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From Sample to Multi-Omics Conclusions in under 48 Hours

Multi-omics methods have greatly advanced our understanding of the biological organism and its microbial associates. However, they are not routinely used in clinical or industrial applications, due to the length of time required to generate and analyze omics data. Here, we applied a novel integrated...

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Autores principales: Quinn, Robert A., Navas-Molina, Jose A., Hyde, Embriette R., Song, Se Jin, Vázquez-Baeza, Yoshiki, Humphrey, Greg, Gaffney, James, Minich, Jeremiah J., Melnik, Alexey V., Herschend, Jakob, DeReus, Jeff, Durant, Austin, Dutton, Rachel J., Khosroheidari, Mahdieh, Green, Clifford, da Silva, Ricardo, Dorrestein, Pieter C., Knight, Rob
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5069746/
https://www.ncbi.nlm.nih.gov/pubmed/27822524
http://dx.doi.org/10.1128/mSystems.00038-16
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author Quinn, Robert A.
Navas-Molina, Jose A.
Hyde, Embriette R.
Song, Se Jin
Vázquez-Baeza, Yoshiki
Humphrey, Greg
Gaffney, James
Minich, Jeremiah J.
Melnik, Alexey V.
Herschend, Jakob
DeReus, Jeff
Durant, Austin
Dutton, Rachel J.
Khosroheidari, Mahdieh
Green, Clifford
da Silva, Ricardo
Dorrestein, Pieter C.
Knight, Rob
author_facet Quinn, Robert A.
Navas-Molina, Jose A.
Hyde, Embriette R.
Song, Se Jin
Vázquez-Baeza, Yoshiki
Humphrey, Greg
Gaffney, James
Minich, Jeremiah J.
Melnik, Alexey V.
Herschend, Jakob
DeReus, Jeff
Durant, Austin
Dutton, Rachel J.
Khosroheidari, Mahdieh
Green, Clifford
da Silva, Ricardo
Dorrestein, Pieter C.
Knight, Rob
author_sort Quinn, Robert A.
collection PubMed
description Multi-omics methods have greatly advanced our understanding of the biological organism and its microbial associates. However, they are not routinely used in clinical or industrial applications, due to the length of time required to generate and analyze omics data. Here, we applied a novel integrated omics pipeline for the analysis of human and environmental samples in under 48 h. Human subjects that ferment their own foods provided swab samples from skin, feces, oral cavity, fermented foods, and household surfaces to assess the impact of home food fermentation on their microbial and chemical ecology. These samples were analyzed with 16S rRNA gene sequencing, inferred gene function profiles, and liquid chromatography-tandem mass spectrometry (LC-MS/MS) metabolomics through the Qiita, PICRUSt, and GNPS pipelines, respectively. The human sample microbiomes clustered with the corresponding sample types in the American Gut Project (http://www.americangut.org), and the fermented food samples produced a separate cluster. The microbial communities of the household surfaces were primarily sourced from the fermented foods, and their consumption was associated with increased gut microbial diversity. Untargeted metabolomics revealed that human skin and fermented food samples had separate chemical ecologies and that stool was more similar to fermented foods than to other sample types. Metabolites from the fermented foods, including plant products such as procyanidin and pheophytin, were present in the skin and stool samples of the individuals consuming the foods. Some food metabolites were modified during digestion, and others were detected in stool intact. This study represents a first-of-its-kind analysis of multi-omics data that achieved time intervals matching those of classic microbiological culturing. IMPORTANCE Polymicrobial infections are difficult to diagnose due to the challenge in comprehensively cultivating the microbes present. Omics methods, such as 16S rRNA sequencing, metagenomics, and metabolomics, can provide a more complete picture of a microbial community and its metabolite production, without the biases and selectivity of microbial culture. However, these advanced methods have not been applied to clinical or industrial microbiology or other areas where complex microbial dysbioses require immediate intervention. The reason for this is the length of time required to generate and analyze omics data. Here, we describe the development and application of a pipeline for multi-omics data analysis in time frames matching those of the culture-based approaches often used for these applications. This study applied multi-omics methods effectively in clinically relevant time frames and sets a precedent toward their implementation in clinical medicine and industrial microbiology.
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spelling pubmed-50697462016-11-07 From Sample to Multi-Omics Conclusions in under 48 Hours Quinn, Robert A. Navas-Molina, Jose A. Hyde, Embriette R. Song, Se Jin Vázquez-Baeza, Yoshiki Humphrey, Greg Gaffney, James Minich, Jeremiah J. Melnik, Alexey V. Herschend, Jakob DeReus, Jeff Durant, Austin Dutton, Rachel J. Khosroheidari, Mahdieh Green, Clifford da Silva, Ricardo Dorrestein, Pieter C. Knight, Rob mSystems Research Article Multi-omics methods have greatly advanced our understanding of the biological organism and its microbial associates. However, they are not routinely used in clinical or industrial applications, due to the length of time required to generate and analyze omics data. Here, we applied a novel integrated omics pipeline for the analysis of human and environmental samples in under 48 h. Human subjects that ferment their own foods provided swab samples from skin, feces, oral cavity, fermented foods, and household surfaces to assess the impact of home food fermentation on their microbial and chemical ecology. These samples were analyzed with 16S rRNA gene sequencing, inferred gene function profiles, and liquid chromatography-tandem mass spectrometry (LC-MS/MS) metabolomics through the Qiita, PICRUSt, and GNPS pipelines, respectively. The human sample microbiomes clustered with the corresponding sample types in the American Gut Project (http://www.americangut.org), and the fermented food samples produced a separate cluster. The microbial communities of the household surfaces were primarily sourced from the fermented foods, and their consumption was associated with increased gut microbial diversity. Untargeted metabolomics revealed that human skin and fermented food samples had separate chemical ecologies and that stool was more similar to fermented foods than to other sample types. Metabolites from the fermented foods, including plant products such as procyanidin and pheophytin, were present in the skin and stool samples of the individuals consuming the foods. Some food metabolites were modified during digestion, and others were detected in stool intact. This study represents a first-of-its-kind analysis of multi-omics data that achieved time intervals matching those of classic microbiological culturing. IMPORTANCE Polymicrobial infections are difficult to diagnose due to the challenge in comprehensively cultivating the microbes present. Omics methods, such as 16S rRNA sequencing, metagenomics, and metabolomics, can provide a more complete picture of a microbial community and its metabolite production, without the biases and selectivity of microbial culture. However, these advanced methods have not been applied to clinical or industrial microbiology or other areas where complex microbial dysbioses require immediate intervention. The reason for this is the length of time required to generate and analyze omics data. Here, we describe the development and application of a pipeline for multi-omics data analysis in time frames matching those of the culture-based approaches often used for these applications. This study applied multi-omics methods effectively in clinically relevant time frames and sets a precedent toward their implementation in clinical medicine and industrial microbiology. American Society for Microbiology 2016-04-26 /pmc/articles/PMC5069746/ /pubmed/27822524 http://dx.doi.org/10.1128/mSystems.00038-16 Text en Copyright © 2016 Quinn et al. http://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 (http://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Quinn, Robert A.
Navas-Molina, Jose A.
Hyde, Embriette R.
Song, Se Jin
Vázquez-Baeza, Yoshiki
Humphrey, Greg
Gaffney, James
Minich, Jeremiah J.
Melnik, Alexey V.
Herschend, Jakob
DeReus, Jeff
Durant, Austin
Dutton, Rachel J.
Khosroheidari, Mahdieh
Green, Clifford
da Silva, Ricardo
Dorrestein, Pieter C.
Knight, Rob
From Sample to Multi-Omics Conclusions in under 48 Hours
title From Sample to Multi-Omics Conclusions in under 48 Hours
title_full From Sample to Multi-Omics Conclusions in under 48 Hours
title_fullStr From Sample to Multi-Omics Conclusions in under 48 Hours
title_full_unstemmed From Sample to Multi-Omics Conclusions in under 48 Hours
title_short From Sample to Multi-Omics Conclusions in under 48 Hours
title_sort from sample to multi-omics conclusions in under 48 hours
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5069746/
https://www.ncbi.nlm.nih.gov/pubmed/27822524
http://dx.doi.org/10.1128/mSystems.00038-16
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