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Metatranscriptomic Analysis of Diverse Microbial Communities Reveals Core Metabolic Pathways and Microbiome-specific Functionality

Overview
Journal Microbiome
Publisher Biomed Central
Specialties Genetics
Microbiology
Date 2016 Jan 14
PMID 26757703
Citations 51
Authors
Affiliations
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Abstract

Background: Metatranscriptomics is emerging as a powerful technology for the functional characterization of complex microbial communities (microbiomes). Use of unbiased RNA-sequencing can reveal both the taxonomic composition and active biochemical functions of a complex microbial community. However, the lack of established reference genomes, computational tools and pipelines make analysis and interpretation of these datasets challenging. Systematic studies that compare data across microbiomes are needed to demonstrate the ability of such pipelines to deliver biologically meaningful insights on microbiome function.

Results: Here, we apply a standardized analytical pipeline to perform a comparative analysis of metatranscriptomic data from diverse microbial communities derived from mouse large intestine, cow rumen, kimchi culture, deep-sea thermal vent and permafrost. Sequence similarity searches allowed annotation of 19 to 76% of putative messenger RNA (mRNA) reads, with the highest frequency in the kimchi dataset due to its relatively low complexity and availability of closely related reference genomes. Metatranscriptomic datasets exhibited distinct taxonomic and functional signatures. From a metabolic perspective, we identified a common core of enzymes involved in amino acid, energy and nucleotide metabolism and also identified microbiome-specific pathways such as phosphonate metabolism (deep sea) and glycan degradation pathways (cow rumen). Integrating taxonomic and functional annotations within a novel visualization framework revealed the contribution of different taxa to metabolic pathways, allowing the identification of taxa that contribute unique functions.

Conclusions: The application of a single, standard pipeline confirms that the rich taxonomic and functional diversity observed across microbiomes is not simply an artefact of different analysis pipelines but instead reflects distinct environmental influences. At the same time, our findings show how microbiome complexity and availability of reference genomes can impact comprehensive annotation of metatranscriptomes. Consequently, beyond the application of standardized pipelines, additional caution must be taken when interpreting their output and performing downstream, microbiome-specific, analyses. The pipeline used in these analyses along with a tutorial has been made freely available for download from our project website: http://www.compsysbio.org/microbiome .

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References
1.
Wen L, Ley R, Volchkov P, Stranges P, Avanesyan L, Stonebraker A . Innate immunity and intestinal microbiota in the development of Type 1 diabetes. Nature. 2008; 455(7216):1109-13. PMC: 2574766. DOI: 10.1038/nature07336. View

2.
Tatusova T, Ciufo S, Fedorov B, ONeill K, Tolstoy I . RefSeq microbial genomes database: new representation and annotation strategy. Nucleic Acids Res. 2013; 42(Database issue):D553-9. PMC: 3965038. DOI: 10.1093/nar/gkt1274. View

3.
Kanehisa M, Goto S, Hattori M, Aoki-Kinoshita K, Itoh M, Kawashima S . From genomics to chemical genomics: new developments in KEGG. Nucleic Acids Res. 2005; 34(Database issue):D354-7. PMC: 1347464. DOI: 10.1093/nar/gkj102. View

4.
Golebiewski M, Deja-Sikora E, Cichosz M, Tretyn A, Wrobel B . 16S rDNA pyrosequencing analysis of bacterial community in heavy metals polluted soils. Microb Ecol. 2014; 67(3):635-47. PMC: 3962847. DOI: 10.1007/s00248-013-0344-7. View

5.
Yang J, Kalhan S, Hanson R . What is the metabolic role of phosphoenolpyruvate carboxykinase?. J Biol Chem. 2009; 284(40):27025-9. PMC: 2785631. DOI: 10.1074/jbc.R109.040543. View