Determining the control circuitry of redox metabolism at the genome-scale.

Determining how facultative anaerobic organisms sense and direct cellular responses to electron acceptor availability has been a subject of intense study. However, even in the model organism Escherichia coli, established mechanisms only explain a small fraction of the hundreds of genes that are regu...

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Main Authors: Stephen Federowicz, Donghyuk Kim, Ali Ebrahim, Joshua Lerman, Harish Nagarajan, Byung-kwan Cho, Karsten Zengler, Bernhard Palsson
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-04-01
Series:PLoS Genetics
Online Access:http://europepmc.org/articles/PMC3974632?pdf=render
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spelling doaj-153a087e12cb4160b8fe3205ad081a5c2020-11-24T22:04:46ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042014-04-01104e100426410.1371/journal.pgen.1004264Determining the control circuitry of redox metabolism at the genome-scale.Stephen FederowiczDonghyuk KimAli EbrahimJoshua LermanHarish NagarajanByung-kwan ChoKarsten ZenglerBernhard PalssonDetermining how facultative anaerobic organisms sense and direct cellular responses to electron acceptor availability has been a subject of intense study. However, even in the model organism Escherichia coli, established mechanisms only explain a small fraction of the hundreds of genes that are regulated during electron acceptor shifts. Here we propose a qualitative model that accounts for the full breadth of regulated genes by detailing how two global transcription factors (TFs), ArcA and Fnr of E. coli, sense key metabolic redox ratios and act on a genome-wide basis to regulate anabolic, catabolic, and energy generation pathways. We first fill gaps in our knowledge of this transcriptional regulatory network by carrying out ChIP-chip and gene expression experiments to identify 463 regulatory events. We then interfaced this reconstructed regulatory network with a highly curated genome-scale metabolic model to show that ArcA and Fnr regulate >80% of total metabolic flux and 96% of differential gene expression across fermentative and nitrate respiratory conditions. Based on the data, we propose a feedforward with feedback trim regulatory scheme, given the extensive repression of catabolic genes by ArcA and extensive activation of chemiosmotic genes by Fnr. We further corroborated this regulatory scheme by showing a 0.71 r(2) (p<1e-6) correlation between changes in metabolic flux and changes in regulatory activity across fermentative and nitrate respiratory conditions. Finally, we are able to relate the proposed model to a wealth of previously generated data by contextualizing the existing transcriptional regulatory network.http://europepmc.org/articles/PMC3974632?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Stephen Federowicz
Donghyuk Kim
Ali Ebrahim
Joshua Lerman
Harish Nagarajan
Byung-kwan Cho
Karsten Zengler
Bernhard Palsson
spellingShingle Stephen Federowicz
Donghyuk Kim
Ali Ebrahim
Joshua Lerman
Harish Nagarajan
Byung-kwan Cho
Karsten Zengler
Bernhard Palsson
Determining the control circuitry of redox metabolism at the genome-scale.
PLoS Genetics
author_facet Stephen Federowicz
Donghyuk Kim
Ali Ebrahim
Joshua Lerman
Harish Nagarajan
Byung-kwan Cho
Karsten Zengler
Bernhard Palsson
author_sort Stephen Federowicz
title Determining the control circuitry of redox metabolism at the genome-scale.
title_short Determining the control circuitry of redox metabolism at the genome-scale.
title_full Determining the control circuitry of redox metabolism at the genome-scale.
title_fullStr Determining the control circuitry of redox metabolism at the genome-scale.
title_full_unstemmed Determining the control circuitry of redox metabolism at the genome-scale.
title_sort determining the control circuitry of redox metabolism at the genome-scale.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2014-04-01
description Determining how facultative anaerobic organisms sense and direct cellular responses to electron acceptor availability has been a subject of intense study. However, even in the model organism Escherichia coli, established mechanisms only explain a small fraction of the hundreds of genes that are regulated during electron acceptor shifts. Here we propose a qualitative model that accounts for the full breadth of regulated genes by detailing how two global transcription factors (TFs), ArcA and Fnr of E. coli, sense key metabolic redox ratios and act on a genome-wide basis to regulate anabolic, catabolic, and energy generation pathways. We first fill gaps in our knowledge of this transcriptional regulatory network by carrying out ChIP-chip and gene expression experiments to identify 463 regulatory events. We then interfaced this reconstructed regulatory network with a highly curated genome-scale metabolic model to show that ArcA and Fnr regulate >80% of total metabolic flux and 96% of differential gene expression across fermentative and nitrate respiratory conditions. Based on the data, we propose a feedforward with feedback trim regulatory scheme, given the extensive repression of catabolic genes by ArcA and extensive activation of chemiosmotic genes by Fnr. We further corroborated this regulatory scheme by showing a 0.71 r(2) (p<1e-6) correlation between changes in metabolic flux and changes in regulatory activity across fermentative and nitrate respiratory conditions. Finally, we are able to relate the proposed model to a wealth of previously generated data by contextualizing the existing transcriptional regulatory network.
url http://europepmc.org/articles/PMC3974632?pdf=render
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