Kontoyianni Maria, McClellan Laura M, Sokol Glenn S
Computer Assisted Drug Discovery, Johnson and Johhnson Pharmaceutical Research and Development, LLC, Welsh and McKean Roads, P.O. Box 776, Spring House, Pennsylvania 19477, USA.
J Med Chem. 2004 Jan 29;47(3):558-65. doi: 10.1021/jm0302997.
Docking molecules into their respective 3D macromolecular targets is a widely used method for lead optimization. However, the best known docking algorithms often fail to position the ligand in an orientation close to the experimental binding mode. It was reported recently that consensus scoring enhances the hit rates in a virtual screening experiment. This methodology focused on the top-ranked pose, with the underlying assumption that the orientation/conformation of the docked compound is the most accurate. In an effort to eliminate the scoring function bias, and assess the ability of the docking algorithms to provide solutions similar to the crystallographic modes, we investigated the most known docking programs and evaluated all of the resultant poses. We present the results of an extensive computational study in which five docking programs (FlexX, DOCK, GOLD, LigandFit, Glide) were investigated against 14 protein families (69 targets). Our findings show that some algorithms perform consistently better than others, and a correspondence between the nature of the active site and the best docking algorithm can be found.
将分子对接至各自的三维大分子靶点是一种广泛用于先导化合物优化的方法。然而,最知名的对接算法常常无法将配体定位在接近实验结合模式的方向上。最近有报道称,共识评分可提高虚拟筛选实验中的命中率。该方法聚焦于排名靠前的构象,其潜在假设是对接化合物的方向/构象是最准确的。为了消除评分函数偏差,并评估对接算法提供与晶体学模式相似解决方案的能力,我们研究了最知名的对接程序,并评估了所有生成的构象。我们展示了一项广泛计算研究的结果,其中针对14个蛋白质家族(69个靶点)研究了五个对接程序(FlexX、DOCK、GOLD、LigandFit、Glide)。我们的研究结果表明,一些算法的表现始终优于其他算法,并且可以发现活性位点的性质与最佳对接算法之间存在对应关系。