Department of Applied Mathematics & Statistics, Stony Brook University , Stony Brook, New York 11794, United States.
J Chem Inf Model. 2014 Feb 24;54(2):518-29. doi: 10.1021/ci400534h. Epub 2014 Jan 29.
False negative docking outcomes for highly symmetric molecules are a barrier to the accurate evaluation of docking programs, scoring functions, and protocols. This work describes an implementation of a symmetry-corrected root-mean-square deviation (RMSD) method into the program DOCK based on the Hungarian algorithm for solving the minimum assignment problem, which dynamically assigns atom correspondence in molecules with symmetry. The algorithm adds only a trivial amount of computation time to the RMSD calculations and is shown to increase the reported overall docking success rate by approximately 5% when tested over 1043 receptor-ligand systems. For some families of protein systems the results are even more dramatic, with success rate increases up to 16.7%. Several additional applications of the method are also presented including as a pairwise similarity metric to compare molecules during de novo design, as a scoring function to rank-order virtual screening results, and for the analysis of trajectories from molecular dynamics simulation. The new method, including source code, is available to registered users of DOCK6 ( http://dock.compbio.ucsf.edu ).
对于高度对称的分子,假阴性对接结果是准确评估对接程序、评分函数和方案的障碍。这项工作描述了一种基于匈牙利算法解决最小分配问题的程序 DOCK 中实现的对称校正均方根偏差 (RMSD) 方法,该方法可动态分配具有对称的分子中的原子对应关系。该算法仅增加了微不足道的 RMSD 计算时间,并且在测试超过 1043 个受体-配体系统时,报告的整体对接成功率提高了约 5%。对于某些蛋白质系统家族,结果更为显著,成功率提高了 16.7%。还介绍了该方法的其他一些应用,包括作为从头设计过程中比较分子的成对相似性度量、作为对虚拟筛选结果进行排序的评分函数,以及用于分析分子动力学模拟的轨迹。新方法(包括源代码)可供 DOCK6 的注册用户使用(http://dock.compbio.ucsf.edu)。