Department of Computational and Systems Biology, University of Pittsburgh, Pittsburgh, PA, 15261, USA.
Department of Drug Design, University of Groningen, Groningen, The Netherlands.
J Comput Aided Mol Des. 2018 Jan;32(1):287-297. doi: 10.1007/s10822-017-0065-y. Epub 2017 Sep 16.
The goal of virtual screening is to generate a substantially reduced and enriched subset of compounds from a large virtual chemistry space. Critical in these efforts are methods to properly rank the binding affinity of compounds. Prospective evaluations of ranking strategies in the D3R grand challenges show that for targets with deep pockets the best correlations (Spearman ρ ~ 0.5) were obtained by our submissions that docked compounds to the holo-receptors with the most chemically similar ligand. On the other hand, for targets with open pockets using multiple receptor structures is not a good strategy. Instead, docking to a single optimal receptor led to the best correlations (Spearman ρ ~ 0.5), and overall performs better than any other method. Yet, choosing a suboptimal receptor for crossdocking can significantly undermine the affinity rankings. Our submissions that evaluated the free energy of congeneric compounds were also among the best in the community experiment. Error bars of around 1 kcal/mol are still too large to significantly improve the overall rankings. Collectively, our top of the line predictions show that automated virtual screening with rigid receptors perform better than flexible docking and other more complex methods.
虚拟筛选的目标是从大量虚拟化学空间中生成一个大大减少和富集的化合物子集。在这些努力中,关键是要正确排列化合物的结合亲和力。在 D3R 大挑战中的排名策略的前瞻性评估表明,对于深口袋靶标,与最具化学相似性的配体对接化合物到全受体的提交获得了最佳相关性(Spearman ρ≈0.5)。另一方面,对于口袋敞开的靶标,使用多个受体结构不是一个好策略。相反,对接单个最佳受体导致最佳相关性(Spearman ρ≈0.5),并且整体表现优于任何其他方法。然而,选择交叉对接的次优受体可能会严重破坏亲和力排名。我们评估同类化合物自由能的提交在社区实验中也名列前茅。约 1 kcal/mol 的误差仍然太大,无法显著提高整体排名。总的来说,我们的最佳预测表明,使用刚性受体的自动虚拟筛选比柔性对接和其他更复杂的方法表现更好。