Based on gene expression, we have classified 53 colon cancer patients with UICC II into two groups: relapse and no relapse. Samples were taken from each patient, and gene information was extracted. Of the 53 samples examined, 500 genes were considered proper through analyses by S-Kohonen, BP, and SVM neural networks. Classification accuracy obtained by S-Kohonen neural network reaches 91%, which was more accurate than classification by BP and SVM neural networks. The results show that S-Kohonen neural network is more plausible for classification and has a certain feasibility and validity as compared with BP and SVM neural networks.
CITATION STYLE
Hu, H. P., Niu, Z. J., Bai, Y. P., & Tan, X. H. (2015). Cancer classification based on gene expression using neural networks. Genetics and Molecular Research, 14(4), 17605–17611. https://doi.org/10.4238/2015.December.21.33
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