记录配体对接姿势。

Shijun Zhong, Youping Zhang, Zhilong Xiu
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引用次数: 0

摘要

根据一定的评分系统对配体对接姿态进行排序,以确定最佳的配体对接姿态,是虚拟数据库筛选药物发现的重要步骤。通过关注方法开发策略,本综述提供了基于该领域最新发展概述构建评分方法的可能性。这些发展可以分为三类。第一类涉及缩放方法,它使用一个因子来缩放主要评分函数。这些比例因子是根据配体位置和目标结合位点之间的几何匹配来定义的,或者根据与药物样化合物的经验分子量范围一致的分子量分布来定义的。第二类涉及共识评分方法,该方法使用多个评分函数对对接过程中保留的配体位姿进行排序,基于根据主要评分函数进行的初步排序。最后一类涉及添加选定的面向精度的能量项,如溶剂效应和量子力学/分子力学处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rescoring ligand docking poses.

The ranking of ligand docking poses according to certain scoring systems to identify the best fit is the most important step in virtual database screening for drug discovery. By focusing on method development strategy, this review provides possibilities for constructing rescoring approaches based on an overview of recent developments in the field. These developments can be classified into three categories. The first category involves a scaling approach that employs a factor to scale the primary scoring function. These scaling factors are defined with respect to the geometrical match between the location of a ligand and the target binding site, or defined according to a molecular weight distribution consistent with the empirical range of molecular weights of drug-like compounds. The second category involves consensus scoring approaches that use multiple scoring functions to rank the ligand poses retained in a docking procedure, based on the preliminary ranking according to a primary scoring function. The final category involves the addition of selected accuracy-oriented energy terms, such as the solvent effect and quantum mechanics/molecular mechanics treatments.

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