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  5. The protein structurome of Orthornavirae and its dark matter

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Article
en
2024

The protein structurome of Orthornavirae and its dark matter

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en
2024
Vol 16 (2)
Vol. 16
DOI: 10.1128/mbio.03200-24

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Eugene V Koonin
Eugene V Koonin

National Center for Biotechnology Information

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Pascal Mutz
Antônio Pedro Camargo
Harutyun Sahakyan
+6 more

Abstract

ABSTRACT Metatranscriptomics is uncovering more and more diverse families of viruses with RNA genomes comprising the viral kingdom Orthornavirae in the realm Riboviria. Thorough protein annotation and comparison are essential to get insights into the functions of viral proteins and virus evolution. In addition to sequence- and hmm profile‑based methods, protein structure comparison adds a powerful tool to uncover protein functions and relationships. We constructed an Orthornavirae “structurome” consisting of already annotated as well as unannotated (“dark matter”) proteins and domains encoded in viral genomes. We used protein structure modeling and similarity searches to illuminate the remaining dark matter in hundreds of thousands of orthornavirus genomes. The vast majority of the dark matter domains showed either “generic” folds, such as single α-helices, or no high confidence structure predictions. Nevertheless, a variety of lineage-specific globular domains that were new either to orthornaviruses in general or to particular virus families were identified within the proteomic dark matter of orthornaviruses, including several predicted nucleic acid-binding domains and nucleases. In addition, we identified a case of exaptation of a cellular nucleoside monophosphate kinase as an RNA-binding protein in several virus families. Notwithstanding the continuing discovery of numerous orthornaviruses, it appears that all the protein domains conserved in large groups of viruses have already been identified. The rest of the viral proteome seems to be dominated by poorly structured domains including intrinsically disordered ones that likely mediate specific virus-host interactions. IMPORTANCE Advanced methods for protein structure prediction, such as AlphaFold2, greatly expand our capability to identify protein domains and infer their likely functions and evolutionary relationships. This is particularly pertinent for proteins encoded by viruses that are known to evolve rapidly and as a result often cannot be adequately characterized by analysis of the protein sequences. We performed an exhaustive structure prediction and comparative analysis for uncharacterized proteins and domains (“dark matter”) encoded by viruses with RNA genomes. The results show the dark matter of RNA virus proteome consists mostly of disordered and all-α-helical domains that cannot be readily assigned a specific function and that likely mediate various interactions between viral proteins and between viral and host proteins. The great majority of globular proteins and domains of RNA viruses are already known although we identified several unexpected domains represented in individual viral families.

How to cite this publication

Pascal Mutz, Antônio Pedro Camargo, Harutyun Sahakyan, Uri Neri, Anamarija Butković, Yuri I. Wolf, Mart Krupovìč, Valerian V. Dolja, Eugene V Koonin (2024). The protein structurome of Orthornavirae and its dark matter. , 16(2), DOI: https://doi.org/10.1128/mbio.03200-24.

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Publication Details

Type

Article

Year

2024

Authors

9

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1128/mbio.03200-24

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