Transcriptomics

Dataset Information

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Single-cell RNA-seq reports growth condition-specific global transcriptomes of individual bacteria


ABSTRACT: Bacteria respond to changes in their environment with specific transcriptional programmes, but even within genetically identical populations these programmes are not homogenously expressed. Such transcriptional heterogeneity between individual bacteria allows genetically clonal communities to develop a complex array of phenotypes, examples of which include persisters that resist antibiotic treatment and metabolically specialized cells that emerge under nutrient-limiting conditions. Fluorescent reporter constructs have played a pivotal role in deciphering heterogeneous gene expression within bacterial populations but have been limited to recording the activity of single genes in a few genetically tractable model species, whereas the vast majority of bacteria remain difficult to engineer and/or even to cultivate. Single-cell transcriptomics is revolutionizing the analysis of phenotypic cell-to-cell variation in eukaryotes, but technical hurdles have prevented its robust application to prokaryotes. Here, using the improved poly(A)-independent single-cell RNA-sequencing protocol MATQ-seq, we report the faithful capture of growth-dependent gene expression patterns in individual Salmonella and Pseudomonas bacteria across all RNA classes and genomic regions. These transcriptomes provide important reference points for single-cell RNA-sequencing of other bacterial species, mixed microbial communities and host–pathogen interactions.

ORGANISM(S): Salmonella enterica subsp. enterica serovar Typhimurium str. SL1344 Pseudomonas aeruginosa PAO1

PROVIDER: GSE119888 | GEO | 2020/07/06

REPOSITORIES: GEO

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