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Mining folded proteomes in the era of accurate structure prediction

Charles Bayly-Jones, James C. Whisstock

2022PLoS Computational Biology17 citationsDOIOpen Access PDF

Abstract

Protein structure fundamentally underpins the function and processes of numerous biological systems. Fold recognition algorithms offer a sensitive and robust tool to detect structural, and thereby functional, similarities between distantly related homologs. In the era of accurate structure prediction owing to advances in machine learning techniques and a wealth of experimentally determined structures, previously curated sequence databases have become a rich source of biological information. Here, we use bioinformatic fold recognition algorithms to scan the entire AlphaFold structure database to identify novel protein family members, infer function and group predicted protein structures. As an example of the utility of this approach, we identify novel, previously unknown members of various pore-forming protein families, including MACPFs, GSDMs and aerolysin-like proteins.

Topics & Concepts

Protein function predictionProtein structure predictionProteomeComputational biologyStructural bioinformaticsProtein structure databaseComputer scienceProtein structureAerolysinProtein familyArtificial intelligenceFunction (biology)Structural genomicsSequence (biology)Protein functionMachine learningBioinformaticsBiologySequence databaseEvolutionary biologyGeneticsAeromonasBiochemistryBacteriaGeneRNA modifications and cancerRNA and protein synthesis mechanismsMachine Learning in Bioinformatics
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