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将量子机器学习势拟合到实验自由能数据:预测溶液中的互变异构体比例。

Fitting quantum machine learning potentials to experimental free energy data: predicting tautomer ratios in solution.

作者信息

Wieder Marcus, Fass Josh, Chodera John D

机构信息

Computational and Systems Biology Program, Sloan Kettering Institute, Memorial Sloan Kettering Cancer Center New York NY 10065 USA

Tri-Institutional PhD Program in Computational Biology and Medicine, Weill Cornell Graduate School of Medical Sciences New York NY 10065 USA.

出版信息

Chem Sci. 2021 Jul 19;12(34):11364-11381. doi: 10.1039/d1sc01185e. eCollection 2021 Sep 1.

Abstract

The computation of tautomer ratios of druglike molecules is enormously important in computer-aided drug discovery, as over a quarter of all approved drugs can populate multiple tautomeric species in solution. Unfortunately, accurate calculations of aqueous tautomer ratios-the degree to which these species must be penalized in order to correctly account for tautomers in modeling binding for computer-aided drug discovery-is surprisingly difficult. While quantum chemical approaches to computing aqueous tautomer ratios using continuum solvent models and rigid-rotor harmonic-oscillator thermochemistry are currently state of the art, these methods are still surprisingly inaccurate despite their enormous computational expense. Here, we show that a major source of this inaccuracy lies in the breakdown of the standard approach to accounting for quantum chemical thermochemistry using rigid rotor harmonic oscillator (RRHO) approximations, which are frustrated by the complex conformational landscape introduced by the migration of double bonds, creation of stereocenters, and introduction of multiple conformations separated by low energetic barriers induced by migration of a single proton. Using quantum machine learning (QML) methods that allow us to compute potential energies with quantum chemical accuracy at a fraction of the cost, we show how rigorous relative alchemical free energy calculations can be used to compute tautomer ratios in vacuum free from the limitations introduced by RRHO approximations. Furthermore, since the parameters of QML methods are tunable, we show how we can train these models to correct limitations in the underlying learned quantum chemical potential energy surface using free energies, enabling these methods to learn to generalize tautomer free energies across a broader range of predictions.

摘要

在计算机辅助药物发现中,类药物分子互变异构体比例的计算极为重要,因为超过四分之一的已批准药物在溶液中会存在多种互变异构体。不幸的是,精确计算水相中的互变异构体比例(即在计算机辅助药物发现的结合建模中为正确考虑互变异构体而必须对这些异构体进行惩罚的程度)出奇地困难。虽然目前使用连续介质溶剂模型和刚性转子谐振子热化学来计算水相互变异构体比例的量子化学方法是最先进的,但尽管计算成本高昂,这些方法仍然出奇地不准确。在这里,我们表明这种不准确性的一个主要来源在于使用刚性转子谐振子(RRHO)近似来计算量子化学热化学的标准方法的失效,双键迁移、立体中心的产生以及单个质子迁移引起的低能量势垒分隔的多种构象所引入的复杂构象景观使这种近似受挫。使用量子机器学习(QML)方法,使我们能够以量子化学精度的一小部分成本计算势能,我们展示了如何使用严格的相对炼金术自由能计算来计算真空中的互变异构体比例,而不受RRHO近似引入的限制。此外,由于QML方法的参数是可调的,我们展示了如何使用自由能训练这些模型来纠正基础学习的量子化学势能面中的局限性,使这些方法能够学会在更广泛的预测范围内泛化互变异构体自由能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3eab/8409483/f9e4cba7939d/d1sc01185e-f1.jpg

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