2022
DOI: 10.1093/g3journal/jkac244
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Phylogenomic analyses and host range prediction of cluster P mycobacteriophages

Abstract: Bacteriophages, infecting bacterial hosts in every environment on our planet, are a driver of adaptive evolution in bacterial communities. At the same time, the host range of many bacteriophages—and thus one of the selective pressures acting on complex microbial systems in nature—remains poorly characterized. Here, we computationally inferred the putative host ranges of 40 cluster P mycobacteriophages, including members from six sub-clusters (P1-P6). A series of comparative genomic analyses revealed that mycob… Show more

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“…To obtain insights into which Microbacterium species each bacteriophage might be able to infect, COUSIN v.0.4 [ 25 ] was used to determine the COdon Usage Similarity INdex (COUSIN 59 ) for each of the 125 cluster EA bacteriophages ( Supplementary Table S1 ) across 14 putative microbacterial host species ( Supplementary Table S2 ), including M. foliorum B-24224 (i.e., the experimentally validated host for the majority of the isolated cluster EA bacteriophages). Following Howell, Versoza et al [ 26 ], host ranges were predicted using both exploratory and confirmatory methods—PHERI v.0.2 [ 27 ] and WIsH v.1.1 [ 19 ], respectively. PHERI is a machine-learning-based tool that capitalizes on protein sequence similarity, while WIsH utilizes the oligonucleotide frequency profiles of bacteriophages to predict prospective hosts.…”
Section: Methodsmentioning
confidence: 99%
“…To obtain insights into which Microbacterium species each bacteriophage might be able to infect, COUSIN v.0.4 [ 25 ] was used to determine the COdon Usage Similarity INdex (COUSIN 59 ) for each of the 125 cluster EA bacteriophages ( Supplementary Table S1 ) across 14 putative microbacterial host species ( Supplementary Table S2 ), including M. foliorum B-24224 (i.e., the experimentally validated host for the majority of the isolated cluster EA bacteriophages). Following Howell, Versoza et al [ 26 ], host ranges were predicted using both exploratory and confirmatory methods—PHERI v.0.2 [ 27 ] and WIsH v.1.1 [ 19 ], respectively. PHERI is a machine-learning-based tool that capitalizes on protein sequence similarity, while WIsH utilizes the oligonucleotide frequency profiles of bacteriophages to predict prospective hosts.…”
Section: Methodsmentioning
confidence: 99%