Intrinsic entropy model for feature selection of scRNA-seq data

J Mol Cell Biol. 2022 Jan 31:mjac008. doi: 10.1093/jmcb/mjac008. Online ahead of print.ABSTRACTRecent advances of single-cell RNA sequencing (scRNA-seq) technologies have led extensive study on cellular heterogeneity and cell-to-cell variation. However, the high frequency of dropout events and noise in scRNA-seq data confound the accuracy of the downstream analysis, i.e. clustering analysis, whose accuracy depends heavily on the selected feature genes. Here, by deriving entropy decomposition formula, we proposed a feature selection method, i.e. intrinsic entropy (IE) model, to identify the informative genes for accurately clustering analysis. Specifically, by eliminating the 'noisy' fluctuation or extrinsic entropy (EE), we extracted the IE of each gene from total entropy (TE), i.e. TE=IE+EE. We showed that the IE of each gene actually reflects the regulatory fluctuation of this gene in a cellular process, and thus high-IE genes provide rich information on cell type or state analysis. To validate the performance of the high-IE genes, we conducted the computational analysis on both simulated datasets and real single-cell datasets by comparing with other representative methods. The results show that our IE model is not only broadly applicable and robust for different clustering and classification methods, but also sensitive for novel cell types. Our results also demonstrate that the intrinsic entropy/fluctuation of a gene serves as information rather than noise in contrast to i...
Source: Mol Biol Cell - Category: Molecular Biology Authors: Source Type: research