A network integration approach to predict conserved regulators related to pathogenicity of influenza and SARS-CoV respiratory viruses

Respiratory infections stemming from influenza viruses and the Severe Acute Respiratory Syndrome corona virus (SARS-CoV) represent a serious public health threat as emerging pandemics. Despite efforts to identify the critical interactions of these viruses with host machinery, the key regulatory even...

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Published inPloS one Vol. 8; no. 7; p. e69374
Main Authors Mitchell, Hugh D, Eisfeld, Amie J, Sims, Amy C, McDermott, Jason E, Matzke, Melissa M, Webb-Robertson, Bobbi-Jo M, Tilton, Susan C, Tchitchek, Nicolas, Josset, Laurence, Li, Chengjun, Ellis, Amy L, Chang, Jean H, Heegel, Robert A, Luna, Maria L, Schepmoes, Athena A, Shukla, Anil K, Metz, Thomas O, Neumann, Gabriele, Benecke, Arndt G, Smith, Richard D, Baric, Ralph S, Kawaoka, Yoshihiro, Katze, Michael G, Waters, Katrina M
Format Journal Article
LanguageEnglish
Published United States Public Library of Science 25.07.2013
Public Library of Science (PLoS)
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Summary:Respiratory infections stemming from influenza viruses and the Severe Acute Respiratory Syndrome corona virus (SARS-CoV) represent a serious public health threat as emerging pandemics. Despite efforts to identify the critical interactions of these viruses with host machinery, the key regulatory events that lead to disease pathology remain poorly targeted with therapeutics. Here we implement an integrated network interrogation approach, in which proteome and transcriptome datasets from infection of both viruses in human lung epithelial cells are utilized to predict regulatory genes involved in the host response. We take advantage of a novel "crowd-based" approach to identify and combine ranking metrics that isolate genes/proteins likely related to the pathogenicity of SARS-CoV and influenza virus. Subsequently, a multivariate regression model is used to compare predicted lung epithelial regulatory influences with data derived from other respiratory virus infection models. We predicted a small set of regulatory factors with conserved behavior for consideration as important components of viral pathogenesis that might also serve as therapeutic targets for intervention. Our results demonstrate the utility of integrating diverse 'omic datasets to predict and prioritize regulatory features conserved across multiple pathogen infection models.
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PMCID: PMC3723910
Competing Interests: The authors have declared that no competing interests exist.
Conceived and designed the experiments: HDM JEM TOM ACS AJE GN AGB RDS RSB YK MGK KMW. Performed the experiments: CL ALE RAH MLL AAS AKS ACS JHC TOM. Analyzed the data: HDM MMM BMW SCT NT LJ AGB. Wrote the paper: HDM AJE ACS GN AGB KMW.
ISSN:1932-6203
1932-6203
DOI:10.1371/journal.pone.0069374