MAC-AMP: A Closed-Loop Multi-Agent Collaboration System for Multi-Objective Antimicrobial Peptide Design.

By: Gen Zhou, Sugitha Janarthanan, Lianghong Chen, Pingzhao Hu

Published: 2026-02-16

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Abstract

This paper introduces MAC-AMP, a closed-loop multi-agent collaboration (MAC) system for multi-objective antimicrobial peptide (AMP) design, addressing the global health threat of antimicrobial resistance. Existing AI models struggle to balance key goals like activity, toxicity, and novelty. MAC-AMP implements an autonomous simulated peer review-adaptive reinforcement learning framework that designs novel AMPs, outperforming other generative models in antibacterial activity, toxicity reduction, and structural reliability.

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MAC-AMP: A Closed-Loop Multi-Agent Collaboration System for Multi-Objective Antimicrobial Peptide Design. | ArXiv Intelligence