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In Silico Design and Analysis of Plastic-Binding Peptides

Michael T. Bergman, Xingqing Xiao, Carol K. Hall

2023The Journal of Physical Chemistry B23 citationsDOIOpen Access PDF

Abstract

Peptides that bind to inorganic materials can be used to functionalize surfaces, control crystallization, or assist in interfacial self-assembly. In the past, inorganic-binding peptides have been found predominantly through peptide library screening. While this method has successfully identified peptides that bind to a variety of materials, an alternative design approach that can intelligently search for peptides and provide physical insight for peptide affinity would be desirable. In this work, we develop a computational, physics-based approach to design inorganic-binding peptides, focusing on peptides that bind to the common plastics polyethylene, polypropylene, polystyrene, and poly(ethylene terephthalate). The PepBD algorithm, a Monte Carlo method that samples peptide sequence and conformational space, was modified to include simulated annealing, relax hydration constraints, and an ensemble of conformations to initiate design. These modifications led to the discovery of peptides with significantly better scores compared to those obtained using the original PepBD. PepBD scores were found to improve with increasing van der Waals interactions, although strengthening the intermolecular van der Waals interactions comes at the cost of introducing unfavorable electrostatic interactions. The best designs are enriched in amino acids with bulky side chains and possess hydrophobic and hydrophilic patches whose location depends on the adsorbed conformation. Future work will evaluate the top peptide designs in molecular dynamics simulations and experiment, enabling their application in microplastic pollution remediation and plastic-based biosensors.

Topics & Concepts

Peptidevan der Waals forceRational designMolecular dynamicsIn silicoCombinatorial chemistryMaterials scienceChemistryNanotechnologyComputational chemistryMoleculeOrganic chemistryBiochemistryGeneSupramolecular Self-Assembly in MaterialsAdvanced Proteomics Techniques and ApplicationsMachine Learning in Materials Science
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