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QNA-based 'Star Track' QSAR approach

机译:基于QNA的“星轨” QSAR方法

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In the existing quantitative structure-activity relationship (QSAR) methods any molecule is represented as a single point in a many-dimensional space of molecular descriptors. We propose a new QSAR approach based on Quantitative Neighbourhoods of Atoms (QNA) descriptors, which characterize each atom of a molecule and depend on the whole molecule structure. In the 'Star Track' methodology any molecule is represented as a set of points in a two-dimensional space of QNA descriptors. With our new method the estimate of the target property of a chemical compound is calculated as the average value of the function of QNA descriptors in the points of the atoms of a molecule in QNA descriptor space. Substantially, we propose the use of only two descriptors rather than more than 3000 molecular descriptors that apply in the QSAR method. On the basis of this approach we have developed the computer program GUSAR and compared it with several widely used QSAR methods including CoMFA, CoMSIA, Golpe/GRID, HQSAR and others, using ten data sets representing various chemical series and diverse types of biological activity. We show that in the majority of cases the accuracy and predictivity of GUSAR models appears to be better than those for the reference QSAR methods. High predictive ability and robustness of GUSAR are also shown in the leave-20%-out cross-validation procedure.
机译:在现有的定量构效关系(QSAR)方法中,任何分子都被表示为分子描述符的多维空间中的单个点。我们提出了一种基于原子定量邻域(QNA)描述符的新QSAR方法,该方法表征了分子的每个原子并取决于整个分子的结构。在“星轨”方法中,任何分子都表示为QNA描述符二维空间中的一组点。使用我们的新方法,可以将化合物目标特性的估计值计算为QNA描述子空间中分子原子点上QNA描述子函数的平均值。实质上,我们建议仅使用两个描述符,而不是在QSAR方法中使用超过3000个分子描述符。在此方法的基础上,我们开发了计算机程序GUSAR,并将其与多种广泛使用的QSAR方法进行了比较,包括CoMFA,CoMSIA,Golpe / GRID,HQSAR等,并使用了代表各种化学系列和不同类型生物活性的十个数据集。我们表明,在大多数情况下,GUSAR模型的准确性和可预测性似乎优于参考QSAR方法。离开20%淘汰交叉验证程序还显示了GUSAR的高预测能力和鲁棒性。

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