Barcelona Supercomputing Center, Jordi Girona 29, E-08034 Barcelona, Spain.
Nostrum Biodiscovery, Jordi Girona 29, Nexus II D128, 08034 Barcelona, Spain.
J Chem Theory Comput. 2020 Dec 8;16(12):7655-7670. doi: 10.1021/acs.jctc.0c00925. Epub 2020 Nov 17.
Water is frequently found inside proteins, carrying out important roles in catalytic reactions or molecular recognition tasks. Therefore, computational models that aim to study protein-ligand interactions usually have to include water effects through explicit or implicit approaches to obtain reliable results. While full explicit models might be too computationally daunting for some applications, implicit models are normally faster but omit some of the most important contributions of water. This is the case of our in-house software, called protein energy landscape exploration (PELE), which uses implicit models to speed up conformational explorations as much as possible; the lack of explicit water sampling, however, limits its model. In this work, we confront this problem with the development of aquaPELE. It is a new algorithm that extends the exploration capabilities while keeping efficiency as it employs a mixed implicit/explicit approach to also take into account the effects of buried water molecules. With an additional Monte Carlo (MC) routine, a set of explicit water molecules is perturbed inside protein cavities and their effects are dynamically adjusted to the current state of the system. As a result, this implementation can be used to predict the principal hydration sites or the rearrangement and displacement of conserved water molecules upon the binding of a ligand. We benchmarked this new tool focusing on estimating ligand binding modes and hydration sites in cavities with important interfacial water molecules, according to crystallographic structures. Results suggest that aquaPELE sets a fast and reliable alternative for molecular recognition studies in systems with a strong water-dependency.
水经常存在于蛋白质内部,在催化反应或分子识别任务中发挥着重要作用。因此,旨在研究蛋白质-配体相互作用的计算模型通常必须通过显式或隐式方法来包含水效应,以获得可靠的结果。虽然对于某些应用程序来说,全显式模型可能计算量太大,但隐式模型通常更快,但会忽略水的一些最重要的贡献。我们的内部软件 protein energy landscape exploration (PELE) 就是这种情况,它使用隐式模型尽可能快地加速构象探索;然而,缺乏显式的水分子采样限制了其模型。在这项工作中,我们通过开发 aquaPELE 来解决这个问题。这是一种新的算法,它通过采用混合隐式/显式方法来扩展探索能力,同时保持效率,以考虑埋藏水分子的影响。通过一个额外的蒙特卡罗 (MC) 例程,一组显式水分子在蛋白质腔体内被扰动,并且它们的影响被动态地调整到系统的当前状态。因此,该方法可以用于预测配体结合时主要的水合位点或保守水分子的重排和位移。我们根据晶体结构,针对在具有重要界面水分子的腔体内预测配体结合模式和水合位点,对这个新工具进行了基准测试。结果表明,aquaPELE 为具有强水依赖性的系统中的分子识别研究提供了一种快速可靠的替代方法。