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Deriving accurate microbiota profiles from human samples with low bacterial content through post-sequencing processing of Illumina MiSeq data

Authors :
Jocelyn M. Choo
Lex E. X. Leong
Elizabeth Nosworthy
Heidi C. Smith-Vaughan
Robyn L. Marsh
Stephen O'Leary
Jake Jervis-Bardy
Shashikanth Marri
Renee J. Smith
Peter S. Morris
Geraint B. Rogers
Source :
Microbiome
Publisher :
Springer Nature

Abstract

Background The rapid expansion of 16S rRNA gene sequencing in challenging clinical contexts has resulted in a growing body of literature of variable quality. To a large extent, this is due to a failure to address spurious signal that is characteristic of samples with low levels of bacteria and high levels of non-bacterial DNA. We have developed a workflow based on the paired-end read Illumina MiSeq-based approach, which enables significant improvement in data quality, post-sequencing. We demonstrate the efficacy of this methodology through its application to paediatric upper-respiratory samples from several anatomical sites. Results A workflow for processing sequence data was developed based on commonly available tools. Data generated from different sample types showed a marked variation in levels of non-bacterial signal and ‘contaminant’ bacterial reads. Significant differences in the ability of reference databases to accurately assign identity to operational taxonomic units (OTU) were observed. Three OTU-picking strategies were trialled as follows: de novo, open-reference and closed-reference, with open-reference performing substantially better. Relative abundance of OTUs identified as potential reagent contamination showed a strong inverse correlation with amplicon concentration allowing their objective removal. The removal of the spurious signal showed the greatest improvement in sample types typically containing low levels of bacteria and high levels of human DNA. A substantial impact of pre-filtering data and spurious signal removal was demonstrated by principal coordinate and co-occurrence analysis. For example, analysis of taxon co-occurrence in adenoid swab and middle ear fluid samples indicated that failure to remove the spurious signal resulted in the inclusion of six out of eleven bacterial genera that accounted for 80% of similarity between the sample types. Conclusions The application of the presented workflow to a set of challenging clinical samples demonstrates its utility in removing the spurious signal from the dataset, allowing clinical insight to be derived from what would otherwise be highly misleading output. While other approaches could potentially achieve similar improvements, the methodology employed here represents an accessible means to exclude the signal from contamination and other artefacts. Electronic supplementary material The online version of this article (doi:10.1186/s40168-015-0083-8) contains supplementary material, which is available to authorized users.

Details

Language :
English
ISSN :
20492618
Volume :
3
Issue :
1
Database :
OpenAIRE
Journal :
Microbiome
Accession number :
edsair.doi.dedup.....7ca724b04e37a8df88a7d0ccd7d8fa8f
Full Text :
https://doi.org/10.1186/s40168-015-0083-8