Publication | Open Access
Zero-preserving imputation of single-cell RNA-seq data
269
Citations
52
References
2022
Year
EngineeringGeneticsLow-rank Matrix ApproximationTranscriptomics TechnologyGene Expression ProfilingTrajectory AnalysisSingle Cell SequencingBiostatisticsMicroarray Data AnalysisSingle-cell GenomicsGene ExpressionSingle-cell AnalysisBioinformaticsCell BiologyFunctional GenomicsZero-preserving ImputationComputational BiologySystems BiologyMedicineFalse ZerosTrue Biological Zeros
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.
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