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Variational Implicit-Solvent Modeling of Host–GuestBinding: A Case Study on Cucurbit7uril

机译:主客之间的变分隐式溶剂模型装订:葫芦7 uril的案例研究

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摘要

The synthetic host cucurbit[7]uril (CB[7]) binds aromatic guests or metal complexes with ultrahigh affinity compared with that typically displayed in protein–ligand binding. Due to its small size, CB[7] serves as an ideal receptor–ligand system for developing computational methods for molecular recognition. Here, we apply the recently developed variational implicit-solvent model (VISM), numerically evaluated by the level-set method, to study hydration effects in the high-affinity binding of the B2 bicyclo[2.2.2]octane derivative to CB[7]. For the unbound host, we find that the host cavity favors the hydrated state over the dry state due to electrostatic effects. For the guest binding, we find reasonable agreement to experimental binding affinities. Dissection of the individual VISM free-energy contributions shows that the major driving forces are water-mediated hydrophobic interactions and the intrinsic (vacuum) host–guest van der Waals interactions. These findings are in line with recent experiments and molecular dynamics simulations with explicit solvent. It is expectedthat the level-set VISM, with further refinement on the electrostaticdescriptions, can efficiently predict molecular binding and recognitionin a wide range of future applications.
机译:合成宿主葫芦[7]尿素(CB [7])与芳香族客体或金属配合物的结合具有超高的亲和力,而蛋白质-配体结合通常具有这种亲和力。由于其体积小,CB [7]可以用作开发分子识别计算方法的理想受体-配体系统。在这里,我们应用最近开发的变分隐式溶剂模型(VISM)(通过水平集方法进行数值评估)来研究B2双环[2.2.2]辛烷衍生物与CB [7]高亲和力结合中的水合作用]。对于未结合的主体,我们发现由于静电效应,主体腔比干态更倾向于水合态。对于来宾绑定,我们找到了对实验绑定亲和力的合理协议。对单个VISM自由能贡献的剖析表明,主要驱动力是水介导的疏水相互作用和内在(真空)宿主-客体范德华相互作用。这些发现与最近的实验和使用明确溶剂的分子动力学模拟相符。可以预期水平设置的VISM,在静电方面进一步完善描述,可以有效地预测分子结合和识别在广泛的未来应用中。

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