Department of Medicinal Chemistry and Molecular Pharmacology, College of Pharmacy, Purdue University , 575 Stadium Mall Drive, West Lafayette, Indiana 47906, United States.
J Chem Inf Model. 2012 Apr 23;52(4):1046-60. doi: 10.1021/ci200620h. Epub 2012 Mar 26.
Virtual screening using pharmacophore models is an efficient method to identify potential lead compounds for target proteins. Pharmacophore models based on protein structures are advantageous because a priori knowledge of active ligands is not required and the models are not biased by the chemical space of previously identified actives. However, in order to capture most potential interactions between all potentially binding ligands and the protein, the size of the pharmacophore model, i.e. number of pharmacophore elements, is typically quite large and therefore reduces the efficiency of pharmacophore based screening. We have developed a new method to select important pharmacophore elements using hydration-site information. The basic premise is that ligand functional groups that replace water molecules in the apo protein contribute strongly to the overall binding affinity of the ligand, due to the additional free energy gained from releasing the water molecule into the bulk solvent. We computed the free energy of water released from the binding site for each hydration site using thermodynamic analysis of molecular dynamics (MD) simulations. Pharmacophores which are colocalized with hydration sites with estimated favorable contributions to the free energy of binding are selected to generate a reduced pharmacophore model. We constructed reduced pharmacophore models for three protein systems and demonstrated good enrichment quality combined with high efficiency. The reduction in pharmacophore model size reduces the required screening time by a factor of 200-500 compared to using all protein pharmacophore elements. We also describe a training process using a small set of known actives to reliably select the optimal set of criteria for pharmacophore selection for each protein system.
基于配体结构的药效团模型具有优势,因为不需要先验的活性配体知识,而且模型不受先前确定的活性化合物化学空间的影响。然而,为了捕捉所有潜在结合配体与蛋白质之间的大多数潜在相互作用,药效团模型的大小,即药效团元素的数量通常非常大,因此降低了基于药效团的筛选效率。我们开发了一种使用水合位点信息选择重要药效团元素的新方法。基本前提是,在apo 蛋白中取代水分子的配体功能基团由于从溶剂主体中释放水分子而获得额外的自由能,因此强烈有助于配体的整体结合亲和力。我们使用分子动力学 (MD) 模拟的热力学分析计算了每个水合位点从结合位点释放的水分子的自由能。选择与估计对结合自由能有有利贡献的水合位点共定位的药效团,以生成简化的药效团模型。我们为三个蛋白质系统构建了简化的药效团模型,并证明了良好的富集质量与高效率相结合。与使用所有蛋白质药效团元素相比,药效团模型尺寸的减小将所需的筛选时间减少了 200-500 倍。我们还描述了一个使用一小部分已知活性化合物的训练过程,以可靠地为每个蛋白质系统选择药效团选择的最佳标准集。