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Accelerating the prediction and discovery of peptide hydrogels with human-in-the-loop

Medicine and Health

Accelerating the prediction and discovery of peptide hydrogels with human-in-the-loop

T. Xu, J. Wang, et al.

Unlock the secrets of peptide hydrogel formation with the groundbreaking research conducted by Tengyan Xu, Jiaqi Wang, Shuang Zhao, Dinghao Chen, Hongyue Zhang, Yu Fang, Nan Kong, Ziao Zhou, Wenbin Li, and Huaimin Wang. This study reveals an innovative machine learning-experiment hybrid approach that predicts tetrapeptide hydrogels with an impressive 87.1% success rate, showcasing a de novo-designed peptide hydrogel that boosts immune responses. Dive into this exciting development in biomaterials!

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~3 min • Beginner • English
Abstract
The amino acid sequences of peptides determine their self-assembling properties. Accurate prediction of peptidic hydrogel formation, however, remains a challenging task. This work describes an interactive approach involving the mutual information exchange between experiment and machine learning for robust prediction and design of (tetra)peptide hydrogels. We chemically synthesize more than 160 natural tetrapeptides and evaluate their hydrogel-forming ability, and then employ machine learning-experiment iterative loops to improve the accuracy of the gelation prediction. We construct a score function coupling the aggregation propensity, hydrophobicity, and gelation corrector Cg, and generate an 8,000-sequence library, within which the success rate of predicting hydrogel formation reaches 87.1%. Notably, the de novo-designed peptide hydrogel selected from this work boosts the immune response of the receptor binding domain of SARS-CoV-2 in the mice model. Our approach taps into the potential of machine learning for predicting peptide hydrogelator and significantly expands the scope of natural peptide hydrogels.
Publisher
Nature Communications
Published On
Jun 30, 2023
Authors
Tengyan Xu, Jiaqi Wang, Shuang Zhao, Dinghao Chen, Hongyue Zhang, Yu Fang, Nan Kong, Ziao Zhou, Wenbin Li, Huaimin Wang
Tags
peptide hydrogels
machine learning
tetrapeptides
hydrogel formation
immune response
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