MOE Key Laboratory of Membraneless Organelle and Cellular Dynamics, Hefei National Laboratory for Physical Sciences at the Microscale, University of Science and Technology of China, Hefei, Anhui 230027, China; School of Life Sciences, University of Science and Technology of China, Hefei, Anhui 230027, China; Department of Chemical Sciences, Coal City University, Emene, Enugu State, Nigeria.
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX 75390, United States; Department of Biochemistry, University of Texas Southwestern Medical Center, Dallas, TX 75390, United States.
Int J Biol Macromol. 2024 Jun;269(Pt 2):131840. doi: 10.1016/j.ijbiomac.2024.131840. Epub 2024 Apr 26.
The tumor suppressor p53 plays a crucial role in cellular responses to various stresses, regulating key processes such as apoptosis, senescence, and DNA repair. Dysfunctional p53, prevalent in approximately 50 % of human cancers, contributes to tumor development and resistance to treatment. This study employed deep learning-based protein design and structure prediction methods to identify novel high-affinity peptide binders (Pep1 and Pep2) targeting MDM2, with the aim of disrupting its interaction with p53. Extensive all-atom molecular dynamics simulations highlighted the stability of the designed peptide in complex with the target, supported by several structural analyses, including RMSD, RMSF, Rg, SASA, PCA, and free energy landscapes. Using the steered molecular dynamics and umbrella sampling simulations, we elucidate the dissociation dynamics of p53, Pep1, and Pep2 from MDM2. Notable differences in interaction profiles were observed, emphasizing the distinct dissociation patterns of each peptide. In conclusion, the results of our umbrella sampling simulations suggest Pep1 as a higher-affinity MDM2 binder compared to p53 and Pep2, positioning it as a potential inhibitor of the MDM2-p53 interaction. Using state-of-the-art protein design tools and advanced MD simulations, this study provides a comprehensive framework for rational in silico design of peptide binders with therapeutic implications in disrupting MDM2-p53 interactions for anticancer interventions.
肿瘤抑制因子 p53 在细胞对各种应激的反应中起着至关重要的作用,调节着细胞凋亡、衰老和 DNA 修复等关键过程。功能失调的 p53 存在于大约 50%的人类癌症中,促进了肿瘤的发展和对治疗的耐药性。本研究采用基于深度学习的蛋白质设计和结构预测方法,鉴定出针对 MDM2 的新型高亲和力肽结合物(Pep1 和 Pep2),旨在破坏其与 p53 的相互作用。广泛的全原子分子动力学模拟强调了设计肽与靶标复合物的稳定性,这得到了几种结构分析的支持,包括 RMSD、RMSF、Rg、SASA、PCA 和自由能景观。通过导向分子动力学和伞状采样模拟,我们阐明了 p53、Pep1 和 Pep2 从 MDM2 上的解离动力学。观察到相互作用谱的显著差异,强调了每种肽的独特解离模式。总之,我们的伞状采样模拟结果表明 Pep1 作为 MDM2 的高亲和力结合物,与 p53 和 Pep2 相比,它可以作为 MDM2-p53 相互作用的潜在抑制剂。该研究使用最先进的蛋白质设计工具和先进的 MD 模拟,为合理设计具有治疗潜力的肽结合物提供了一个全面的框架,以干扰 MDM2-p53 相互作用,用于抗癌干预。