Benchmarking protein structure predictors to assist machine learning-guided peptide discovery

17 March 2023, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Machine learning models provide an informed and efficient strategy to create novel peptide and protein sequences with the desired profiles. Nevertheless, they are primarily trained on sequences where the tridimensional structures of peptides and proteins are often overlooked. We need a fast and reliable approach to estimate the structural diversity of medium-large training sets before building models. This study benchmarked four protein structure prediction methods (Jpred4, PEP2D, PSIPRED, AlphaFold2) using 261 curated and experimentally known structures from the PDBe database. We applied our best predictor to map the structural landscape of GRAMPA, the giant and vastly uncharted repository of 5,980 antimicrobial peptides. The dataset was predominantly made of loose helices (65.1%), followed by random coils (17.8%), and β-stranded and mixed structures accounted for the rest.

Keywords

Peptides
protein structure prediction
structural landscape
AlphaFold2 
benchmarking

Supplementary materials

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Figure S1, Tables S1 and S2
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