Structural Bioinformatics and Computational Biochemistry, University of Oxford, Oxford, United Kingdom.
PLoS One. 2012;7(3):e32036. doi: 10.1371/journal.pone.0032036. Epub 2012 Mar 1.
Water plays a critical role in ligand-protein interactions. However, it is still challenging to predict accurately not only where water molecules prefer to bind, but also which of those water molecules might be displaceable. The latter is often seen as a route to optimizing affinity of potential drug candidates. Using a protocol we call WaterDock, we show that the freely available AutoDock Vina tool can be used to predict accurately the binding sites of water molecules. WaterDock was validated using data from X-ray crystallography, neutron diffraction and molecular dynamics simulations and correctly predicted 97% of the water molecules in the test set. In addition, we combined data-mining, heuristic and machine learning techniques to develop probabilistic water molecule classifiers. When applied to WaterDock predictions in the Astex Diverse Set of protein ligand complexes, we could identify whether a water molecule was conserved or displaced to an accuracy of 75%. A second model predicted whether water molecules were displaced by polar groups or by non-polar groups to an accuracy of 80%. These results should prove useful for anyone wishing to undertake rational design of new compounds where the displacement of water molecules is being considered as a route to improved affinity.
水在配体-蛋白质相互作用中起着至关重要的作用。然而,不仅要准确预测水分子倾向于结合的位置,还要预测哪些水分子可能被取代,这仍然具有挑战性。后者通常被视为优化潜在药物候选物亲和力的途径。我们使用一种名为 WaterDock 的方案表明,免费的 AutoDock Vina 工具可用于准确预测水分子的结合位点。WaterDock 通过 X 射线晶体学、中子衍射和分子动力学模拟的数据进行了验证,正确预测了测试集中 97%的水分子。此外,我们结合了数据挖掘、启发式和机器学习技术来开发概率水分子分类器。当将其应用于 Astex 多样化蛋白配体复合物的 WaterDock 预测时,我们可以以 75%的准确率识别水分子是保守的还是被取代的。第二个模型以 80%的准确率预测水分子是被极性基团还是非极性基团取代的。这些结果对于任何希望从事新化合物的合理设计的人来说都应该是有用的,因为在考虑取代水分子以提高亲和力的途径。