Laboratory for Biomolecular Simulation Research, Institute for Quantitative Biomedicine and Department of Chemistry and Chemical Biology, Rutgers University, Piscataway, New Jersey08854, United States.
J Chem Theory Comput. 2023 Feb 28;19(4):1261-1275. doi: 10.1021/acs.jctc.2c01172. Epub 2023 Jan 25.
We report QDπ-v1.0 for modeling the internal energy of drug molecules containing H, C, N, and O atoms. The QDπ model is in the form of a quantum mechanical/machine learning potential correction (QM/Δ-MLP) that uses a fast third-order self-consistent density-functional tight-binding (DFTB3/3OB) model that is corrected to a quantitatively high-level of accuracy through a deep-learning potential (DeepPot-SE). The model has the advantage that it is able to properly treat electrostatic interactions and handle changes in charge/protonation states. The model is trained against reference data computed at the ωB97X/6-31G* level (as in the ANI-1x data set) and compared to several other approximate semiempirical and machine learning potentials (ANI-1x, ANI-2x, DFTB3, MNDO/d, AM1, PM6, GFN1-xTB, and GFN2-xTB). The QDπ model is demonstrated to be accurate for a wide range of intra- and intermolecular interactions (despite its intended use as an internal energy model) and has shown to perform exceptionally well for relative protonation/deprotonation energies and tautomers. An example application to model reactions involved in RNA strand cleavage catalyzed by protein and nucleic acid enzymes illustrates QDπ has average errors less than 0.5 kcal/mol, whereas the other models compared have errors over an order of magnitude greater. Taken together, this makes QDπ highly attractive as a potential force field model for drug discovery.
我们报告了 QDπ-v1.0,用于对含有 H、C、N 和 O 原子的药物分子的内能进行建模。QDπ 模型是量子力学/机器学习势能修正(QM/Δ-MLP)的形式,它使用快速的三阶自洽密度泛函紧束缚(DFTB3/3OB)模型,通过深度学习势能(DeepPot-SE)进行修正,以达到定量高精度。该模型的优点是能够正确处理静电相互作用并处理电荷/质子化状态的变化。该模型是针对在 ωB97X/6-31G* 水平(如在 ANI-1x 数据集)计算的参考数据进行训练的,并与其他几种近似半经验和机器学习势能(ANI-1x、ANI-2x、DFTB3、MNDO/d、AM1、PM6、GFN1-xTB 和 GFN2-xTB)进行了比较。QDπ 模型被证明在广泛的分子内和分子间相互作用范围内具有准确性(尽管它旨在用作内能模型),并且在相对质子化/去质子化能和互变异构体方面表现异常出色。一个应用示例说明了 QDπ 在涉及蛋白质和核酸酶催化的 RNA 链断裂的反应中的应用,结果表明 QDπ 的平均误差小于 0.5 kcal/mol,而相比之下,其他比较的模型的误差要大一个数量级以上。总的来说,这使得 QDπ 成为药物发现有吸引力的潜在力场模型。