The transcription factor network of E. coli steers global responses to shifts in RNAP concentration

Description

The robustness and sensitivity of gene networks to environmental changes is critical for cell survival. How gene networks produce specific, chronologically ordered responses to genome-wide perturbations, while robustly maintaining homeostasis, remains an open question. We analysed if short- and mid-term genome-wide responses to shifts in RNA polymerase (RNAP) concentration are influenced by the known topology and logic of the transcription factor network (TFN) of Escherichia coli. We found that, at the gene cohort level, the magnitude of the single-gene, mid-term transcriptional responses to changes in RNAP concentration can be explained by the absolute difference between the gene’s numbers of activating and repressing input transcription factors (TFs). Interestingly, this difference is strongly positively correlated with the number of input TFs of the gene. Meanwhile, short-term responses showed only weak influence from the TFN. Our results suggest that the global topological traits of the TFN of E. coli shape which gene cohorts respond to genome-wide stresses.
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Year of publication

2022

Type of data

Authors

DRYAD - Publisher

Abhishekh Gupta - Creator

Andre Sanches Ribeiro - Creator

Bilena Lima De Brito Almeida - Creator

Cristina Santos Dias Palma - Creator

Eric Dufour - Creator

Howard Jacobs - Creator

Ines Calado Baptista - Creator

Jason Lloyd-Price - Creator

Juha Kesseli - Creator

Matti Nykter - Creator

Mohamed Mohamed Bahrudeen - Creator

Suchintak Dash - Creator

Vatsala Chauhan - Creator

Vinodh Kandavalli - Creator

Unknown organization

Antti Häkkinen - Creator

Olli-Pekka Smolander - Creator

Petri Auvinen - Creator

Samuel M.D. Oliveira - Creator

Project

Other information

Fields of science

Biomedicine

Language

English

Open access

Open

License

Creative Commons Attribution 4.0 International (CC BY 4.0)

Keywords

Biomedicine

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