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首页> 外文期刊>Journal of Chromatographic Science >Quantitative Structure-Property Relationship Study of Retention Time of Some Pesticides in Gas Chromatography
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Quantitative Structure-Property Relationship Study of Retention Time of Some Pesticides in Gas Chromatography

机译:气相色谱中某些农药保留时间的定量构效关系研究

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摘要

A quantitative structure-property relationship (QSPR) study based on multiple linear regression (MLR) and artificial neural network (ANN) techniques is carried out to investigate the retention time behavior of some pesticides on the DB-5ms fused-silica column in gas chromatography. Five descriptors selected in the MLR model are: first component WHIM index (E1v), highest eigenvalue n.7 of burden matrix / weighted by atomic van der waals volume (BEHv7); average connectivity index Chi-2 (X2a), 3D-MoRSE signal 23 weighted by atomic Sanderson electronegativity (MoR23m); and principal moments of inertia B (PMIB). A 5-5-1 ANN is also generated to investigate the retention behavior of described pesticides using the same descriptors MLR model as inputs. The statistical parameters derived from MLR and ANN for all molecules are: correlation coefficient (R)MLR = 0.929, standard errors (SE)MLR = 3.452, RANN = 0.943, and SEANN = 3.112. The mean of relative errors between the MLR and ANN calculated and the experimental values of the retention times for the prediction set are 13.8% and 9.04%, respectively. The correlation coefficient and standard error of ANN model compared with MLR models showed the superiority of ANNs over regression models. This is partly due to the fact that ANN considers the interaction between different parameters as well as nonlinear relation.
机译:基于多元线性回归(MLR)和人工神经网络(ANN)技术进行了定量结构-性质关系(QSPR)研究,以研究某些农药在气相色谱仪DB-5ms硅胶柱上的保留时间行为。 。在MLR模型中选择的五个描述符是:第一分量WHIM索引(E1v),负荷矩阵的最高特征值n.7 /原子范德华体积加权(BEHv7);通过原子桑德森电负性(MoR23m)加权的平均连通性指数Chi-2(X2a),3D-MoRSE信号23;和主要惯性矩B(PMIB)。还使用相同的描述符MLR模型作为输入,生成了5-5-1 ANN以调查所描述农药的保留行为。从MLR和ANN得出的所有分子的统计参数为:相关系数(R)MLR = 0.929,标准误(SE)MLR = 3.452,RANN = 0.943,SEANN = 3.112。计算出的MLR和ANN之间的相对误差的平均值以及预测集的保留时间的实验值分别为13.8%和9.04%。与MLR模型相比,ANN模型的相关系数和标准误差显示了ANN优于回归模型。这部分是由于ANN考虑了不同参数之间的相互作用以及非线性关系。

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