4.7 Article

VPF-Class: taxonomic assignment and host prediction of uncultivated viruses based on viral protein families

Journal

BIOINFORMATICS
Volume 37, Issue 13, Pages 1805-1813

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btab026

Keywords

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Funding

  1. Ministerio de Ciencia e Innovacion (MCI)
  2. Agencia Estatal de investigacion (AEI)
  3. European Regional Development Funds (ERDF) [PGC2018-096956-B-C43]
  4. US Department of Energy Joint Genome Institute, a DOE Office of Science User Facility [DE-AC02-05CH11231]
  5. DOE Office of Science [DE-AC02-05CH11231]

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The study focused on utilizing Viral Protein Families (VPFs) for the taxonomic classification and host prediction of uncultured viruses, developing an automated tool VPF-Class for classification of viral contigs. VPF-Class demonstrated high accuracy in both viral contig classification and host prediction, showcasing its potential for use in large metagenomics datasets.
Motivation: Two key steps in the analysis of uncultured viruses recovered from metagenomes are the taxonomic classification of the viral sequences and the identification of putative host(s). Both steps rely mainly on the assignment of viral proteins to orthologs in cultivated viruses. Viral Protein Families (VPFs) can be used for the robust identification of new viral sequences in large metagenomics datasets. Despite the importance of VPF information for viral discovery, VPFs have not yet been explored for determining viral taxonomy and host targets. Results: In this work, we classified the set of VPFs from the IMG/VR database and developed VPF-Class. VPF-Class is a tool that automates the taxonomic classification and host prediction of viral contigs based on the assignment of their proteins to a set of classified VPFs. Applying VPF-Class on 731K uncultivated virus contigs from the IMG/VR database, we were able to classify 363K contigs at the genus level and predict the host of over 461K contigs. In the RefSeq database, VPF-class reported an accuracy of nearly 100% to classify dsDNA, ssDNA and retroviruses, at the genus level, considering a membership ratio and a confidence score of 0.2. The accuracy in host prediction was 86.4%, also at the genus level, considering a membership ratio of 0.3 and a confidence score of 0.5. And, in the prophages dataset, the accuracy in host prediction was 86% considering a membership ratio of 0.6 and a confidence score of 0.8. Moreover, from the Global Ocean Virome dataset, over 817K viral contigs out of 1 million were classified.

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