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      From Sample to Multi-Omics Conclusions in under 48 Hours

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          Abstract

          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.

          ABSTRACT

          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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          Most cited references14

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          EMPeror: a tool for visualizing high-throughput microbial community data

          Background As microbial ecologists take advantage of high-throughput sequencing technologies to describe microbial communities across ever-increasing numbers of samples, new analysis tools are required to relate the distribution of microbes among larger numbers of communities, and to use increasingly rich and standards-compliant metadata to understand the biological factors driving these relationships. In particular, the Earth Microbiome Project drives these needs by profiling the genomic content of tens of thousands of samples across multiple environment types. Findings Features of EMPeror include: ability to visualize gradients and categorical data, visualize different principal coordinates axes, present the data in the form of parallel coordinates, show taxa as well as environmental samples, dynamically adjust the size and transparency of the spheres representing the communities on a per-category basis, dynamically scale the axes according to the fraction of variance each explains, show, hide or recolor points according to arbitrary metadata including that compliant with the MIxS family of standards developed by the Genomic Standards Consortium, display jackknifed-resampled data to assess statistical confidence in clustering, perform coordinate comparisons (useful for procrustes analysis plots), and greatly reduce loading times and overall memory footprint compared with existing approaches. Additionally, ease of sharing, given EMPeror’s small output file size, enables agile collaboration by allowing users to embed these visualizations via emails or web pages without the need for extra plugins. Conclusions Here we present EMPeror, an open source and web browser enabled tool with a versatile command line interface that allows researchers to perform rapid exploratory investigations of 3D visualizations of microbial community data, such as the widely used principal coordinates plots. EMPeror includes a rich set of controllers to modify features as a function of the metadata. By being specifically tailored to the requirements of microbial ecologists, EMPeror thus increases the speed with which insight can be gained from large microbiome datasets.
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            Xenobiotics shape the physiology and gene expression of the active human gut microbiome.

            The human gut contains trillions of microorganisms that influence our health by metabolizing xenobiotics, including host-targeted drugs and antibiotics. Recent efforts have characterized the diversity of this host-associated community, but it remains unclear which microorganisms are active and what perturbations influence this activity. Here, we combine flow cytometry, 16S rRNA gene sequencing, and metatranscriptomics to demonstrate that the gut contains a distinctive set of active microorganisms, primarily Firmicutes. Short-term exposure to a panel of xenobiotics significantly affected the physiology, structure, and gene expression of this active gut microbiome. Xenobiotic-responsive genes were found across multiple bacterial phyla, encoding antibiotic resistance, drug metabolism, and stress response pathways. These results demonstrate the power of moving beyond surveys of microbial diversity to better understand metabolic activity, highlight the unintended consequences of xenobiotics, and suggest that attempts at personalized medicine should consider interindividual variations in the active human gut microbiome. Copyright © 2013 Elsevier Inc. All rights reserved.
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              Mass spectral molecular networking of living microbial colonies.

              Integrating the governing chemistry with the genomics and phenotypes of microbial colonies has been a "holy grail" in microbiology. This work describes a highly sensitive, broadly applicable, and cost-effective approach that allows metabolic profiling of live microbial colonies directly from a Petri dish without any sample preparation. Nanospray desorption electrospray ionization mass spectrometry (MS), combined with alignment of MS data and molecular networking, enabled monitoring of metabolite production from live microbial colonies from diverse bacterial genera, including Bacillus subtilis, Streptomyces coelicolor, Mycobacterium smegmatis, and Pseudomonas aeruginosa. This work demonstrates that, by using these tools to visualize small molecular changes within bacterial interactions, insights can be gained into bacterial developmental processes as a result of the improved organization of MS/MS data. To validate this experimental platform, metabolic profiling was performed on Pseudomonas sp. SH-C52, which protects sugar beet plants from infections by specific soil-borne fungi [R. Mendes et al. (2011) Science 332:1097-1100]. The antifungal effect of strain SH-C52 was attributed to thanamycin, a predicted lipopeptide encoded by a nonribosomal peptide synthetase gene cluster. Our technology, in combination with our recently developed peptidogenomics strategy, enabled the detection and partial characterization of thanamycin and showed that it is a monochlorinated lipopeptide that belongs to the syringomycin family of antifungal agents. In conclusion, the platform presented here provides a significant advancement in our ability to understand the spatiotemporal dynamics of metabolite production in live microbial colonies and communities.
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                Author and article information

                Contributors
                Role: Editor
                Journal
                mSystems
                mSystems
                msys
                msys
                mSystems
                mSystems
                American Society for Microbiology (1752 N St., N.W., Washington, DC )
                2379-5077
                26 April 2016
                Mar-Apr 2016
                : 1
                : 2
                : e00038-16
                Affiliations
                [a ]Collaborative Mass Spectrometry Innovation Center, Skaggs School of Pharmacy and Pharmaceutical Sciences, University of California, San Diego, San Diego, California, USA
                [b ]Department of Pediatrics, University of California, San Diego, San Diego, California, USA
                [c ]Department of Computer Science and Engineering, University of California, San Diego, San Diego, California, USA
                [d ]Fermenters Club of San Diego, San Diego, California, USA
                [e ]Division of Biological Sciences, University of California, San Diego, San Diego, California, USA
                [f ]Institute for Genomic Medicine Genomics Center, University of California, San Diego, San Diego, California, USA
                [g ]Center for Microbiome Innovation, University of California, San Diego, San Diego, California, USA
                [h ]Department of Pharmacology, University of California, San Diego, San Diego, California, USA
                [i ]Department of Ecology and Evolutionary Biology, University of Colorado Boulder, Boulder, Colorado, USA
                Argonne National Laboratory
                Author notes
                Address correspondence to Robert A. Quinn, rquinn@ 123456ucsd.edu , Pieter C. Dorrestein (metabolomics questions), pdorrestein@ 123456ucsd.edu , or Rob Knight (sequencing), robknight@ 123456ucsd.edu .

                R.A.Q., J.A.N.-M., and E.R.B. are co-first authors.

                Citation Quinn RA, Navas-Molina JA, Hyde ER, Song SJ, Vázquez-Baeza Y, Humphrey G, Gaffney J, Minich JJ, Melnik AV, Herschend J, DeReus J, Durant A, Dutton RJ, Khosroheidari M, Green C, da Silva R, Dorrestein PC, Knight R. 2016. From sample to multi-omics conclusions in under 48 hours. mSystems 1(2):e00038-16. doi: 10.1128/mSystems.00038-16.

                Author information
                http://orcid.org/0000-0003-0750-5709
                Article
                mSystems00038-16
                10.1128/mSystems.00038-16
                5069746
                4c3809c6-1e4f-46fd-b025-a0751cb69220
                Copyright © 2016 Quinn et al.

                This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license.

                History
                : 30 March 2016
                : 30 March 2016
                Page count
                Figures: 5, Tables: 0, Equations: 0, References: 44, Pages: 13, Words: 8269
                Funding
                Funded by: Sloan Foundation
                Award Recipient : Robert Andrew Quinn Award Recipient : Alexey V. Melnik Award Recipient : Jakob Herschend Award Recipient : Pieter C. Dorrestein
                Funded by: National Science Foundation (NSF)
                Award ID: ACI-1053575
                Award Recipient : Robert Andrew Quinn Award Recipient : José Antonio Navas-Molina Award Recipient : Embriette Hyde Award Recipient : Se Jin Song Award Recipient : Yoshiki Vasquez-Baeza Award Recipient : Greg Humphrey Award Recipient : James Gaffney Award Recipient : Jeremiah J. Minich Award Recipient : Alexey V. Melnik Award Recipient : Jakob Herschend Award Recipient : Jeff DeReus Award Recipient : Austin Durant Award Recipient : Mahdieh Khosroheidari Award Recipient : Clifford Green Award Recipient : Ricardo da Silva Award Recipient : Pieter C. Dorrestein Award Recipient : Rob Knight
                Funded by: National Science Foundation (NSF)
                Award ID: 1341698
                Award Recipient : Pieter C. Dorrestein Award Recipient : Rob Knight Award Recipient : Robert Andrew Quinn Award Recipient : José Antonio Navas-Molina Award Recipient : Embriette Hyde Award Recipient : Se Jin Song Award Recipient : Yoshiki Vasquez-Baeza Award Recipient : Greg Humphrey Award Recipient : James Gaffney Award Recipient : Jeremiah J. Minich Award Recipient : Alexey V. Melnik Award Recipient : Jakob Herschend Award Recipient : Jeff DeReus Award Recipient : Austin Durant Award Recipient : Mahdieh Khosroheidari Award Recipient : Clifford Green Award Recipient : Ricardo da Silva
                Funded by: São Paulo Research Foundation
                Award ID: FAPESP-2015/03348-3
                Award Recipient : Ricardo da Silva
                Categories
                Research Article
                Novel Systems Biology Techniques
                Custom metadata
                March/April 2016

                16s rrna,microbiome,fermented food,metabolome,molecular networking,rapid response

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