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MEDock: a web server for efficient prediction of ligand binding sites based on a novel optimization algorithm

机译:MEDock:一种基于新型优化算法的高效预测配体结合位点的网络服务器

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摘要

The prediction of ligand binding sites is an essential part of the drug discovery process. Knowing the location of binding sites greatly facilitates the search for hits, the lead optimization process, the design of site-directed mutagenesis experiments and the hunt for structural features that influence the selectivity of binding in order to minimize the drug's adverse effects. However, docking is still the rate-limiting step for such predictions; consequently, much more efficient algorithms are required. In this article, the design of the MEDock web server is described. The goal of this sever is to provide an efficient utility for predicting ligand binding sites. The MEDock web server incorporates a global search strategy that exploits the maximum entropy property of the Gaussian probability distribution in the context of information theory. As a result of the global search strategy, the optimization algorithm incorporated in MEDock is significantly superior when dealing with very rugged energy landscapes, which usually have insurmountable barriers. This article describes four different benchmark cases that span a diverse set of different types of ligand binding interactions. These benchmarks were compared with the use of the Lamarckian genetic algorithm (LGA), which is the major workhorse of the well-known AutoDock program. These results demonstrate that MEDock consistently converged to the correct binding modes with significantly smaller numbers of energy evaluations than the LGA required. When judged by a threshold of the number of energy evaluations consumed in the docking simulation, MEDock also greatly elevates the rate of accurate predictions for all benchmark cases. MEDock is available at and .
机译:配体结合位点的预测是药物发现过程的重要组成部分。知道结合位点的位置极大地方便了对命中的搜索,前导优化过程,定点诱变实验的设计以及对影响结合选择性的结构特征的搜寻,以最大程度地减少药物的不良影响。但是,对接仍然是此类预测的速率限制步骤;因此,需要更有效的算法。在本文中,描述了MEDock Web服务器的设计。该服务器的目标是提供一种用于预测配体结合位点的有效工具。 MEDock Web服务器采用了全局搜索策略,该策略在信息论的背景下利用了高斯概率分布的最大熵属性。全局搜索策略的结果是,在处理非常崎energy的能源格局时,MEDock中包含的优化算法要优越得多,而能源格局通常具有无法克服的障碍。本文介绍了四种不同的基准案例,它们涵盖了多种不同类型的配体结合相互作用。这些基准与Lamarckian遗传算法(LGA)的使用进行了比较,后者是著名的AutoDock程序的主要功能。这些结果表明,MEDock持续收敛到正确的结合模式,而所需的能量评估次数却远少于所需的LGA。当通过对接模拟中消耗的能量评估次数的阈值进行判断时,MEDock还可以大大提高所有基准案例的准确预测率。 MEDock可在和获得。

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