Yoon Sukjoon, Welsh William J
Department of Pharmacology, University of Medicine & Dentistry of New Jersey-Robert Wood Johnson Medical School, 675 Hoes Lane, Piscataway, New Jersey 08854, USA.
J Chem Inf Comput Sci. 2004 Jan-Feb;44(1):88-96. doi: 10.1021/ci0341619.
Docking and scoring are critical issues in virtual drug screening methods. Fast and reliable methods are required for the prediction of binding affinity especially when applied to a large library of compounds. The implementation of receptor flexibility and refinement of scoring functions for this purpose are extremely challenging in terms of computational speed. Here we propose a knowledge-based multiple-conformation docking method that efficiently accommodates receptor flexibility thus permitting reliable virtual screening of large compound libraries. Starting with a small number of active compounds, a preliminary docking operation is conducted on a large ensemble of receptor conformations to select the minimal subset of receptor conformations that provides a strong correlation between the experimental binding affinity (e.g., Ki, IC50) and the docking score. Only this subset is used for subsequent multiple-conformation docking of the entire data set of library (test) compounds. In conjunction with the multiple-conformation docking procedure, a two-step scoring scheme is employed by which the optimal scoring geometries obtained from the multiple-conformation docking are re-scored by a molecular mechanics energy function including desolvation terms. To demonstrate the feasibility of this approach, we applied this integrated approach to the estrogen receptor alpha (ERalpha) system for which published binding affinity data were available for a series of structurally diverse chemicals. The statistical correlation between docking scores and experimental values was significantly improved from those of single-conformation dockings. This approach led to substantial enrichment of the virtual screening conducted on mixtures of active and inactive ERalpha compounds.
对接和评分是虚拟药物筛选方法中的关键问题。预测结合亲和力需要快速可靠的方法,尤其是在应用于大型化合物库时。在计算速度方面,为此目的实现受体灵活性和优化评分函数极具挑战性。在此,我们提出一种基于知识的多构象对接方法,该方法能有效适应受体灵活性,从而允许对大型化合物库进行可靠的虚拟筛选。从少量活性化合物开始,对大量受体构象集合进行初步对接操作,以选择能在实验结合亲和力(例如Ki、IC50)和对接分数之间提供强相关性的受体构象最小子集。仅使用该子集对库(测试)化合物的整个数据集进行后续多构象对接。结合多构象对接程序,采用两步评分方案,通过包含去溶剂化项的分子力学能量函数对从多构象对接获得的最佳评分几何结构重新评分。为证明该方法的可行性,我们将这种综合方法应用于雌激素受体α(ERα)系统,对于该系统,有一系列结构多样的化学物质的已发表结合亲和力数据可用。对接分数与实验值之间的统计相关性相比单构象对接有显著提高。该方法使对活性和非活性ERα化合物混合物进行的虚拟筛选有了实质性富集。