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Zero-preserving imputation of single-cell RNA-seq data.


ABSTRACT: A key challenge in analyzing single cell RNA-sequencing data is the large number of false zeros, where genes actually expressed in a given cell are incorrectly measured as unexpressed. We present a method based on low-rank matrix approximation which imputes these values while preserving biologically non-expressed genes (true biological zeros) at zero expression levels. We provide theoretical justification for this denoising approach and demonstrate its advantages relative to other methods on simulated and biological datasets.

SUBMITTER: Linderman GC 

PROVIDER: S-EPMC8752663 | biostudies-literature | 2022 Jan

REPOSITORIES: biostudies-literature

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Zero-preserving imputation of single-cell RNA-seq data.

Linderman George C GC   Zhao Jun J   Roulis Manolis M   Bielecki Piotr P   Flavell Richard A RA   Nadler Boaz B   Kluger Yuval Y  

Nature communications 20220111 1


A key challenge in analyzing single cell RNA-sequencing data is the large number of false zeros, where genes actually expressed in a given cell are incorrectly measured as unexpressed. We present a method based on low-rank matrix approximation which imputes these values while preserving biologically non-expressed genes (true biological zeros) at zero expression levels. We provide theoretical justification for this denoising approach and demonstrate its advantages relative to other methods on sim  ...[more]

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