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Autocorrelation of Molecular Electrostatic Potential Surface Properties Combined with Partial Least Squares Analysis as Alternative Attractive Tool to Generate Ligand-Based 3D-QSARs

机译:分子静电势表面性质的自相关结合偏最小二乘分析作为替代有吸引力的工具,以生成基于配体的3D-QSAR

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摘要

A database of 106 human A_3 adenosine receptor antagonists was used to derive two alternative PLS models: one starting from CoMFA descriptors and the other starting from the autocorrelation descriptors. The peculiarity of this work is the introduction of autocorrelation vectors as molecular descriptors for the PLS analysis. The autocorrelation allows comparing molecules (and their properties) with different structures and with different spatial orientation without any previous alignment. In particular, Molecular Electrostatic Potential (MEP) was the property computed and its information encoded in autocorrelation vectors, The 3D spatial distribution and the values of the electrostatic potential is in fact largely responsible for the binding of a substrate to its receptor binding site. Validation was done with an external test set and the results of the two models were compared. Interestingly, our preliminary results seem to indicate that this new alternative approach could robustly compete with the already well consolidated CoMFA approach. In particular, we have suggested that it could be a very interesting tool to filter large structural database in several virtual screening applications.
机译:使用106个人类A_3腺苷受体拮抗剂的数据库来推导两个替代的PLS模型:一个从CoMFA描述子开始,另一个从自相关描述子开始。这项工作的特点是引入了自相关向量作为PLS分析的分子描述符。自相关允许比较具有不同结构和不同空间方向的分子(及其性质),而无需进行任何先前的比对。特别是,分子静电势(MEP)是经过计算的特性,其信息编码在自相关向量中。3D空间分布和静电势的值实际上在很大程度上决定了底物与其受体结合位点的结合。使用外部测试集进行验证,并比较两个模型的结果。有趣的是,我们的初步结果似乎表明,这种新的替代方法可以与已经很好整合的CoMFA方法进行强有力的竞争。特别是,我们建议它可能是一个非常有趣的工具,可以在多个虚拟筛选应用程序中过滤大型结构数据库。

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