论文标题
(QM)ML/MM分子动力学模拟的图形卷积神经网络
Graph Convolutional Neural Networks for (QM)ML/MM Molecular Dynamics Simulations
论文作者
论文摘要
为了准确研究凝结阶段或酶内的化学反应,需要进行量子力学描述和足够的配置采样以达到融合估计。在这里,量子力学/分子力学(QM/mm)分子动力学(MD)模拟起着重要作用,以降低的计算成本为目标区域提供了QM精度。但是,QM/MM模拟仍然太昂贵了,无法在更长的时间尺度上研究大型系统。最近,已经提出了机器学习(ML)模型来替换QM描述。这些模型的主要局限性在于对凝聚相系统中存在的远程相互作用的准确描述。为了克服这个问题,在$Δ$学习方案中,已经引入了最新的工作流程(即密度功能紧密结合(DFTB))和高维神经网络电位(HDNNP)。该方法已被证明能够正确地纳入1.4 nm的截止时间。有效地考虑长期效应的有希望的替代方法之一是图形卷积神经网络(GCNN)的开发用于预测潜在能量表面。在这项工作中,我们研究了(QM)ML/MM MD模拟的GCNN模型的使用 - 具有和不带有$δ$ - 学习方案的使用。我们表明,使用GCNN和DFTB的$δ$学习方法以及基线在我们的水中溶质和化学反应的基准测试中实现了竞争性能。该方法还通过在水中与胞质与胞嘧啶相互作用的视网膜酸对视黄酸的前瞻性(QM)ML/MM MD模拟进行验证。结果表明,$δ$ - 学习GCNN模型是(QM)ML/MM MD MD模拟系统的有价值的替代方法。
To accurately study chemical reactions in the condensed phase or within enzymes, both a quantum-mechanical description and sufficient configurational sampling is required to reach converged estimates. Here, quantum mechanics/molecular mechanics (QM/MM) molecular dynamics (MD) simulations play an important role, providing QM accuracy for the region of interest at a decreased computational cost. However, QM/MM simulations are still too expensive to study large systems on longer time scales. Recently, machine learning (ML) models have been proposed to replace the QM description. The main limitation of these models lies in the accurate description of long-range interactions present in condensed-phase systems. To overcome this issue, a recent workflow has been introduced combining a semi-empirical method (i.e. density functional tight binding (DFTB)) and a high-dimensional neural network potential (HDNNP) in a $Δ$-learning scheme. This approach has been shown to be capable of correctly incorporating long-range interactions within a cutoff of 1.4 nm. One of the promising alternative approaches to efficiently take long-range effects into account is the development of graph convolutional neural networks (GCNN) for the prediction of the potential-energy surface. In this work, we investigate the use of GCNN models -- with and without a $Δ$-learning scheme -- for (QM)ML/MM MD simulations. We show that the $Δ$-learning approach using a GCNN and DFTB and as baseline achieves competitive performance on our benchmarking set of solutes and chemical reactions in water. The method is additionally validated by performing prospective (QM)ML/MM MD simulations of retinoic acid in water and S-adenoslymethioniat interacting with cytosine in water. The results indicate that the $Δ$-learning GCNN model is a valuable alternative for (QM)ML/MM MD simulations of condensed-phase systems.