Gene Selection in Cancer Classification Using Sparse Logistic Regression with L1/2 Regularization

In recent years, gene selection for cancer classification based on the expression of a small number of gene biomarkers has been the subject of much research in genetics and molecular biology. The successful identification of gene biomarkers will help in the classification of different types of cance...

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Bibliographic Details
Published inApplied sciences Vol. 8; no. 9; p. 1569
Main Authors Wu, Shengbing, Jiang, Hongkun, Shen, Haiwei, Yang, Ziyi
Format Journal Article
LanguageEnglish
Published Basel MDPI AG 06.09.2018
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Summary:In recent years, gene selection for cancer classification based on the expression of a small number of gene biomarkers has been the subject of much research in genetics and molecular biology. The successful identification of gene biomarkers will help in the classification of different types of cancer and improve the prediction accuracy. Recently, regularized logistic regression using the L 1 regularization has been successfully applied in high-dimensional cancer classification to tackle both the estimation of gene coefficients and the simultaneous performance of gene selection. However, the L 1 has a biased gene selection and dose not have the oracle property. To address these problems, we investigate L 1 / 2 regularized logistic regression for gene selection in cancer classification. Experimental results on three DNA microarray datasets demonstrate that our proposed method outperforms other commonly used sparse methods ( L 1 and L E N ) in terms of classification performance.
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ISSN:2076-3417
2076-3417
DOI:10.3390/app8091569