Center for Computational Natural Sciences and Bioinformatics, International Institute of Information Technology, Hyderabad 500032, India.
J Chem Inf Model. 2021 Feb 22;61(2):689-698. doi: 10.1021/acs.jcim.0c01413. Epub 2021 Feb 5.
Solvation free energy is a fundamental property that influences various chemical and biological processes, such as reaction rates, protein folding, drug binding, and bioavailability of drugs. In this work, we present a deep learning method based on graph networks to accurately predict solvation free energies of small organic molecules. The proposed model, comprising three phases, namely, message passing, interaction, and prediction, is able to predict solvation free energies in any generic organic solvent with a mean absolute error of 0.16 kcal/mol. In terms of accuracy, the current model outperforms all of the proposed machine learning-based models so far. The atomic interactions predicted in an unsupervised manner are able to explain the trends of free energies consistent with chemical wisdom. Further, the robustness of the machine learning-based model has been tested thoroughly, and its capability to interpret the predictions has been verified with several examples.
溶剂化自由能是一种基本性质,它会影响各种化学和生物过程,如反应速率、蛋白质折叠、药物结合和药物的生物利用度。在这项工作中,我们提出了一种基于图网络的深度学习方法,可以准确地预测小分子的溶剂化自由能。所提出的模型由三个阶段组成,即消息传递、相互作用和预测,能够以平均绝对误差为 0.16 kcal/mol 的精度预测任何通用有机溶剂中的溶剂化自由能。就准确性而言,目前的模型优于迄今为止提出的所有基于机器学习的模型。以无监督的方式预测的原子相互作用能够解释与化学智慧一致的自由能趋势。此外,我们还彻底测试了基于机器学习的模型的稳健性,并通过几个示例验证了其对预测进行解释的能力。