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Bayesian inference of gene expression states from single-cell RNA-seq data
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4619194
Author(s) Breda, Jérémie; Zavolan, Mihaela; van Nimwegen, Erik
Author(s) at UniBasel Zavolan, Mihaela
Breda, Jeremie
van Nimwegen, Erik
Year 2021
Title Bayesian inference of gene expression states from single-cell RNA-seq data
Journal Nature Biotechnology
Volume 39
Number 8
Pages / Article-Number 1008-1016
Abstract Despite substantial progress in single-cell RNA-seq (scRNA-seq) data analysis methods, there is still little agreement on how to best normalize such data. Starting from the basic requirements that inferred expression states should correct for both biological and measurement sampling noise and that changes in expression should be measured in terms of fold changes, we here derive a Bayesian normalization procedure called Sanity (SAmpling-Noise-corrected Inference of Transcription activitY) from first principles. Sanity estimates expression values and associated error bars directly from raw unique molecular identifier (UMI) counts without any tunable parameters. Using simulated and real scRNA-seq datasets, we show that Sanity outperforms other normalization methods on downstream tasks, such as finding nearest-neighbor cells and clustering cells into subtypes. Moreover, we show that by systematically overestimating the expression variability of genes with low expression and by introducing spurious correlations through mapping the data to a lower-dimensional representation, other methods yield severely distorted pictures of the data.
Publisher Nature Publishing Group
ISSN/ISBN 1087-0156 ; 1546-1696
edoc-URL https://edoc.unibas.ch/82968/
Full Text on edoc No
Digital Object Identifier DOI 10.1038/s41587-021-00875-x
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/33927416
ISI-Number WOS:000645515000003
Document type (ISI) Journal Article
 
   

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10/05/2024