Lim Hyuntae, Jung YounJoon
Department of Chemistry, Seoul National University, Seoul, 08826, South Korea.
J Cheminform. 2021 Jul 31;13(1):56. doi: 10.1186/s13321-021-00533-z.
Recent advances in machine learning technologies and their applications have led to the development of diverse structure-property relationship models for crucial chemical properties. The solvation free energy is one of them. Here, we introduce a novel ML-based solvation model, which calculates the solvation energy from pairwise atomistic interactions. The novelty of the proposed model consists of a simple architecture: two encoding functions extract atomic feature vectors from the given chemical structure, while the inner product between the two atomistic feature vectors calculates their interactions. The results of 6239 experimental measurements achieve outstanding performance and transferability for enlarging training data owing to its solvent-non-specific nature. An analysis of the interaction map shows that our model has significant potential for producing group contributions on the solvation energy, which indicates that the model provides not only predictions of target properties but also more detailed physicochemical insights.
机器学习技术及其应用的最新进展推动了针对关键化学性质的各种结构-性质关系模型的发展。溶剂化自由能就是其中之一。在此,我们介绍一种基于机器学习的新型溶剂化模型,该模型通过成对原子相互作用来计算溶剂化能。所提出模型的新颖之处在于其简单的架构:两个编码函数从给定的化学结构中提取原子特征向量,而两个原子特征向量之间的内积则计算它们的相互作用。由于其非特定于溶剂的性质,6239次实验测量的结果在扩大训练数据方面具有出色的性能和可转移性。对相互作用图的分析表明,我们的模型在产生溶剂化能的基团贡献方面具有巨大潜力,这表明该模型不仅能预测目标性质,还能提供更详细的物理化学见解。