期刊论文详细信息
BMC Bioinformatics
SPINGO: a rapid species-classifier for microbial amplicon sequences
Software
Ian B. Jeffery1  Feargal J. Ryan1  Marcus J. Claesson1  Guy Allard1 
[1] School of Microbiology and APC Microbiome Institute, University College Cork, Cork, Ireland;
关键词: Microbiota composition;    Metagenomics;    Species-classification;    16S rRNA gene amplicons;    cpn60;   
DOI  :  10.1186/s12859-015-0747-1
 received in 2015-03-19, accepted in 2015-09-17,  发布年份 2015
来源: Springer
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【 摘 要 】

BackgroundTaxonomic classification is a corner stone for the characterisation and comparison of microbial communities. Currently, most existing methods are either slow, restricted to specific communities, highly sensitive to taxonomic inconsistencies, or limited to genus level classification. As crucial microbiota information is hinging on high-level resolution it is imperative to increase taxonomic resolution to species level wherever possible.ResultsIn response to this need we developed SPINGO, a flexible and stand-alone software dedicated to high-resolution assignment of sequences to species level using partial 16S rRNA gene sequences from any environment. SPINGO compares favourably to other methods in terms of classification accuracy, and is as fast or faster than those that have higher error rates. As a demonstration of its flexibility for other types of target genes we successfully applied SPINGO also on cpn60 amplicon sequences.ConclusionsSPINGO is an accurate, flexible and fast method for low-level taxonomic assignment. This combination is becoming increasingly important for rapid and accurate processing of amplicon data generated by newer next generation sequencing technologies.

【 授权许可】

CC BY   
© Allard et al. 2015

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