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HighPlay: Cyclic Peptide Sequence Design Based on Reinforcement Learning and Protein Structure Prediction

  • Huitian Lin
  • , Cheng Zhu
  • , Tianfeng Shang
  • , Ning Zhu
  • , Kang Lin
  • , Chengyun Zhang
  • , Xiang Shao
  • , Xudong Wang
  • , Hongliang Duan
  • Zhejiang University of Technology
  • Shenzhen Highslab Therapeutics. Inc
  • Macao Polytechnic University
  • Shanghai Jiao Tong University

研究成果: Article同行評審

2 引文 斯高帕斯(Scopus)

摘要

The structural diversity and good biocompatibility of cyclic peptides have led to their emergence as potential therapeutic agents. Existing cyclic peptide design methods, whether traditional or emerging AI-assisted, rely on a multitude of experiments and face challenges such as limited molecular diversity, high cost, and time-consuming. In this study, we propose HighPlay, which integrates reinforcement learning (MCTS) with the HighFold structural prediction model to design cyclic peptide sequences based solely on the target protein sequence information, to achieve the synergistic optimization of cyclic peptide sequences and binding sites and to dynamically explore the sequence space without the need for predefined target information. The model was applied to the design of cyclic peptide sequences for three different targets, which were screened and verified through molecular dynamics simulations, demonstrating good binding affinity. Specifically, the cyclic peptide sequences designed for the TEAD4 target exhibited micromolar-level affinity in further experimental validation.

原文English
頁(從 - 到)12047-12057
頁數11
期刊Journal of Medicinal Chemistry
68
發行號11
DOIs
出版狀態Published - 12 6月 2025

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