Title :
Gene Selection Using Locality Sensitive Laplacian Score
Author :
Bo Liao ; Yan Jiang ; Wei Liang ; Wen Zhu ; Lijun Cai ; Zhi Cao
Author_Institution :
Key Lab. for Embedded & Network Comput. of Hunan Province, Hunan Univ., Changsha, China
Abstract :
Gene selection based on microarray data, is highly important for classifying tumors accurately. Existing gene selection schemes are mainly based on ranking statistics. From manifold learning standpoint, local geometrical structure is more essential to characterize features compared with global information. In this study, we propose a supervised gene selection method called locality sensitive Laplacian score (LSLS), which incorporates discriminative information into local geometrical structure, by minimizing local within-class information and maximizing local between-class information simultaneously. In addition, variance information is considered in our algorithm framework. Eventually, to find more superior gene subsets, which is significant for biomarker discovery, a two-stage feature selection method that combines the LSLS and wrapper method (sequential forward selection or sequential backward selection) is presented. Experimental results of six publicly available gene expression profile data sets demonstrate the effectiveness of the proposed approach compared with a number of state-of-the-art gene selection methods.
Keywords :
Laplace equations; bioinformatics; feature selection; genetics; learning (artificial intelligence); minimisation; pattern classification; tumours; algorithm framework; biomarker discovery; discriminative information; feature characterization; gene expression profile data sets; global information; local between-class information maximisation; local geometrical structure; local within-class information minimisation; locality sensitive Laplacian score; manifold learning standpoint; microarray data; ranking statistics; sequential backward selection; sequential forward selection; state-of-the-art gene selection methods; superior gene subsets; supervised gene selection method; tumor classification; two-stage feature selection method; variance information; wrapper method; Bioinformatics; Computational biology; Feature extraction; Gene expression; Genomics; Laplace equations; Local margin maximization; feature selection; gene expression profile analysis; manifold learning;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2014.2328334