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Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence

Salmonella comprises more than 2,600 serovars. Very few environmental and uncommon serovars have been characterized for their potential role in virulence and human infections. A complementary in vitro and in vivo systematic high-throughput analysis of virulence was used to elucidate the association...

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Autores principales: Crouse, Alanna, Schramm, Catherine, Emond-Rheault, Jean-Guillaume, Herod, Adrian, Kerhoas, Maud, Rohde, John, Gruenheid, Samantha, Kukavica-Ibrulj, Irena, Boyle, Brian, Greenwood, Celia M. T., Goodridge, Lawrence D., Garduno, Rafael, Levesque, Roger C., Malo, Danielle, Daigle, France
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7289705/
https://www.ncbi.nlm.nih.gov/pubmed/32522778
http://dx.doi.org/10.1128/mSphere.00293-20
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author Crouse, Alanna
Schramm, Catherine
Emond-Rheault, Jean-Guillaume
Herod, Adrian
Kerhoas, Maud
Rohde, John
Gruenheid, Samantha
Kukavica-Ibrulj, Irena
Boyle, Brian
Greenwood, Celia M. T.
Goodridge, Lawrence D.
Garduno, Rafael
Levesque, Roger C.
Malo, Danielle
Daigle, France
author_facet Crouse, Alanna
Schramm, Catherine
Emond-Rheault, Jean-Guillaume
Herod, Adrian
Kerhoas, Maud
Rohde, John
Gruenheid, Samantha
Kukavica-Ibrulj, Irena
Boyle, Brian
Greenwood, Celia M. T.
Goodridge, Lawrence D.
Garduno, Rafael
Levesque, Roger C.
Malo, Danielle
Daigle, France
author_sort Crouse, Alanna
collection PubMed
description Salmonella comprises more than 2,600 serovars. Very few environmental and uncommon serovars have been characterized for their potential role in virulence and human infections. A complementary in vitro and in vivo systematic high-throughput analysis of virulence was used to elucidate the association between genetic and phenotypic variations across Salmonella isolates. The goal was to develop a strategy for the classification of isolates as a benchmark and predict virulence levels of isolates. Thirty-five phylogenetically distant strains of unknown virulence were selected from the Salmonella Foodborne Syst-OMICS (SalFoS) collection, representing 34 different serovars isolated from various sources. Isolates were evaluated for virulence in 4 complementary models of infection to compare virulence traits with the genomics data, including interactions with human intestinal epithelial cells, human macrophages, and amoeba. In vivo testing was conducted using the mouse model of Salmonella systemic infection. Significant correlations were identified between the different models. We identified a collection of novel hypothetical and conserved proteins associated with isolates that generate a high burden. We also showed that blind prediction of virulence of 33 additional strains based on the pan-genome was high in the mouse model of systemic infection (82% agreement) and in the human epithelial cell model (74% agreement). These complementary approaches enabled us to define virulence potential in different isolates and present a novel strategy for risk assessment of specific strains and for better monitoring and source tracking during outbreaks. IMPORTANCE Salmonella species are bacteria that are a major source of foodborne disease through contamination of a diversity of foods, including meat, eggs, fruits, nuts, and vegetables. More than 2,600 different Salmonella enterica serovars have been identified, and only a few of them are associated with illness in humans. Despite the fact that they are genetically closely related, there is enormous variation in the virulence of different isolates of Salmonella enterica. Identification of foodborne pathogens is a lengthy process based on microbiological, biochemical, and immunological methods. Here, we worked toward new ways of integrating whole-genome sequencing (WGS) approaches into food safety practices. We used WGS to build associations between virulence and genetic diversity within 83 Salmonella isolates representing 77 different Salmonella serovars. Our work demonstrates the potential of combining a genomics approach and virulence tests to improve the diagnostics and assess risk of human illness associated with specific Salmonella isolates.
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spelling pubmed-72897052020-06-25 Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence Crouse, Alanna Schramm, Catherine Emond-Rheault, Jean-Guillaume Herod, Adrian Kerhoas, Maud Rohde, John Gruenheid, Samantha Kukavica-Ibrulj, Irena Boyle, Brian Greenwood, Celia M. T. Goodridge, Lawrence D. Garduno, Rafael Levesque, Roger C. Malo, Danielle Daigle, France mSphere Research Article Salmonella comprises more than 2,600 serovars. Very few environmental and uncommon serovars have been characterized for their potential role in virulence and human infections. A complementary in vitro and in vivo systematic high-throughput analysis of virulence was used to elucidate the association between genetic and phenotypic variations across Salmonella isolates. The goal was to develop a strategy for the classification of isolates as a benchmark and predict virulence levels of isolates. Thirty-five phylogenetically distant strains of unknown virulence were selected from the Salmonella Foodborne Syst-OMICS (SalFoS) collection, representing 34 different serovars isolated from various sources. Isolates were evaluated for virulence in 4 complementary models of infection to compare virulence traits with the genomics data, including interactions with human intestinal epithelial cells, human macrophages, and amoeba. In vivo testing was conducted using the mouse model of Salmonella systemic infection. Significant correlations were identified between the different models. We identified a collection of novel hypothetical and conserved proteins associated with isolates that generate a high burden. We also showed that blind prediction of virulence of 33 additional strains based on the pan-genome was high in the mouse model of systemic infection (82% agreement) and in the human epithelial cell model (74% agreement). These complementary approaches enabled us to define virulence potential in different isolates and present a novel strategy for risk assessment of specific strains and for better monitoring and source tracking during outbreaks. IMPORTANCE Salmonella species are bacteria that are a major source of foodborne disease through contamination of a diversity of foods, including meat, eggs, fruits, nuts, and vegetables. More than 2,600 different Salmonella enterica serovars have been identified, and only a few of them are associated with illness in humans. Despite the fact that they are genetically closely related, there is enormous variation in the virulence of different isolates of Salmonella enterica. Identification of foodborne pathogens is a lengthy process based on microbiological, biochemical, and immunological methods. Here, we worked toward new ways of integrating whole-genome sequencing (WGS) approaches into food safety practices. We used WGS to build associations between virulence and genetic diversity within 83 Salmonella isolates representing 77 different Salmonella serovars. Our work demonstrates the potential of combining a genomics approach and virulence tests to improve the diagnostics and assess risk of human illness associated with specific Salmonella isolates. American Society for Microbiology 2020-06-10 /pmc/articles/PMC7289705/ /pubmed/32522778 http://dx.doi.org/10.1128/mSphere.00293-20 Text en © Crown copyright 2020. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Crouse, Alanna
Schramm, Catherine
Emond-Rheault, Jean-Guillaume
Herod, Adrian
Kerhoas, Maud
Rohde, John
Gruenheid, Samantha
Kukavica-Ibrulj, Irena
Boyle, Brian
Greenwood, Celia M. T.
Goodridge, Lawrence D.
Garduno, Rafael
Levesque, Roger C.
Malo, Danielle
Daigle, France
Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence
title Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence
title_full Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence
title_fullStr Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence
title_full_unstemmed Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence
title_short Combining Whole-Genome Sequencing and Multimodel Phenotyping To Identify Genetic Predictors of Salmonella Virulence
title_sort combining whole-genome sequencing and multimodel phenotyping to identify genetic predictors of salmonella virulence
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7289705/
https://www.ncbi.nlm.nih.gov/pubmed/32522778
http://dx.doi.org/10.1128/mSphere.00293-20
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