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Application of Sparse Representation in Bioinformatics

Shuguang Han, Ning Wang, Yuxin Guo, Furong Tang, Lei Xu, Ying Ju, Lei Shi

2021Frontiers in Genetics13 citationsDOIOpen Access PDF

Abstract

Inspired by L1-norm minimization methods, such as basis pursuit, compressed sensing, and Lasso feature selection, in recent years, sparse representation shows up as a novel and potent data processing method and displays powerful superiority. Researchers have not only extended the sparse representation of a signal to image presentation, but also applied the sparsity of vectors to that of matrices. Moreover, sparse representation has been applied to pattern recognition with good results. Because of its multiple advantages, such as insensitivity to noise, strong robustness, less sensitivity to selected features, and no "overfitting" phenomenon, the application of sparse representation in bioinformatics should be studied further. This article reviews the development of sparse representation, and explains its applications in bioinformatics, namely the use of low-rank representation matrices to identify and study cancer molecules, low-rank sparse representations to analyze and process gene expression profiles, and an introduction to related cancers and gene expression profile database.

Topics & Concepts

Sparse approximationOverfittingComputer sciencePattern recognition (psychology)Lasso (programming language)Robustness (evolution)Artificial intelligenceRepresentation (politics)Feature selectionMatching pursuitCompressed sensingBiologyArtificial neural networkGenePolitical scienceLawPoliticsBiochemistryWorld Wide WebGene expression and cancer classificationMachine Learning in BioinformaticsSparse and Compressive Sensing Techniques
Application of Sparse Representation in Bioinformatics | Litcius