Kong Xiangzhe, Jiao Rui, Lin Haowei, Guo Ruihan, Huang Wenbing, Ma Wei-Ying, Wang Zihua, Liu Yang, Ma Jianzhu
Department of Computer Science and Technology, Tsinghua University, Beijing, China.
Institute for AI Industry Research, Tsinghua University, Beijing, China.
Nat Biomed Eng. 2025 Oct 1. doi: 10.1038/s41551-025-01507-4.
Peptides offer advantages for targeted therapy, including oral bioavailability, cellular permeability and high specificity, setting them apart from conventional small molecules and biologics. Here we develop an artificial intelligence algorithm, PepMimic, to transform a known receptor or an existing antibody of a target into a short peptide binder by mimicking the binding interfaces between targets and known binders. We apply PepMimic to drug targets PD-L1, CD38, BCMA, HER2 and CD4. Surface plasmon resonance imaging results show that 8% of the peptides exhibit dissociation constant (K) values at the 10 M level, and 26 peptides achieving K values as low as 10 M, substantially higher than random library screening conducted under identical conditions. We apply PepMimic to target proteins lacking available binders by first using existing algorithms to design protein binders, followed by designing peptide through simulating these artificial interfaces. We extensively validate the top-ranked peptides using tail vein injections in breast, myeloma and lung tumour mouse models. Experimental results demonstrate effective membrane binding and highlight their strong potential for clinical diagnostic imaging and targeted therapeutic applications.
肽类在靶向治疗方面具有优势,包括口服生物利用度、细胞通透性和高特异性,这使其有别于传统小分子和生物制剂。在此,我们开发了一种人工智能算法PepMimic,通过模拟靶标与已知结合剂之间的结合界面,将已知受体或靶标的现有抗体转化为短肽结合剂。我们将PepMimic应用于药物靶标PD-L1、CD38、BCMA、HER2和CD4。表面等离子体共振成像结果表明,8%的肽在10⁻⁶M水平表现出解离常数(Kd)值,26种肽的Kd值低至10⁻⁹M,显著高于在相同条件下进行的随机文库筛选。我们首先使用现有算法设计蛋白质结合剂,然后通过模拟这些人工界面设计肽,将PepMimic应用于缺乏可用结合剂的靶标蛋白。我们在乳腺癌、骨髓瘤和肺癌小鼠模型中通过尾静脉注射对排名靠前的肽进行了广泛验证。实验结果证明了有效的膜结合,并突出了它们在临床诊断成像和靶向治疗应用方面的强大潜力。