雄激素受体
肽
透皮
药品
药物开发
计算生物学
化学
药物发现
计算机科学
药理学
医学
内科学
生物
生物化学
前列腺癌
癌症
作者
Bohan Ma,Donghua Liu,Zhe Wang,Dize Zhang,Yanlin Jian,Kun Zhang,Tianyang Zhou,Yibo Gao,Yizeng Fan,Jian Ma,Yang Gao,Yule Chen,Si Chen,Jing Liu,Xiang Li,Lei Li
标识
DOI:10.1021/acs.jmedchem.4c00828
摘要
While large-scale artificial intelligence (AI) models for protein structure prediction and design are advancing rapidly, the translation of deep learning models for practical macromolecular drug development remains limited. This investigation aims to bridge this gap by combining cutting-edge methodologies to create a novel peptide-based PROTAC drug development paradigm. Using ProteinMPNN and RFdiffusion, we identified binding peptides for androgen receptor (AR) and Von Hippel-Lindau (VHL), followed by computational modeling with Alphafold2-multimer and ZDOCK to predict spatial interrelationships. Experimental validation confirmed the designed peptide's binding ability to AR and VHL. Transdermal microneedle patching technology was seamlessly integrated for the peptide PROTAC drug delivery in androgenic alopecia treatment. In summary, our approach provides a generic method for generating peptide PROTACs and offers a practical application for designing potential therapeutic drugs for androgenetic alopecia. This showcases the potential of interdisciplinary approaches in advancing drug development and personalized medicine.
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