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Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets

Introduction: Drug-resistant infections are becoming increasingly frequent worldwide, causing hundreds of thousands of deaths annually. This is partly due to the very limited set of protein drug targets known for human-infecting viral genomes. The eleven influenza virus proteins, for instance, explo...

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Autores principales: Wiwie, Christian, Kuznetsova, Irina, Mostafa, Ahmed, Rauch, Alexander, Haakonsson, Anders, Barrio-Hernandez, Inigo, Blagoev, Blagoy, Mandrup, Susanne, Schmidt, Harald H.H.W., Pleschka, Stephan, Röttger, Richard, Baumbach, Jan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Mary Ann Liebert, Inc., publishers 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6524659/
https://www.ncbi.nlm.nih.gov/pubmed/31119214
http://dx.doi.org/10.1089/sysm.2018.0013
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author Wiwie, Christian
Kuznetsova, Irina
Mostafa, Ahmed
Rauch, Alexander
Haakonsson, Anders
Barrio-Hernandez, Inigo
Blagoev, Blagoy
Mandrup, Susanne
Schmidt, Harald H.H.W.
Pleschka, Stephan
Röttger, Richard
Baumbach, Jan
author_facet Wiwie, Christian
Kuznetsova, Irina
Mostafa, Ahmed
Rauch, Alexander
Haakonsson, Anders
Barrio-Hernandez, Inigo
Blagoev, Blagoy
Mandrup, Susanne
Schmidt, Harald H.H.W.
Pleschka, Stephan
Röttger, Richard
Baumbach, Jan
author_sort Wiwie, Christian
collection PubMed
description Introduction: Drug-resistant infections are becoming increasingly frequent worldwide, causing hundreds of thousands of deaths annually. This is partly due to the very limited set of protein drug targets known for human-infecting viral genomes. The eleven influenza virus proteins, for instance, exploit host cell factors for replication and suppression of the antiviral immune responses. A systems medicine approach to identify relevant and druggable host factors would dramatically expand therapeutic options. Therapeutic target identification, however, has hitherto relied on static molecular networks, whereas in reality the interactome, in particular during an infection, is subject to constant change. Methods: We developed time-course network enrichment (TiCoNE), an expert-centered approach for discovering temporal response pathways. In the first stage of TiCoNE, time-series expression data is clustered in a human-augmented manner to identify groups of biological entities with coherent temporal responses. Throughout this process, the expert can add, remove, merge, or split temporal patterns. The resulting groups can then be mapped to an interaction network to identify enriched pathways and to analyze cross-talk enrichments and depletions between groups. Finally, temporal response groups of two experiments can be intersected, to identify condition-variant response patterns that represent promising drug-target candidates. Results: We applied TiCoNE to human gene expression data for influenza A virus infection and rhino virus infection, respectively. We then identified coherent temporal response patterns and employed our cross-talk analysis to establish two potential timelines of systems-level host responses for either infection. Next, we compared the two phenotypes and unraveled condition-variant temporal groups interacting on a networks level. The highest-ranking ones we then validated via literature search and wet-lab experiments. This not only confirmed many of our candidates as previously known, but we also identified phospholipid scramblase 1 (encoded by PLSCR1) as a previously not recognized host factor that is essential for influenza A virus infection. Conclusion: With TiCoNE we developed a novel approach for conjointly analyzing molecular networks with time-series expression data and demonstrated its power by identifying temporal drug-targets. We provide proof-of-concept that not only novel targets can be identified using our approach, but also that anti-infective drug target discovery can be enhanced by investigating temporal molecular networks of the host in response to viral infection.
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spelling pubmed-65246592019-05-20 Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets Wiwie, Christian Kuznetsova, Irina Mostafa, Ahmed Rauch, Alexander Haakonsson, Anders Barrio-Hernandez, Inigo Blagoev, Blagoy Mandrup, Susanne Schmidt, Harald H.H.W. Pleschka, Stephan Röttger, Richard Baumbach, Jan Syst Med (New Rochelle) Original Research Introduction: Drug-resistant infections are becoming increasingly frequent worldwide, causing hundreds of thousands of deaths annually. This is partly due to the very limited set of protein drug targets known for human-infecting viral genomes. The eleven influenza virus proteins, for instance, exploit host cell factors for replication and suppression of the antiviral immune responses. A systems medicine approach to identify relevant and druggable host factors would dramatically expand therapeutic options. Therapeutic target identification, however, has hitherto relied on static molecular networks, whereas in reality the interactome, in particular during an infection, is subject to constant change. Methods: We developed time-course network enrichment (TiCoNE), an expert-centered approach for discovering temporal response pathways. In the first stage of TiCoNE, time-series expression data is clustered in a human-augmented manner to identify groups of biological entities with coherent temporal responses. Throughout this process, the expert can add, remove, merge, or split temporal patterns. The resulting groups can then be mapped to an interaction network to identify enriched pathways and to analyze cross-talk enrichments and depletions between groups. Finally, temporal response groups of two experiments can be intersected, to identify condition-variant response patterns that represent promising drug-target candidates. Results: We applied TiCoNE to human gene expression data for influenza A virus infection and rhino virus infection, respectively. We then identified coherent temporal response patterns and employed our cross-talk analysis to establish two potential timelines of systems-level host responses for either infection. Next, we compared the two phenotypes and unraveled condition-variant temporal groups interacting on a networks level. The highest-ranking ones we then validated via literature search and wet-lab experiments. This not only confirmed many of our candidates as previously known, but we also identified phospholipid scramblase 1 (encoded by PLSCR1) as a previously not recognized host factor that is essential for influenza A virus infection. Conclusion: With TiCoNE we developed a novel approach for conjointly analyzing molecular networks with time-series expression data and demonstrated its power by identifying temporal drug-targets. We provide proof-of-concept that not only novel targets can be identified using our approach, but also that anti-infective drug target discovery can be enhanced by investigating temporal molecular networks of the host in response to viral infection. Mary Ann Liebert, Inc., publishers 2019-03-28 /pmc/articles/PMC6524659/ /pubmed/31119214 http://dx.doi.org/10.1089/sysm.2018.0013 Text en © Christian Wiwie et al. 2019; Published by Mary Ann Liebert, Inc. This Open Access article is distributed under the terms of the Creative Commons License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Research
Wiwie, Christian
Kuznetsova, Irina
Mostafa, Ahmed
Rauch, Alexander
Haakonsson, Anders
Barrio-Hernandez, Inigo
Blagoev, Blagoy
Mandrup, Susanne
Schmidt, Harald H.H.W.
Pleschka, Stephan
Röttger, Richard
Baumbach, Jan
Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets
title Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets
title_full Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets
title_fullStr Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets
title_full_unstemmed Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets
title_short Time-Resolved Systems Medicine Reveals Viral Infection-Modulating Host Targets
title_sort time-resolved systems medicine reveals viral infection-modulating host targets
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6524659/
https://www.ncbi.nlm.nih.gov/pubmed/31119214
http://dx.doi.org/10.1089/sysm.2018.0013
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