Cargando…

Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis

A general paucity of knowledge about the metabolic state of Mycobacterium tuberculosis within the host environment is a major factor impeding development of novel drugs against tuberculosis. Current experimental methods do not allow direct determination of the global metabolic state of a bacterial p...

Descripción completa

Detalles Bibliográficos
Autores principales: Bonde, Bhushan K., Beste, Dany J. V., Laing, Emma, Kierzek, Andrzej M., McFadden, Johnjoe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3127818/
https://www.ncbi.nlm.nih.gov/pubmed/21738454
http://dx.doi.org/10.1371/journal.pcbi.1002060
_version_ 1782207378872074240
author Bonde, Bhushan K.
Beste, Dany J. V.
Laing, Emma
Kierzek, Andrzej M.
McFadden, Johnjoe
author_facet Bonde, Bhushan K.
Beste, Dany J. V.
Laing, Emma
Kierzek, Andrzej M.
McFadden, Johnjoe
author_sort Bonde, Bhushan K.
collection PubMed
description A general paucity of knowledge about the metabolic state of Mycobacterium tuberculosis within the host environment is a major factor impeding development of novel drugs against tuberculosis. Current experimental methods do not allow direct determination of the global metabolic state of a bacterial pathogen in vivo, but the transcriptional activity of all encoded genes has been investigated in numerous microarray studies. We describe a novel algorithm, Differential Producibility Analysis (DPA) that uses a metabolic network to extract metabolic signals from transcriptome data. The method utilizes Flux Balance Analysis (FBA) to identify the set of genes that affect the ability to produce each metabolite in the network. Subsequently, Rank Product Analysis is used to identify those metabolites predicted to be most affected by a transcriptional signal. We first apply DPA to investigate the metabolic response of E. coli to both anaerobic growth and inactivation of the FNR global regulator. DPA successfully extracts metabolic signals that correspond to experimental data and provides novel metabolic insights. We next apply DPA to investigate the metabolic response of M. tuberculosis to the macrophage environment, human sputum and a range of in vitro environmental perturbations. The analysis revealed a previously unrecognized feature of the response of M. tuberculosis to the macrophage environment: a down-regulation of genes influencing metabolites in central metabolism and concomitant up-regulation of genes that influence synthesis of cell wall components and virulence factors. DPA suggests that a significant feature of the response of the tubercle bacillus to the intracellular environment is a channeling of resources towards remodeling of its cell envelope, possibly in preparation for attack by host defenses. DPA may be used to unravel the mechanisms of virulence and persistence of M. tuberculosis and other pathogens and may have general application for extracting metabolic signals from other “-omics” data.
format Online
Article
Text
id pubmed-3127818
institution National Center for Biotechnology Information
language English
publishDate 2011
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-31278182011-07-07 Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis Bonde, Bhushan K. Beste, Dany J. V. Laing, Emma Kierzek, Andrzej M. McFadden, Johnjoe PLoS Comput Biol Research Article A general paucity of knowledge about the metabolic state of Mycobacterium tuberculosis within the host environment is a major factor impeding development of novel drugs against tuberculosis. Current experimental methods do not allow direct determination of the global metabolic state of a bacterial pathogen in vivo, but the transcriptional activity of all encoded genes has been investigated in numerous microarray studies. We describe a novel algorithm, Differential Producibility Analysis (DPA) that uses a metabolic network to extract metabolic signals from transcriptome data. The method utilizes Flux Balance Analysis (FBA) to identify the set of genes that affect the ability to produce each metabolite in the network. Subsequently, Rank Product Analysis is used to identify those metabolites predicted to be most affected by a transcriptional signal. We first apply DPA to investigate the metabolic response of E. coli to both anaerobic growth and inactivation of the FNR global regulator. DPA successfully extracts metabolic signals that correspond to experimental data and provides novel metabolic insights. We next apply DPA to investigate the metabolic response of M. tuberculosis to the macrophage environment, human sputum and a range of in vitro environmental perturbations. The analysis revealed a previously unrecognized feature of the response of M. tuberculosis to the macrophage environment: a down-regulation of genes influencing metabolites in central metabolism and concomitant up-regulation of genes that influence synthesis of cell wall components and virulence factors. DPA suggests that a significant feature of the response of the tubercle bacillus to the intracellular environment is a channeling of resources towards remodeling of its cell envelope, possibly in preparation for attack by host defenses. DPA may be used to unravel the mechanisms of virulence and persistence of M. tuberculosis and other pathogens and may have general application for extracting metabolic signals from other “-omics” data. Public Library of Science 2011-06-30 /pmc/articles/PMC3127818/ /pubmed/21738454 http://dx.doi.org/10.1371/journal.pcbi.1002060 Text en Bonde et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Bonde, Bhushan K.
Beste, Dany J. V.
Laing, Emma
Kierzek, Andrzej M.
McFadden, Johnjoe
Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis
title Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis
title_full Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis
title_fullStr Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis
title_full_unstemmed Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis
title_short Differential Producibility Analysis (DPA) of Transcriptomic Data with Metabolic Networks: Deconstructing the Metabolic Response of M. tuberculosis
title_sort differential producibility analysis (dpa) of transcriptomic data with metabolic networks: deconstructing the metabolic response of m. tuberculosis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3127818/
https://www.ncbi.nlm.nih.gov/pubmed/21738454
http://dx.doi.org/10.1371/journal.pcbi.1002060
work_keys_str_mv AT bondebhushank differentialproducibilityanalysisdpaoftranscriptomicdatawithmetabolicnetworksdeconstructingthemetabolicresponseofmtuberculosis
AT bestedanyjv differentialproducibilityanalysisdpaoftranscriptomicdatawithmetabolicnetworksdeconstructingthemetabolicresponseofmtuberculosis
AT laingemma differentialproducibilityanalysisdpaoftranscriptomicdatawithmetabolicnetworksdeconstructingthemetabolicresponseofmtuberculosis
AT kierzekandrzejm differentialproducibilityanalysisdpaoftranscriptomicdatawithmetabolicnetworksdeconstructingthemetabolicresponseofmtuberculosis
AT mcfaddenjohnjoe differentialproducibilityanalysisdpaoftranscriptomicdatawithmetabolicnetworksdeconstructingthemetabolicresponseofmtuberculosis