In Enterococcus faecalis, sex pheromone-mediated transfer of antibiotic resistance plasmids can occur under unfavorable conditions, for example, when inducing pheromone concentrations are low and inhibiting pheromone concentrations are high. To better understand this paradox, we adapted fluorescence in situ hybridization chain reaction (HCR) methodology for simultaneous quantification of multiple E. faecalis transcripts at the single cell level. We present direct evidence for variability in the minimum period, maximum response level, and duration of response of individual cells to a specific inducing condition. Tracking of induction patterns of single cells temporally using a fluorescent reporter supported HCR findings. It also revealed subpopulations of rapid responders, even under low inducing pheromone concentrations where the overall response of the entire population was slow. The strong, rapid induction of small numbers of cells in cultures exposed to low pheromone concentrations is in agreement with predictions of a stochastic model of the enterococcal pheromone response. The previously documented complex regulatory circuitry controlling the pheromone response likely contributes to stochastic variation in this system. In addition to increasing our basic understanding of the biology of a horizontal gene transfer system regulated by cell-cell signaling, demonstration of the stochastic nature of the pheromone response also impacts any future efforts to develop therapeutic agents targeting the system. Quantitative single cell analysis using HCR also has great potential to elucidate important bacterial regulatory mechanisms not previously amenable to study at the single cell level, and to accelerate the pace of functional genomic studies.
Stochasticity in the enterococcal sex pheromone response revealed by quantitative analysis of transcription in single cells.
通过对单个细胞转录的定量分析揭示肠球菌性信息素反应的随机性
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作者:Breuer Rebecca J, Bandyopadhyay Arpan, O'Brien Sofie A, Barnes Aaron M T, Hunter Ryan C, Hu Wei-Shou, Dunny Gary M
| 期刊: | PLoS Genetics | 影响因子: | 3.700 |
| 时间: | 2017 | 起止号: | 2017 Jul 3; 13(7):e1006878 |
| doi: | 10.1371/journal.pgen.1006878 | 研究方向: | 细胞生物学 |
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