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Modelling and measuring single cell RNA expression levels find considerable transcriptional differences among phenotypically identical cells.


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Authors

Subkhankulova, Tatiana 
Gilchrist, Michael J 
Livesey, Frederick J 

Abstract

BACKGROUND: Phenotypically identical cells demonstrate predictable, robust behaviours. However, there is uncertainty as to whether phenotypically identical cells are equally similar at the underlying transcriptional level or if cellular systems are inherently noisy. To answer this question, it is essential to distinguish between technical noise and true variation in transcript levels. A critical issue is the contribution of sampling effects, introduced by the requirement to globally amplify the single cell mRNA population, to observed measurements of relative transcript abundance. RESULTS: We used single cell microarray data to develop simple mathematical models, ran Monte Carlo simulations of the impact of technical and sampling effects on single cell expression data, and compared these with experimental microarray data generated from single embryonic neural stem cells in vivo. We show that the actual distribution of measured gene expression ratios for pairs of neural stem cells is much broader than that predicted from our sampling effect model. CONCLUSION: Our results confirm that significant differences in gene expression levels exist between phenotypically identical cells in vivo, and that these differences exceed any noise contribution from global mRNA amplification.

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Keywords

Animals, Gene Expression Profiling, Mice, Models, Genetic, Neurons, Oligonucleotide Array Sequence Analysis, Phenotype, Polymerase Chain Reaction, RNA, RNA, Messenger, Reproducibility of Results, Stem Cells, Transcription, Genetic

Journal Title

BMC Genomics

Conference Name

Journal ISSN

1471-2164
1471-2164

Volume Title

Publisher

Springer Science and Business Media LLC