Software Infrastructure for Next-Generation QM/MM−ΔMLP Force Fields

IF 2.8 2区 化学 Q3 CHEMISTRY, PHYSICAL The Journal of Physical Chemistry B Pub Date : 2024-06-21 DOI:10.1021/acs.jpcb.4c01466
Timothy J. Giese, Jinzhe Zeng, Lauren Lerew, Erika McCarthy, Yujun Tao, Şölen Ekesan and Darrin M. York*, 
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Abstract

We present software infrastructure for the design and testing of new quantum mechanical/molecular mechanical and machine-learning potential (QM/MM−ΔMLP) force fields for a wide range of applications. The software integrates Amber’s molecular dynamics simulation capabilities with fast, approximate quantum models in the xtb package and machine-learning potential corrections in DeePMD-kit. The xtb package implements the recently developed density-functional tight-binding QM models with multipolar electrostatics and density-dependent dispersion (GFN2-xTB), and the interface with Amber enables their use in periodic boundary QM/MM simulations with linear-scaling QM/MM particle-mesh Ewald electrostatics. The accuracy of the semiempirical models is enhanced by including machine-learning correction potentials (ΔMLPs) enabled through an interface with the DeePMD-kit software. The goal of this paper is to present and validate the implementation of this software infrastructure in molecular dynamics and free energy simulations. The utility of the new infrastructure is demonstrated in proof-of-concept example applications. The software elements presented here are open source and freely available. Their interface provides a powerful enabling technology for the design of new QM/MM−ΔMLP models for studying a wide range of problems, including biomolecular reactivity and protein–ligand binding.

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下一代 QM/MM-ΔMLP 力场的软件基础设施。
我们介绍了用于设计和测试新的量子力学/分子力学和机器学习势(QM/MM-ΔMLP)力场的软件基础架构,适用于广泛的应用领域。该软件将 Amber 的分子动力学模拟功能与 xtb 软件包中的快速近似量子模型和 DeePMD-kit 中的机器学习势校正集成在一起。xtb 软件包实现了最近开发的具有多极静电和密度相关色散(GFN2-xTB)的密度函数紧密结合 QM 模型,与 Amber 的接口使其能够用于具有线性缩放 QM/MM 粒子网格 Ewald 静电的周期边界 QM/MM 模拟。通过与 DeePMD-kit 软件的接口,加入了机器学习修正势(ΔMLPs),从而提高了半经验模型的准确性。本文的目的是介绍并验证该软件基础设施在分子动力学和自由能模拟中的应用。新基础架构的实用性在概念验证示例应用中得到了证明。这里介绍的软件元素是开源的,可免费获得。它们的接口为设计新的 QM/MM-ΔMLP 模型提供了强大的使能技术,可用于研究生物分子反应性和蛋白质配体结合等各种问题。
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来源期刊
CiteScore
5.80
自引率
9.10%
发文量
965
审稿时长
1.6 months
期刊介绍: An essential criterion for acceptance of research articles in the journal is that they provide new physical insight. Please refer to the New Physical Insights virtual issue on what constitutes new physical insight. Manuscripts that are essentially reporting data or applications of data are, in general, not suitable for publication in JPC B.
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