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Predictions of chromatographic retention indices of alkylphenols with support vector machines and multiple linear regression

机译:支持向量机和多元线性回归预测烷基酚的色谱保留指数

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In this study, quantitative structure-retention relationship (QSRR) was used for the prediction of Kovats retention indices of 180 alkylphenols and their derivatives using the multiple linear regression (MLR) and support vector machine (SVM). After the calculation of some molecular descriptors for all molecules, the data set was randomly divided into training and test sets. The diversity of training and test sets was examined by molecular diversity validation test. Then stepwise MLR was used for the selection of the most important descriptors and development of MLR models. Descriptors which appeared in these QSRR models are number of H atoms, relative number of O atoms, Balaban index, relation yz-shadow/yz-rectangle and partial charges hydrogen bond donor atoms HDCA(2) index. These descriptors were used as inputs for developing the SVM model. After optimizing the SVM parameters, it was used for the calculation of chromatographic retention of interest molecules. The values of SE in calculation of Kovats retention indices for training and test sets are 0.34 and 0.63, respectively, for MLR model and 0.35 and 0.63, respectively, for SVM model. The overall values of average absolute relative error were 13.24 and 13.83 for MLR and SVM models, respectively. in addition, the cross-validation tests were performed to further examine the obtained model. The calculated values of cross-validation correlation coefficient (V) and standard deviation based on predicted residual sum of square are 0.896 and 0.680 for MLR model and 0.893 and 0.67 for SVM model. These values and other obtained statistical parameters for these models reveal the suitability of QSRR in prediction of Kovats retention indices of alkylphenols using MLR and SVM techniques.
机译:在这项研究中,使用多元线性回归(MLR)和支持向量机(SVM),使用定量结构保留关系(QSRR)预测180个烷基酚及其衍生物的Kovats保留指数。在为所有分子计算了一些分子描述符后,将数据集随机分为训练集和测试集。通过分子多样性验证测试来检验训练集和测试集的多样性。然后,逐步MLR用于最重要的描述符的选择和MLR模型的开发。这些QSRR模型中出现的描述符是H原子数,O原子相对数量,Balaban指数,yz-shadow / yz-rectangle关系和部分电荷氢键供体原子HDCA(2)指数。这些描述符用作开发SVM模型的输入。优化SVM参数后,将其用于计算目标分子的色谱保留率。对于MLR模型,计算训练集和测试集的Kovats保留指数时的SE值分别为0.34和0.63,对于SVM模型,分别为0.35和0.63。对于MLR和SVM模型,平均绝对相对误差的总值分别为13.24和13.83。另外,进行交叉验证测试以进一步检查获得的模型。基于MLR模型的预测残差平方和,交叉验证相关系数(V)和标准偏差的计算值分别为0.896和0.680,对于SVM模型为0.893和0.67。这些值和这些模型的其他获得的统计参数揭示了QSRR在使用MLR和SVM技术预测烷基酚的Kovats保留指数中的适用性。

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