A probabilistic model to recover individual genomes from metagenomes
Author(s) -
Johannes Dröge,
Alexander Schönhuth,
Alice C. McHardy
Publication year - 2017
Publication title -
peerj computer science
Language(s) - English
Resource type - Journals
ISSN - 2376-5992
DOI - 10.7717/peerj-cs.117
Subject(s) - metagenomics , genome , workflow , computational biology , python (programming language) , probabilistic logic , computer science , contig , shotgun sequencing , biology , genetics , gene , artificial intelligence , database , operating system
Shotgun metagenomics of microbial communities reveal information about strains of relevance for applications in medicine, biotechnology and ecology. Recovering their genomes is a crucial but very challenging step due to the complexity of the underlying biological system and technical factors. Microbial communities are heterogeneous, with oftentimes hundreds of present genomes deriving from different species or strains, all at varying abundances and with different degrees of similarity to each other and reference data. We present a versatile probabilistic model for genome recovery and analysis, which aggregates three types of information that are commonly used for genome recovery from metagenomes. As potential applications we showcase metagenome contig classification, genome sample enrichment and genome bin comparisons. The open source implementation MGLEX is available via the\udPython Package Index\udand on\udGitHub\udand can be embedded into metagenome analysis workflows and programs
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