Development of chemokine network inhibitors using combinatorial saturation mutagenesis

Abstract Targeting chemokine-driven inflammation has been elusive due to redundant pathways constituting chemokine-immune cell networks. Tick evasins overcome redundant pathways by broadly targeting either CC or CXC-chemokine classes. Recently identified evasin-derived peptides inhibiting both chemo...

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Bibliographic Details
Main Authors: Jhanna Kryukova, Serena Vales, Megan Payne, Gintare Smagurauskaite, Soumyanetra Chandra, Charlie J. Clark, Graham Davies, Shoumo Bhattacharya
Format: Article
Language:English
Published: Nature Portfolio 2025-04-01
Series:Communications Biology
Online Access:https://doi.org/10.1038/s42003-025-07778-6
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Summary:Abstract Targeting chemokine-driven inflammation has been elusive due to redundant pathways constituting chemokine-immune cell networks. Tick evasins overcome redundant pathways by broadly targeting either CC or CXC-chemokine classes. Recently identified evasin-derived peptides inhibiting both chemokine classes provide a starting point for developing agents with enhanced potency and breadth of action. Structure-guided and affinity maturation approaches to achieve this are unsuitable when multiple targets are concerned. Here we develop a combinatorial saturation mutagenesis optimisation strategy (CoSMOS). This identifies a combinatorially mutated evasin-derived peptide with significantly enhanced pIC50 against three different inflammatory disease chemokine pools. Using AlphaFold 3 to model peptide - chemokine interactions, we show that the combinatorially mutated peptide has increased total and hydrophobic inter-chain bonding via tryptophan residues and is predicted to sterically hinder chemokine interactions required for immune cell migration. We suggest that CoSMOS-generated promiscuous binding activities could target disease networks where structurally related proteins drive redundant signalling pathways.
ISSN:2399-3642