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Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Environmental Sources Human Health Effects Nanoplastics Policy & Risk Remediation Sign in to save

Integrating biophysical modeling, quantum computing, and AI to discover plastic-binding peptides that combat microplastic pollution

PNAS Nexus 2025 5 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 63 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Jeet Dhoriyani, Michael T. Bergman, Jeet Dhoriyani, Michael T. Bergman, Fengqi You Fengqi You Fengqi You Fengqi You Michael T. Bergman, Michael T. Bergman, Michael T. Bergman, Michael T. Bergman, Carol K. Hall, Fengqi You Carol K. Hall, Michael T. Bergman, Fengqi You Fengqi You Carol K. Hall, Carol K. Hall, Fengqi You Fengqi You Fengqi You Carol K. Hall, Carol K. Hall, Fengqi You Fengqi You Fengqi You Fengqi You Carol K. Hall, Fengqi You

Summary

Scientists used a combination of artificial intelligence, quantum computing, and biophysics modeling to discover new peptides (short proteins) that bind tightly to common plastics like polyethylene and polypropylene. These plastic-binding peptides could eventually be used to create biological tools for detecting, filtering, or breaking down microplastic pollution. While still in the computational stage, this approach offers a promising new path toward cleaning up microplastics in the environment.

Polymers

Methods are needed to mitigate microplastic (MP) pollution to minimize their harm to the environment and human health. Given the ability of polypeptides to adsorb strongly to materials of micro- or nanometer size, plastic-binding peptides (PBPs) could help create bio-based tools for detecting, filtering, or degrading MNP pollution. However, the development of such tools is prevented by the lack of PBPs. In this work, we discover and evaluate PBPs for several common plastics by combining biophysical modeling, molecular dynamics (MD), quantum computing, and reinforcement learning. We frame peptide affinity for a given plastic through a Potts model that is a function of the amino acid sequence and then search for the amino acid sequences with the greatest predicted affinity using quantum annealing. We also use proximal policy optimization to find PBPs with a broader range of physicochemical properties, such as isoelectric point or solubility. Evaluation of the discovered PBPs in MD simulations demonstrates that the peptides have high affinity for two of the plastics: polyethylene and polypropylene. We conclude by describing how our computational approach could be paired with experimental approaches to create a nexus for designing and optimizing peptide-based tools that aid the detection, capture, or biodegradation of MPs. We thus hope that this study will aid in the fight against MP pollution.

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