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Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins

The interpretation of high-throughput gene expression data for non-model microorganisms remains obscured because of the high fraction of hypothetical genes and the limited number of methods for the robust inference of gene networks. Therefore, to elucidate gene-gene and gene-condition linkages in th...

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Autores principales: Mansfeldt, Cresten B., Heavner, Gretchen W., Rowe, Annette R., Hayete, Boris, Church, Bruce W., Richardson, Ruth E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5102406/
https://www.ncbi.nlm.nih.gov/pubmed/27829029
http://dx.doi.org/10.1371/journal.pone.0166234
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author Mansfeldt, Cresten B.
Heavner, Gretchen W.
Rowe, Annette R.
Hayete, Boris
Church, Bruce W.
Richardson, Ruth E.
author_facet Mansfeldt, Cresten B.
Heavner, Gretchen W.
Rowe, Annette R.
Hayete, Boris
Church, Bruce W.
Richardson, Ruth E.
author_sort Mansfeldt, Cresten B.
collection PubMed
description The interpretation of high-throughput gene expression data for non-model microorganisms remains obscured because of the high fraction of hypothetical genes and the limited number of methods for the robust inference of gene networks. Therefore, to elucidate gene-gene and gene-condition linkages in the bioremediation-important genus Dehalococcoides, we applied a Bayesian inference strategy called Reverse Engineering/Forward Simulation (REFS(™)) on transcriptomic data collected from two organohalide-respiring communities containing different Dehalococcoides mccartyi strains: the Cornell University mixed community D2 and the commercially available KB-1(®) bioaugmentation culture. In total, 49 and 24 microarray datasets were included in the REFS(™) analysis to generate an ensemble of 1,000 networks for the Dehalococcoides population in the Cornell D2 and KB-1(®) culture, respectively. Considering only linkages that appeared in the consensus network for each culture (exceeding the determined frequency cutoff of ≥ 60%), the resulting Cornell D2 and KB-1(®) consensus networks maintained 1,105 nodes (genes or conditions) with 974 edges and 1,714 nodes with 1,455 edges, respectively. These consensus networks captured multiple strong and biologically informative relationships. One of the main highlighted relationships shared between these two cultures was a direct edge between the transcript encoding for the major reductive dehalogenase (tceA (D2) or vcrA (KB-1(®))) and the transcript for the putative S-layer cell wall protein (DET1407 (D2) or KB1_1396 (KB-1(®))). Additionally, transcripts for two key oxidoreductases (a [Ni Fe] hydrogenase, Hup, and a protein with similarity to a formate dehydrogenase, “Fdh”) were strongly linked, generalizing a strong relationship noted previously for Dehalococcoides mccartyi strain 195 to multiple strains of Dehalococcoides. Notably, the pangenome array utilized when monitoring the KB-1(®) culture was capable of resolving signals from multiple strains, and the network inference engine was able to reconstruct gene networks in the distinct strain populations.
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spelling pubmed-51024062016-11-18 Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins Mansfeldt, Cresten B. Heavner, Gretchen W. Rowe, Annette R. Hayete, Boris Church, Bruce W. Richardson, Ruth E. PLoS One Research Article The interpretation of high-throughput gene expression data for non-model microorganisms remains obscured because of the high fraction of hypothetical genes and the limited number of methods for the robust inference of gene networks. Therefore, to elucidate gene-gene and gene-condition linkages in the bioremediation-important genus Dehalococcoides, we applied a Bayesian inference strategy called Reverse Engineering/Forward Simulation (REFS(™)) on transcriptomic data collected from two organohalide-respiring communities containing different Dehalococcoides mccartyi strains: the Cornell University mixed community D2 and the commercially available KB-1(®) bioaugmentation culture. In total, 49 and 24 microarray datasets were included in the REFS(™) analysis to generate an ensemble of 1,000 networks for the Dehalococcoides population in the Cornell D2 and KB-1(®) culture, respectively. Considering only linkages that appeared in the consensus network for each culture (exceeding the determined frequency cutoff of ≥ 60%), the resulting Cornell D2 and KB-1(®) consensus networks maintained 1,105 nodes (genes or conditions) with 974 edges and 1,714 nodes with 1,455 edges, respectively. These consensus networks captured multiple strong and biologically informative relationships. One of the main highlighted relationships shared between these two cultures was a direct edge between the transcript encoding for the major reductive dehalogenase (tceA (D2) or vcrA (KB-1(®))) and the transcript for the putative S-layer cell wall protein (DET1407 (D2) or KB1_1396 (KB-1(®))). Additionally, transcripts for two key oxidoreductases (a [Ni Fe] hydrogenase, Hup, and a protein with similarity to a formate dehydrogenase, “Fdh”) were strongly linked, generalizing a strong relationship noted previously for Dehalococcoides mccartyi strain 195 to multiple strains of Dehalococcoides. Notably, the pangenome array utilized when monitoring the KB-1(®) culture was capable of resolving signals from multiple strains, and the network inference engine was able to reconstruct gene networks in the distinct strain populations. Public Library of Science 2016-11-09 /pmc/articles/PMC5102406/ /pubmed/27829029 http://dx.doi.org/10.1371/journal.pone.0166234 Text en © 2016 Mansfeldt 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 (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Mansfeldt, Cresten B.
Heavner, Gretchen W.
Rowe, Annette R.
Hayete, Boris
Church, Bruce W.
Richardson, Ruth E.
Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins
title Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins
title_full Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins
title_fullStr Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins
title_full_unstemmed Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins
title_short Inferring Gene Networks for Strains of Dehalococcoides Highlights Conserved Relationships between Genes Encoding Core Catabolic and Cell-Wall Structural Proteins
title_sort inferring gene networks for strains of dehalococcoides highlights conserved relationships between genes encoding core catabolic and cell-wall structural proteins
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5102406/
https://www.ncbi.nlm.nih.gov/pubmed/27829029
http://dx.doi.org/10.1371/journal.pone.0166234
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