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首页> 外文期刊>Current topics in medicinal chemistry >Statistical Analysis, Optimization, and Prioritization of Virtual Screening Parameters for Zinc Enzymes Including the Anthrax Toxin Lethal Factor
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Statistical Analysis, Optimization, and Prioritization of Virtual Screening Parameters for Zinc Enzymes Including the Anthrax Toxin Lethal Factor

机译:锌酶虚拟筛选参数的统计分析,优化和优先化,包括炭疽毒素致死因子

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The anthrax toxin lethal factor (LF) and matrix metalloproteinase-3 (MMP-3, stromelysin-1) are popular zinc metalloenzyme drug targets, with LF primarily responsible for anthrax-related toxicity and host death, while MMP-3 is involved in cancer-and rheumatic disease-related tissue remodeling. A number of in silico screening techniques, most notably docking and scoring, have proven useful for identifying new potential drug scaffolds targeting LF and MMP-3, as well as for optimizing lead compounds and investigating mechanisms of action. However, virtual screening outcomes can vary significantly depending on the specific docking parameters chosen, and systematic statistical significance analyses are needed to prioritize key parameters for screening small molecules against these zinc systems. In the current work, we present a series of chi-square statistical analyses of virtual screening outcomes for cocrystallized LF and MMP-3 inhibitors docked into their respective targets, evaluated by predicted enzyme-inhibitor dissociation constant and root-meansquare deviation (RMSD) between predicted and experimental bound configurations, and we present a series of preferred parameters for use with these systems in the industry-standard Surflex-Dock screening program, for use by researchers utilizing in silico techniques to discover and optimize new scaffolds.
机译:炭疽毒素致命因子(LF)和基质金属蛋白酶-3(MMP-3,STROMELYSIN-1)是普遍的锌金属酶药物靶标,LF主要负责炭疽相关的毒性和宿主死亡,而MMP-3则参与癌症 - 与风湿性疾病相关的组织重塑。在Silico筛选技术中,最符合的对接和评分的许多人已经证明可用于鉴定靶向LF和MMP-3的新潜在药物支架,以及优化铅化合物和调查作用机制。然而,虚拟筛选结果可以根据所选择的特定对接参数而显着变化,并且需要系统的统计显着性分析来优先考虑筛选对这些锌系统的小分子的关键参数。在当前的工作中,我们向基于预测酶抑制剂解离常数和根径偏差(RMSD)评估,我们介绍了一系列基础筛选结果的虚拟筛选结果的统计分析。预测和实验绑定配置,我们提出了一系列优选参数,用于在行业标准的冲击码头筛选程序中使用这些系统,用于使用Silico技术的研究人员使用来发现和优化新的支架。

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