Publication | Open Access
Separating measurement and expression models clarifies confusion in single-cell RNA sequencing analysis
36
Citations
67
References
2020
Year
Unknown Venue
EngineeringGeneticsRna SplicingTranscriptomics TechnologyGenomicsGene Expression ProfilingTrajectory AnalysisTranscriptional RegulationSingle Cell SequencingBiostatisticsTranscriptomicsPoisson Measurement ModelTypical Scrna-seq DatasetsRna SequencingTranslatomicsSingle-cell GenomicsGene ExpressionSingle-cell AnalysisFunctional GenomicsCell BiologyBioinformaticsComputational BiologySingle-cell BiologyExpression VariationSystems BiologyMedicineCell Development
A bstract The high proportion of zeros in typical scRNA-seq datasets has led to widespread but inconsistent use of terminology such as “dropout” and “missing data”. Here, we argue that much of this terminology is unhelpful and confusing, and outline simple ideas to help reduce confusion. These include: (1) observed scRNA-seq counts reflect both true gene expression levels and measurement error, and carefully distinguishing these contributions helps clarify thinking; and (2) method development should start with a Poisson measurement model, rather than more complex models, because it is simple and generally consistent with existing data. We outline how several existing methods can be viewed within this framework and highlight how these methods differ in their assumptions about expression variation. We also illustrate how our perspective helps address questions of biological interest, such as whether mRNA expression levels are multimodal among cells.
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