Gene selection for microarray data classification via subspace learning and manifold regularization

被引:0
作者
Chang Tang
Lijuan Cao
Xiao Zheng
Minhui Wang
机构
[1] China University of Geosciences,School of Computer Science
[2] Huai’an Second People’s Hospital Affiliated to Xuzhou Medical College,Institute of Cardiovascular Disease Research
[3] Puren Hospital Affiliated to Wuhan University of Science and Technology,Department of Endocrinology and Metabolism
[4] People’s Hospital of Lian’shui County,Department of Pharmacy
来源
Medical & Biological Engineering & Computing | 2018年 / 56卷
关键词
Gene selection; Microarray data classification; Subspace learning; Manifold regularization;
D O I
暂无
中图分类号
学科分类号
摘要
With the rapid development of DNA microarray technology, large amount of genomic data has been generated. Classification of these microarray data is a challenge task since gene expression data are often with thousands of genes but a small number of samples. In this paper, an effective gene selection method is proposed to select the best subset of genes for microarray data with the irrelevant and redundant genes removed. Compared with original data, the selected gene subset can benefit the classification task. We formulate the gene selection task as a manifold regularized subspace learning problem. In detail, a projection matrix is used to project the original high dimensional microarray data into a lower dimensional subspace, with the constraint that the original genes can be well represented by the selected genes. Meanwhile, the local manifold structure of original data is preserved by a Laplacian graph regularization term on the low-dimensional data space. The projection matrix can serve as an importance indicator of different genes. An iterative update algorithm is developed for solving the problem. Experimental results on six publicly available microarray datasets and one clinical dataset demonstrate that the proposed method performs better when compared with other state-of-the-art methods in terms of microarray data classification.
引用
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页码:1271 / 1284
页数:13
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