Computational approaches to predict bacteriophage-host relationships
Publication year
2016Source
FEMS Microbiology Reviews, 40, 2, (2016), pp. 258-72ISSN
Publication type
Article / Letter to editor
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Organization
CMBI
Journal title
FEMS Microbiology Reviews
Volume
vol. 40
Issue
iss. 2
Page start
p. 258
Page end
p. 72
Subject
Radboudumc 14: Tumours of the digestive tract RIMLS: Radboud Institute for Molecular Life SciencesAbstract
Metagenomics has changed the face of virus discovery by enabling the accurate identification of viral genome sequences without requiring isolation of the viruses. As a result, metagenomic virus discovery leaves the first and most fundamental question about any novel virus unanswered: What host does the virus infect? The diversity of the global virosphere and the volumes of data obtained in metagenomic sequencing projects demand computational tools for virus-host prediction. We focus on bacteriophages (phages, viruses that infect bacteria), the most abundant and diverse group of viruses found in environmental metagenomes. By analyzing 820 phages with annotated hosts, we review and assess the predictive power of in silico phage-host signals. Sequence homology approaches are the most effective at identifying known phage-host pairs. Compositional and abundance-based methods contain significant signal for phage-host classification, providing opportunities for analyzing the unknowns in viral metagenomes. Together, these computational approaches further our knowledge of the interactions between phages and their hosts. Importantly, we find that all reviewed signals significantly link phages to their hosts, illustrating how current knowledge and insights about the interaction mechanisms and ecology of coevolving phages and bacteria can be exploited to predict phage-host relationships, with potential relevance for medical and industrial applications.
This item appears in the following Collection(s)
- Academic publications [246216]
- Electronic publications [133894]
- Faculty of Medical Sciences [93266]
- Open Access publications [107414]
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