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BioMaS: a Modular Pipeline for Bioinformatic Analysis of Metagenomic AmpliconS

Overview
Publisher Biomed Central
Specialty Biology
Date 2015 Jul 2
PMID 26130132
Citations 30
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Abstract

Background: Substantial advances in microbiology, molecular evolution and biodiversity have been carried out in recent years thanks to Metagenomics, which allows to unveil the composition and functions of mixed microbial communities in any environmental niche. If the investigation is aimed only at the microbiome taxonomic structure, a target-based metagenomic approach, here also referred as Meta-barcoding, is generally applied. This approach commonly involves the selective amplification of a species-specific genetic marker (DNA meta-barcode) in the whole taxonomic range of interest and the exploration of its taxon-related variants through High-Throughput Sequencing (HTS) technologies. The accessibility to proper computational systems for the large-scale bioinformatic analysis of HTS data represents, currently, one of the major challenges in advanced Meta-barcoding projects.

Results: BioMaS (Bioinformatic analysis of Metagenomic AmpliconS) is a new bioinformatic pipeline designed to support biomolecular researchers involved in taxonomic studies of environmental microbial communities by a completely automated workflow, comprehensive of all the fundamental steps, from raw sequence data upload and cleaning to final taxonomic identification, that are absolutely required in an appropriately designed Meta-barcoding HTS-based experiment. In its current version, BioMaS allows the analysis of both bacterial and fungal environments starting directly from the raw sequencing data from either Roche 454 or Illumina HTS platforms, following two alternative paths, respectively. BioMaS is implemented into a public web service available at https://recasgateway.ba.infn.it/ and is also available in Galaxy at http://galaxy.cloud.ba.infn.it:8080 (only for Illumina data).

Conclusion: BioMaS is a friendly pipeline for Meta-barcoding HTS data analysis specifically designed for users without particular computing skills. A comparative benchmark, carried out by using a simulated dataset suitably designed to broadly represent the currently known bacterial and fungal world, showed that BioMaS outperforms QIIME and MOTHUR in terms of extent and accuracy of deep taxonomic sequence assignments.

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References
1.
DeSantis T, Hugenholtz P, Larsen N, Rojas M, Brodie E, Keller K . Greengenes, a chimera-checked 16S rRNA gene database and workbench compatible with ARB. Appl Environ Microbiol. 2006; 72(7):5069-72. PMC: 1489311. DOI: 10.1128/AEM.03006-05. View

2.
Goecks J, Nekrutenko A, Taylor J . Galaxy: a comprehensive approach for supporting accessible, reproducible, and transparent computational research in the life sciences. Genome Biol. 2010; 11(8):R86. PMC: 2945788. DOI: 10.1186/gb-2010-11-8-r86. View

3.
Klindworth A, Pruesse E, Schweer T, Peplies J, Quast C, Horn M . Evaluation of general 16S ribosomal RNA gene PCR primers for classical and next-generation sequencing-based diversity studies. Nucleic Acids Res. 2012; 41(1):e1. PMC: 3592464. DOI: 10.1093/nar/gks808. View

4.
Huerta-Cepas J, Dopazo J, Gabaldon T . ETE: a python Environment for Tree Exploration. BMC Bioinformatics. 2010; 11:24. PMC: 2820433. DOI: 10.1186/1471-2105-11-24. View

5.
Quince C, Lanzen A, Davenport R, Turnbaugh P . Removing noise from pyrosequenced amplicons. BMC Bioinformatics. 2011; 12:38. PMC: 3045300. DOI: 10.1186/1471-2105-12-38. View