Known phyla dominate the Tara Oceans RNA virome

Author:

Edgar RobertORCID

Abstract

Abstract A recent study proposed five new RNA virus phyla, two of which, ‘Taraviricota’ and ‘Arctiviricota’, were stated to be ‘dominant in the oceans’. However, the study’s assignments classify 28,353 putative RdRp-containing contigs to known phyla but only 886 (2.8%) to the five proposed new phyla combined. I re-mapped the reads to the contigs, finding that known phyla also account for a large majority (93.8%) of reads according to the study’s classifications, and that contigs originally assigned to ‘Arctiviricota’ accounted for only a tiny fraction (0.01%) of reads from Arctic Ocean samples. Performing my own virus identification and classifications, I found that 99.95 per cent of reads could be assigned to known phyla. The most abundant species was Beihai picorna-like virus 34 (15% of reads), and the most abundant order-like cluster was classified as Picornavirales (45% of reads). Sequences in the claimed new phylum ‘Pomiviricota’ were placed inside a phylogenetic tree for established order Durnavirales with 100 per cent confidence. Moreover, two contigs assigned to the proposed phylum ‘Taraviricota’ were found to have high-identity alignments to dinoflagellate proteins, tentatively identifying this group of RdRp-like sequences as deriving from non-viral transcripts. Together, these results comprehensively contradict the claim that new phyla dominate the data.

Publisher

Oxford University Press (OUP)

Subject

Virology,Microbiology

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