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首页> 外文期刊>Current Bioinformatics >Data Mining of Docking Results. Application to 3-Dehydroquinate Dehydratase
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Data Mining of Docking Results. Application to 3-Dehydroquinate Dehydratase

机译:对接结果的数据挖掘。在3-脱氢喹啉脱水酶中的应用

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In this article, we describe a computational methodology that analyzes the results generated in ligand docking and evaluates the correlation between simulation results and intrinsic characteristics present in the crystallographic structures used in the simulation, such as thermal parameter, resolution, and overall quality of the X-ray diffraction data. We focus our analysis on molecular docking data obtained from application of differential evolution implemented in the program Molegro Virtual Docker. As a protein target, we selected the enzyme 3-dehydroquinate dehydratase (DHQD). This enzyme is part of the shikimate pathway, and a protein target for development of anti-tubercular drugs. We used a set with 20 DHQD crystallographic structures with ligands bound to the active site. In order to identify the best approach to molecular docking, we analyzed crystallographic parameters and looked for correlation between the docking results and structural features present in the protein target. Analysis of docking results helps to identify the best approach to use in ligand docking and identify structural features important for the success of this methodology. Analysis of results generated by ligand docking focused on DHQD made possible to assess the best docking protocol for this enzyme and use this optimized approach in the more computational demanding methodology of virtual screening (VS). We used a data set of natural products to identify structural features important for ligand-binding affinity.
机译:在本文中,我们描述了一种计算方法,该方法可以分析配体对接中产生的结果,并评估模拟结果与模​​拟中使用的晶体结构中存在的固有特性(例如X的热参数,分辨率和整体质量)之间的相关性。射线衍射数据。我们将分析的重点放在从Molegro Virtual Docker程序中实现的差分进化应用程序获得的分子对接数据上。作为蛋白质靶标,我们选择了3-dehydroquinate脱水酶(DHQD)。该酶是the草酸酯途径的一部分,并且是抗结核药物开发的蛋白质靶标。我们使用了一组具有20个DHQD晶体结构的配体,这些配体与活性位点结合。为了确定最佳的分子对接方法,我们分析了晶体学参数并寻找了对接结果与蛋白质靶标中存在的结构特征之间的相关性。对接结果的分析有助于确定用于配体对接的最佳方法,并确定对于此方法的成功至关重要的结构特征。对以DHQD为重点的配体对接产生的结果进行的分析使得有可能评估该酶的最佳对接方案,并在对虚拟筛选(VS)的计算要求更高的方法中使用此优化方法。我们使用天然产物的数据集来确定对配体结合亲和力重要的结构特征。

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