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通过恒 pH 绝热自由能动力学增强和高效预测动态离解。

Enhanced and Efficient Predictions of Dynamic Ionization through Constant-pH Adiabatic Free Energy Dynamics.

机构信息

AbbVie Inc., Molecular Profiling and Drug Delivery, Research & Development, 1 N Waukegan Road, North Chicago, Illinois 60064, United States.

Department of Chemistry, New York University, New York City, New York 10003, United States.

出版信息

J Chem Theory Comput. 2024 Nov 26;20(22):10010-10021. doi: 10.1021/acs.jctc.4c00704. Epub 2024 Nov 8.

Abstract

Dynamic or structurally induced ionization is a critical aspect of many physical, chemical, and biological processes. Molecular dynamics (MD) based simulation approaches, specifically constant pH MD methods, have been developed to simulate ionization states of molecules or proteins under experimentally or physiologically relevant conditions. While such approaches are now widely utilized to predict ionization sites of macromolecules or to study physical or biological phenomena, they are often computationally expensive and require long simulation times to converge. In this article, using the principles of adiabatic free energy dynamics, we introduce an efficient technique for performing constant pH MD simulations within the framework of the adiabatic free energy dynamics (AFED) approach. We call the new approach pH-AFED. We show that pH-AFED provides highly accurate predictions of protein residue p values, with a MUE of 0.5 p units when coupled with driven adiabatic free energy dynamics (d-AFED), while reducing the required simulation times by more than an order of magnitude. In addition, pH-AFED can be easily integrated into most constant pH MD codes or implementations and flexibly adapted to work in conjunction with enhanced sampling algorithms that target collective variables. We demonstrate that our approaches, with both pH-AFED standalone as well as pH-AFED combined with collective variable based enhanced sampling, provide promising predictive accuracy, with a MUE of 0.6 and 0.5 p units respectively, on a diverse range of proteins and enzymes, ranging up to 186 residues and 21 titratable sites. Lastly, we demonstrate how this approach can be utilized to understand the in vivo performance engineered antibodies for immunotherapy.

摘要

动态或结构诱导电离是许多物理、化学和生物过程的关键方面。基于分子动力学(MD)的模拟方法,特别是恒 pH 值 MD 方法,已经被开发出来,以模拟在实验或生理相关条件下分子或蛋白质的电离状态。虽然这些方法现在被广泛用于预测大分子的电离位点或研究物理或生物现象,但它们通常计算成本高,需要长时间的模拟才能收敛。在本文中,我们使用绝热自由能动力学的原理,在绝热自由能动力学(AFED)方法的框架内引入了一种进行恒 pH 值 MD 模拟的有效技术。我们将新方法称为 pH-AFED。我们表明,pH-AFED 提供了蛋白质残基 p 值的高度准确预测,当与驱动绝热自由能动力学(d-AFED)结合使用时,平均绝对误差(MUE)为 0.5 p 单位,同时将所需的模拟时间减少了一个数量级以上。此外,pH-AFED 可以很容易地集成到大多数恒 pH 值 MD 代码或实现中,并灵活地适应与目标为集体变量的增强采样算法一起工作。我们证明,我们的方法,无论是 pH-AFED 独立使用还是与基于集体变量的增强采样相结合,都具有有前景的预测准确性,在各种蛋白质和酶上的平均绝对误差(MUE)分别为 0.6 和 0.5 p 单位,范围高达 186 个残基和 21 个可滴定位点。最后,我们展示了如何利用这种方法来理解用于免疫治疗的体内性能工程抗体。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/272b/11603612/3e3c06178f1c/ct4c00704_0001.jpg

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