the 12th IASTED International Conference on Biomedical Engineering, BioMed 2016, pp 213 - 219
Pages
7
Indexed
SCOPUS
Journal Title
Proceedings of the 12th IASTED International Conference on Biomedical Engineering, BioMed 2016
Start Page
213
End Page
219
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/24556
DOI
10.2316/P.2016.832-012
Abstract
This study presents a method to improve the classification accuracy of brain disease that consist of Alzheimer's disease and the brain tumor in magnetic resonance (MR) images. For this purpose, 71 MR images that consist of 4 normal, 14 Alzheimer's disease, and 53 brain tumor images were acquired from 12 patients. A total of 42 features were extracted from MR images using first order statistics, gray level co-occurrence matrix, and Laws' texture energy measures. Then, the optimized feature set was selected by using genetic algorithm (GA) and support vector machine classified the brain MR images into normal, Alzheimer's disease, and brain tumor. GA method selected 10 different feature sets, and the classification accuracy of each feature set were compared to find the best set. Finally, the performance of the classification was evaluated using sensitivity, specificity, accuracy, and receiver operating characteristic curve. The results of this study showed that all evaluation parameters were improved for classification of brain disease through the application of GA selection for all classes. In particular, the specificity greatly increased from 87.8% to 95.0% in classification between Alzheimer's disease and brain tumor. In addition, the radial basis function kernel showed the highest classification accuracy of 96.2% among all kernel conditions examined. These experimental results demonstrated that the proposed method improve performance to classify the brain MR images.
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