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Publication Date: 04 Feb 2010
Journal: Cancer Informatics
doi: 10.4137/CIN.S3794
Gene selection is of vital importance in molecular classification of cancer using high-dimensional gene expression data. Because of the distinct characteristics inherent to specific cancerous gene expression profiles, developing flexible and robust feature selection methods is extremely crucial. We investigated the properties of one feature selection approach proposed in our previous work, which was the generalization of the feature selection method based on the depended degree of attribute in rough sets. We compared the feature selection method with the established methods: the depended degree, chi-square, information gain, Relief-F and symmetric uncertainty, and analyzed its properties through a series of classification experiments. The results revealed that our method was superior to the canonical depended degree of attribute based method in robustness and applicability. Moreover, the method was comparable to the other four commonly used methods. More importantly, the method can exhibit the inherent classification difficulty with respect to different gene expression datasets, indicating the inherent biology of specific cancers.
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The editorial staff of Biomarkers in Cancer are very efficient and helpful. I am happy to work with them. I look forward to reviewing future manuscripts.Dr Xi Liu (National Cancer Institute, National Institutes of Health, Bethesda, MD, USA ) What our authors say
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