Litcius/Paper detail

Deep Imputation Bi-Stochastic Graph Regularized Matrix Factorization for Clustering Single-Cell RNA-Sequencing Data

Wei Lan, Jianwei Chen, Mingyang Liu, Qingfeng Chen, Jin Liu, Jianxin Wang, Yi‐Ping Phoebe Chen

2024IEEE Transactions on Computational Biology and Bioinformatics18 citationsDOI

Abstract

By generating massive gene transcriptome data and analyzing transcriptomic variations at the cell level, single-cell RNA-sequencing (scRNA-seq) technology has provided new way to explore cellular heterogeneity and functionality. Clustering scRNA-seq data could discover the hidden diversity and complexity of cell populations, which can aid to the identification of the disease mechanisms and biomarkers. In this paper, a novel method (DSINMF) is presented for clustering single cell RNA sequencing data by using deep matrix factorization. Our proposed method comprises four steps: first, the feature selection is utilized to remove irrelevant features. Then, the dropout imputation is used to handle missing value problem. Further, the dimension reduction is employed to preserve data characteristics and reduce noise effects. Finally, the deep matrix factorization with bi-stochastic graph regularization is used to obtain cluster results from scRNA-seq data. We compare DSINMF with other state-of-the-art algorithms on nine datasets and the results show our method outperformances than other methods. The code can be downloaded from https://github.com/lanbiolab/DSINMF.

Topics & Concepts

Matrix decompositionComputer scienceCluster analysisDimensionality reductionImputation (statistics)Artificial intelligenceData miningNon-negative matrix factorizationPattern recognition (psychology)Missing dataMachine learningEigenvalues and eigenvectorsQuantum mechanicsPhysicsSingle-cell and spatial transcriptomicsGene expression and cancer classificationMicroRNA in disease regulation