首页> 美国卫生研究院文献>International Journal of Molecular Sciences >Introducing Catastrophe-QSAR. Application on Modeling Molecular Mechanisms of Pyridinone Derivative-Type HIV Non-Nucleoside Reverse Transcriptase Inhibitors
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Introducing Catastrophe-QSAR. Application on Modeling Molecular Mechanisms of Pyridinone Derivative-Type HIV Non-Nucleoside Reverse Transcriptase Inhibitors

机译:引入灾难性QSAR。吡啶酮衍生物型HIV非核苷逆转录酶抑制剂的分子机制建模应用

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摘要

The classical method of quantitative structure-activity relationships (QSAR) is enriched using non-linear models, as Thom’s polynomials allow either uni- or bi-variate structural parameters. In this context, catastrophe QSAR algorithms are applied to the anti-HIV-1 activity of pyridinone derivatives. This requires calculation of the so-called relative statistical power and of its minimum principle in various QSAR models. A new index, known as a statistical relative power, is constructed as an Euclidian measure for the combined ratio of the Pearson correlation to algebraic correlation, with normalized t-Student and the Fisher tests. First and second order inter-model paths are considered for mono-variate catastrophes, whereas for bi-variate catastrophes the direct minimum path is provided, allowing the QSAR models to be tested for predictive purposes. At this stage, the max-to-min hierarchies of the tested models allow the interaction mechanism to be identified using structural parameter succession and the typical catastrophes involved. Minimized differences between these catastrophe models in the common structurally influential domains that span both the trial and tested compounds identify the “optimal molecular structural domains” and the molecules with the best output with respect to the modeled activity, which in this case is human immunodeficiency virus type 1 HIV-1 inhibition. The best molecules are characterized by hydrophobic interactions with the HIV-1 p66 subunit protein, and they concur with those identified in other 3D-QSAR analyses. Moreover, the importance of aromatic ring stacking interactions for increasing the binding affinity of the inhibitor-reverse transcriptase ligand-substrate complex is highlighted.
机译:由于Thom多项式允许单变量或双变量结构参数,因此使用非线性模型丰富了定量结构与活动关系(QSAR)的经典方法。在这种情况下,将灾难QSAR算法应用于吡啶酮衍生物的抗HIV-1活性。这就需要计算各种QSAR模型中的所谓相对统计功效及其最小原理。构造了一个新的索引,称为统计相对功效,作为欧几里得度量,用于标准化的t-Student和Fisher检验中皮尔逊相关性与代数相关性的组合比率。对于单变量灾难,考虑一阶和二阶模型间路径,而对于双变量灾难,则提供直接的最小路径,从而允许对QSAR模型进行预测。在此阶段,测试模型的最大到最小层次结构允许使用结构参数继承和所涉及的典型灾难来识别相互作用机制。在跨越试验和测试化合物的常见结构影响域中,这些突变模型之间的差异最小,可确定“最佳分子结构域”和就建模活性而言具有最佳输出的分子,在这种情况下,这是人类免疫缺陷病毒1型HIV-1抑制作用。最好的分子的特征是与HIV-1 p66亚基蛋白发生疏水相互作用,并且与其他3D-QSAR分析中鉴定的分子相同。此外,强调了芳香环堆积相互作用对于增加抑制剂-逆转录酶配体-底物复合物的结合亲和力的重要性。

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