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Bayesian model selection reveals biological origins of zero inflation in single-cell transcriptomics

Kwangbom Choi, Yang Chen, Daniel A. Skelly, Gary A. Churchill

2020Genome biology106 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Single-cell RNA sequencing is a powerful tool for characterizing cellular heterogeneity in gene expression. However, high variability and a large number of zero counts present challenges for analysis and interpretation. There is substantial controversy over the origins and proper treatment of zeros and no consensus on whether zero-inflated count distributions are necessary or even useful. While some studies assume the existence of zero inflation due to technical artifacts and attempt to impute the missing information, other recent studies argue that there is no zero inflation in scRNA-seq data. RESULTS: We apply a Bayesian model selection approach to unambiguously demonstrate zero inflation in multiple biologically realistic scRNA-seq datasets. We show that the primary causes of zero inflation are not technical but rather biological in nature. We also demonstrate that parameter estimates from the zero-inflated negative binomial distribution are an unreliable indicator of zero inflation. CONCLUSIONS: Despite the existence of zero inflation in scRNA-seq counts, we recommend the generalized linear model with negative binomial count distribution, not zero-inflated, as a suitable reference model for scRNA-seq analysis.

Topics & Concepts

Negative binomial distributionBayesian probabilityZero (linguistics)Inflation (cosmology)Count dataBiologySelection (genetic algorithm)EconometricsStatisticsMathematicsPoisson distributionComputer scienceArtificial intelligencePhysicsLinguisticsTheoretical physicsPhilosophySingle-cell and spatial transcriptomicsGene expression and cancer classificationCancer Genomics and Diagnostics
Bayesian model selection reveals biological origins of zero inflation in single-cell transcriptomics | Litcius