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Probability Issues in Molecular Design: Predictive and Modeling Ability in 3D-QSAR Schemes

机译:分子设计中的概率问题:3D-QSAR方案中的预测和建模能力

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In the current work we investigated 3D-QSAR data by the use of the coupled leave-several-out (LSO) and leave-one-out (LOO) cross-validation (CV) procedures. We verified the above mentioned scheme using both simulated data and real 3D QSAR data describing a series of CoMFA steroids, heterocyclic azo dyes and styrylquinoline HIV integrase inhibitors. Unlike in standard analyses, this technique characterizes individual method not by a single performance metrics but screens a whole possible modeling space by sampling different molecules into the training and test sets, respectively. This allowed us for the discussion of the information included in the estimators validating cross-validation procedures, as well as the comparison of the efficiency of several 3D QSAR schemes, in particular, Comparative Molecular Field Analysis (CoMFA) and Comparative Molecular Surface Analysis (CoMSA). Moreover, it allows one to acquire some general knowledge about predictive and modeling ability in 3D QSAR method.
机译:在当前的工作中,我们通过使用离开-多次淘汰(LSO)和离开-一次淘汰(LOO)交叉验证(CV)程序研究了3D-QSAR数据。我们使用模拟数据和真实的3D QSAR数据验证了上述方案,该数据描述了一系列CoMFA类固醇,杂环偶氮染料和苯乙烯基喹啉HIV整合酶抑制剂。与标准分析不同,该技术不是通过单个性能指标来表征单个方法,而是通过分别将不同分子采样到训练集和测试集中来筛选整个可能的建模空间。这使我们能够讨论验证交叉验证程序的估计器中包括的信息,以及几种3D QSAR方案效率的比较,特别是比较分子场分析(CoMFA)和比较分子表面分析(CoMSA) )。而且,它允许人们获得有关3D QSAR方法的预测和建模能力的一些常识。

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