2023
DOI: 10.1101/2023.12.02.569716
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Deep Learning-based structural and functional annotation of Pandoravirus hypothetical proteins

Joseph L. Horder,
Abbie J. Connor,
Amy L. Duggan
et al.

Abstract: Giant viruses, including Pandoraviruses, contain large amounts of genomic ‘dark matter’ - genes encoding proteins of unknown function. New generation, deep learning-based protein structure modelling offers new opportunities to apply structure-based function inference to these sequences, often labelled as hypothetical proteins. However, the AlphaFold Protein Structure Database, a convenient resource covering the majority of UniProt, currently lacks models for most viral proteins. Here, we apply a panoply of pre… Show more

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