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Prediction of Setschenow constants of organic compounds based on a 3D structure representation

机译:基于3D结构表示的有机化合物的Setschenow常数预测

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Quantitative structure-property relationship (QSPR) studies were performed between three-dimensional (3D) descriptors representing the molecular structures and Setschenow constants (K_(salt)) by sodium chloride for a diverse set of organic compounds. The entire set of 101 compounds was divided into a training set of 71 compounds and a test set of 30 compounds according to Kennard and Stones algorithm. Multilinear regression (MLR) analysis was used to select the best subset of descriptors and to build linear models; while nonlinear models were developed by means of artificial neural network (ANN). The obtained models with five descriptors involved show a good predictive power: for the test set, a squared correlation coefficient (R~(2)) of 0.8987 and a standard error of estimation (s) of 0.021 were achieved by the MLR analysis; while by the ANN, R~(2) and s were 0.9034 and 0.020, respectively.
机译:在表示分子结构的三维(3D)描述子和氯化钠对多种有机化合物的Setschenow常数(K_(盐))进行的三维(3D)描述子之间进行了定量结构-性质关系(QSPR)研究。根据Kennard和Stones算法,将整套101种化合物分为71种化合物的训练集和30种化合物的测试集。使用多线性回归(MLR)分析来选择描述符的最佳子集并建立线性模型。非线性模型是通过人工神经网络(ANN)开发的。所获得的包含五个描述符的模型具有良好的预测能力:对于测试集,通过MLR分析获得的平方相关系数(R〜(2))为0.8987,估计的标准误差为0.021。 ANN的R〜(2)和s分别为0.9034和0.020。

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