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Rbec: a tool for analysis of amplicon sequencing data from synthetic microbial communities.

Pengfan ZhangStijn SpaepenYang BaiStéphane HacquardRuben Garrido-Oter
Published in: ISME communications (2021)
Synthetic microbial communities (SynComs) constitute an emerging and powerful tool in biological, biomedical, and biotechnological research. Despite recent advances in algorithms for the analysis of culture-independent amplicon sequencing data from microbial communities, there is a lack of tools specifically designed for analyzing SynCom data, where reference sequences for each strain are available. Here we present Rbec, a tool designed for the analysis of SynCom data that accurately corrects PCR and sequencing errors in amplicon sequences and identifies intra-strain polymorphic variation. Extensive evaluation using mock bacterial and fungal communities show that our tool outperforms current methods for samples of varying complexity, diversity, and sequencing depth. Furthermore, Rbec also allows accurate detection of contaminants in SynCom experiments.
Keyphrases
  • electronic health record
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  • dna methylation
  • mass spectrometry
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  • adverse drug