DUBStepR: correlation-based feature selection for clustering single-cell RNA sequencing data

Bobby Ranjan(Agency for Science, Technology and Research), Wenjie Sun(Agency for Science, Technology and Research), Jinyu Park(Agency for Science, Technology and Research), Kunal Mishra(Agency for Science, Technology and Research), Ronald Xie(Agency for Science, Technology and Research), Fatemeh Alipour(Agency for Science, Technology and Research), Vipul Singhal(Agency for Science, Technology and Research), Florian Schmidt(Agency for Science, Technology and Research), Ignasius Joanito(Agency for Science, Technology and Research), Nirmala Arul Rayan(Agency for Science, Technology and Research), Michelle Gek Liang Lim(Agency for Science, Technology and Research), Shyam Prabhakar(Agency for Science, Technology and Research)
bioRxiv (Cold Spring Harbor Laboratory)
October 8, 2020
Cited by 6Open Access
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Abstract

Feature selection (marker gene selection) is widely believed to improve clustering accuracy, and is thus a key component of single cell clustering pipelines. However, we found that the performance of existing feature selection methods was inconsistent across benchmark datasets, and occasionally even worse than without feature selection. Moreover, existing methods ignored information contained in gene-gene correlations. We therefore developed DUBStepR ( D etermining the U nderlying B asis using Step wise R egression), a feature selection algorithm that leverages gene-gene correlations with a novel measure of inhomogeneity in feature space, termed the Density Index (DI). Despite selecting a relatively small number of genes, DUBStepR substantially outperformed existing single-cell feature selection methods across diverse clustering benchmarks. In a published scRNA-seq dataset from sorted monocytes, DUBStepR sensitively detected a rare and previously invisible population of contaminating basophils. DUBStepR is scalable to over a million cells, and can be straightforwardly applied to other data types such as single-cell ATAC-seq. We propose DUBStepR as a general-purpose feature selection solution for accurately clustering single-cell data.


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