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efam: an expanded, metaproteome-supported HMM profile database of viral protein families

Authors :
Zayed, Ahmed A
Lücking, Dominik
Mohssen, Mohamed
Cronin, Dylan
Bolduc, Ben
Gregory, Ann C
Hargreaves, Katherine R
Piehowski, Paul D
White Iii, Richard A
Huang, Eric L
Adkins, Joshua N
Roux, Simon
Moraru, Cristina
Sullivan, Matthew B
Robinson, Peter
Source :
Bioinformatics (Oxford, England), vol 37, iss 22
Publication Year :
2021
Publisher :
eScholarship, University of California, 2021.

Abstract

MotivationViruses infect, reprogram and kill microbes, leading to profound ecosystem consequences, from elemental cycling in oceans and soils to microbiome-modulated diseases in plants and animals. Although metagenomic datasets are increasingly available, identifying viruses in them is challenging due to poor representation and annotation of viral sequences in databases.ResultsHere, we establish efam, an expanded collection of Hidden Markov Model (HMM) profiles that represent viral protein families conservatively identified from the Global Ocean Virome 2.0 dataset. This resulted in 240 311 HMM profiles, each with at least 2 protein sequences, making efam >7-fold larger than the next largest, pan-ecosystem viral HMM profile database. Adjusting the criteria for viral contig confidence from 'conservative' to 'eXtremely Conservative' resulted in 37 841 HMM profiles in our efam-XC database. To assess the value of this resource, we integrated efam-XC into VirSorter viral discovery software to discover viruses from less-studied, ecologically distinct oxygen minimum zone (OMZ) marine habitats. This expanded database led to an increase in viruses recovered from every tested OMZ virome by ∼24% on average (up to ∼42%) and especially improved the recovery of often-missed shorter contigs (

Details

Database :
OpenAIRE
Journal :
Bioinformatics (Oxford, England), vol 37, iss 22
Accession number :
edsair.dedup.wf.001..d86e68d5912696aecd35925ea85946d6