Deorphanizing Peptides Using Structure Prediction
Felix Teufel, Jan C. Refsgaard, Marina A. Kasimova, Kristine Deibler, Christian T. Madsen, Carsten Stahlhut, Mads Grønborg, Ole Winther, Dennis Madsen
Abstract
Many endogenous peptides rely on signaling pathways to exert their function, but identifying their cognate receptors remains a challenging problem. We investigate the use of AlphaFold-Multimer complex structure prediction together with transmembrane topology prediction for peptide deorphanization. We find that AlphaFold's confidence metrics have strong performance for prioritizing true peptide-receptor interactions. In a library of 1112 human receptors, the method ranks true receptors in the top percentile on average for 11 benchmark peptide-receptor pairs.
Topics & Concepts
Computer scienceComputational biologyArtificial intelligenceBiologyMachine Learning in BioinformaticsChemical Synthesis and AnalysisProtein Structure and Dynamics