Department of Chemistry and Applied Biosciences, ETH Zurich, 8092, Zurich, Switzerland.
Facoltà di Informatica, Istituto di Scienze Computazionali, Università della Svizzera Italiana, Via G. Buffi 13, 6900, Lugano, Switzerland.
Nat Commun. 2021 Jan 4;12(1):93. doi: 10.1038/s41467-020-20310-0.
One of the main applications of atomistic computer simulations is the calculation of ligand binding free energies. The accuracy of these calculations depends on the force field quality and on the thoroughness of configuration sampling. Sampling is an obstacle in simulations due to the frequent appearance of kinetic bottlenecks in the free energy landscape. Very often this difficulty is circumvented by enhanced sampling techniques. Typically, these techniques depend on the introduction of appropriate collective variables that are meant to capture the system's degrees of freedom. In ligand binding, water has long been known to play a key role, but its complex behaviour has proven difficult to fully capture. In this paper we combine machine learning with physical intuition to build a non-local and highly efficient water-describing collective variable. We use it to study a set of host-guest systems from the SAMPL5 challenge. We obtain highly accurate binding free energies and good agreement with experiments. The role of water during the binding process is then analysed in some detail.
原子计算机模拟的主要应用之一是计算配体结合自由能。这些计算的准确性取决于力场质量和构型采样的彻底性。由于自由能景观中经常出现动力学瓶颈,采样成为模拟中的一个障碍。通常,这些技术依赖于引入适当的集体变量,这些变量旨在捕获系统的自由度。在配体结合中,水长期以来一直被认为起着关键作用,但它的复杂行为很难完全捕捉到。在本文中,我们将机器学习与物理直觉相结合,构建了一个非局部且高效的水分子描述性集体变量。我们使用它来研究来自 SAMPL5 挑战的一组主体-客体系统。我们得到了非常准确的结合自由能,并且与实验结果吻合良好。然后,我们详细分析了水在结合过程中的作用。