Department of Chemistry, Temple University, Philadelphia, Pennsylvania 19122, United States.
Department of Chemistry-BMC, Uppsala University, SE-75123 Uppsala, Sweden.
J Chem Inf Model. 2021 May 24;61(5):2353-2367. doi: 10.1021/acs.jcim.1c00029. Epub 2021 Apr 27.
Understanding mechanisms of protein folding and binding is crucial to designing their molecular function. Molecular dynamics (MD) simulations and Markov state model (MSM) approaches provide a powerful way to understand complex conformational change that occurs over long time scales. Such dynamics are important for the design of therapeutic peptidomimetic ligands, whose affinity and binding mechanism are dictated by a combination of folding and binding. To examine the role of preorganization in peptide binding to protein targets, we performed massively parallel explicit-solvent MD simulations of cyclic β-hairpin ligands designed to mimic the p53 transactivation domain and competitively bind mouse double minute 2 homologue (MDM2). Disrupting the MDM2-p53 interaction is a therapeutic strategy to prevent degradation of the p53 tumor suppressor in cancer cells. MSM analysis of over 3 ms of aggregate trajectory data enabled us to build a detailed mechanistic model of coupled folding and binding of four cyclic peptides which we compare to experimental binding affinities and rates. The results show a striking relationship between the relative preorganization of each ligand in solution and its affinity for MDM2. Specifically, changes in peptide conformational populations predicted by the MSMs suggest that entropy loss upon binding is the main factor influencing affinity. The MSMs also enable detailed examination of non-native interactions which lead to misfolded states and comparison of structural ensembles with experimental NMR measurements. In contrast to an MSM study of p53 transactivation domain (TAD) binding to MDM2, MSMs of cyclic β-hairpin binding show a conformational selection mechanism. Finally, we make progress toward predicting accurate off rates of cyclic peptides using multiensemble Markov models (MEMMs) constructed from unbiased and biased simulated trajectories.
了解蛋白质折叠和结合的机制对于设计其分子功能至关重要。分子动力学(MD)模拟和马尔可夫状态模型(MSM)方法为理解长时间尺度上发生的复杂构象变化提供了一种强大的方法。这种动力学对于设计治疗性肽模拟配体非常重要,其亲和力和结合机制取决于折叠和结合的结合。为了研究预组织在肽与蛋白质靶标结合中的作用,我们对设计用于模拟 p53 转录激活结构域并竞争性结合鼠双微体 2 同源物(MDM2)的环状 β-发夹配体进行了大规模并行显式溶剂 MD 模拟。破坏 MDM2-p53 相互作用是一种防止癌细胞中 p53 肿瘤抑制剂降解的治疗策略。对超过 3 ms 的聚合轨迹数据进行 MSM 分析,使我们能够构建四个环状肽折叠和结合的详细机制模型,我们将其与实验结合亲和力和速率进行比较。结果表明,每个配体在溶液中的相对预组织与其对 MDM2 的亲和力之间存在惊人的关系。具体来说,MSM 预测的肽构象种群变化表明,结合时的熵损失是影响亲和力的主要因素。MSM 还能够详细检查导致错误折叠状态的非天然相互作用,并将结构集合与实验 NMR 测量进行比较。与环状β-发夹结合对 MDM2 的 p53 转录激活结构域(TAD)结合的 MSM 研究相反,环状β-发夹结合的 MSM 显示出构象选择机制。最后,我们通过使用从无偏和有偏模拟轨迹构建的多集合马尔可夫模型(MEMM)来预测环状肽的准确脱离速率方面取得了进展。