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Combination of a modified scoring function with two-dimensional descriptors for calculation of binding affinities of bulky, flexible ligands to proteins

机译:改进的评分功能与二维描述符的组合,用于计算庞大的柔性配体与蛋白质的结合亲和力

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摘要

Bulky, flexible molecules such as peptides and peptidomimetics are often used as lead compounds during the drug discovery process. Pathophysiological events, e.g., the formation of amyloid fibrils in Alzheimer's disease, the conformational changes of prion proteins, or beta-secretase activity, may be successfully hindered by the use of rationally designed peptide sequences. A key step in the molecular engineering of such potent lead compounds is the prediction of the energetics of their binding to the macromolecular targets. Although sophisticated experimental and in silico methods are available to help this issue, the structure-based calculation of the binding free energies of large, flexible ligands to proteins is problematic. In this study, a fast and accurate calculation strategy is presented, following modification of the scoring function of the popular docking program package AutoDock and the involvement of ligand-based two-dimensional descriptors. Quantitative structure-activity relationships with good predictive power were developed. Thorough cross-validation tests and verifications were performed on the basis of experimental binding data of biologically important systems. The capabilities and limitations of the ligand-based descriptors were analyzed. Application of these results in the early phase of lead design will contribute to precise predictions, correct selections, and consequently a higher success rate of rational drug discovery.
机译:在药物发现过程中,大块的柔性分子(例如肽和拟肽)经常被用作先导化合物。病理生理事件,例如在阿尔茨海默氏病中淀粉样蛋白原纤维的形成,病毒蛋白的构象变化或β-分泌酶活性,可以通过使用合理设计的肽序列来成功地阻止。在这种有效的先导化合物的分子工程中的关键步骤是对它们与大分子靶标结合的能量学的预测。尽管可以使用复杂的实验方法和计算机模拟方法来解决此问题,但是大型,灵活的配体与蛋白质的结合自由能的基于结构的计算仍然存在问题。在这项研究中,提出了一种快速而准确的计算策略,它是对流行的对接程序包AutoDock的评分功能进行了修改,并引入了基于配体的二维描述符。建立了具有良好预测能力的定量构效关系。在生物学上重要的系统的实验结合数据的基础上,进行了全面的交叉验证测试和验证。分析了基于配体的描述符的功能和局限性。在铅设计的早期阶段中应用这些结果将有助于精确的预测,正确的选择,并因此提高理性药物发现的成功率。

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