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MOFormer: navigating the antimicrobial peptide design space with Pareto-based multi-objective transformer

Li Wang, Xiangzheng Fu, Jiahao Yang, Xinyi Zhang, Xiucai Ye, Tetsuya Sakurai, Xiangxiang Zeng, Yiping Liu

2025Briefings in Bioinformatics6 citationsDOIOpen Access PDF

Abstract

Antimicrobial peptide (AMP) design through deep learning holds the potential to revolutionize antibiotic development. Despite recent progress in AMP generation, designing peptide antibiotics with multiple optimal properties remains a significant challenge. We present MOFormer, an advanced multi-objective AMP design pipeline capable of optimizing multiple AMP properties simultaneously. By leveraging a conditional Transformer, the model refines the AMP sequence-property landscape for efficient multi-objective generation. It also incorporates regularization techniques to maintain a highly structured space, enabling the sampling of precise and desirable candidates. Comparative analyses reveal that MOFormer achieves the optimal hypervolume in the multi-objective space, surpassing advanced methods in simultaneously maximizing antimicrobial activity (minimum inhibitory concentration) and minimizing hemolysis and toxicity, thereby yielding the most promising and desirable set of candidate peptides. When extended to a tri-objective scenario, MOFormer continues to exhibit remarkable optimization performance. Finally, we execute a hierarchical and rapid ranking of generated candidates based on Pareto fronts. We conducted a comprehensive validation of the physicochemical properties and target attributes of the candidates, while AlphaFold structure predictions revealed notably reliable predicted local distance difference test scores ranging from 70% to 87%. Our findings suggest that MOFormer holds potential to accelerate the discovery of efficacious peptide antibiotics by optimizing multi-objective trade-offs.

Topics & Concepts

Computer scienceTransformerPeptideRanking (information retrieval)Pipeline (software)Computational biologyArtificial intelligenceMachine learningPareto principleChemical spaceBiochemical engineeringAntimicrobialSet (abstract data type)Antimicrobial peptidesAntibioticsPareto optimalData miningDesign of experimentsRegularization (linguistics)HemolysisSynthetic biologyAntimicrobial Peptides and ActivitiesProtein Hydrolysis and Bioactive PeptidesComputational Drug Discovery Methods