QSRR Study of Linear Retention Indices for Volatile Compounds using Statistical Methods

A. Belhassan, Samir CHTITA, T. Lakhlifi, M. Bouachrine
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引用次数: 3

Abstract

: ACD/ChemSketch, MarvinSketch and ChemOffice programs were used to calculate several molecular descriptors of 138 volatile compounds (32 hydrocarbons, 29 ketones, 28 aldehydes, 23 alcohols, 7 carboxylic acids, 6 halogenated compounds, 4 furans, 2 pyrazines, 1 ester, 1 sulphur compounds, 1 pyridine, 1 amine and three other compounds). The best descriptors were selected to establish the quantitative structure retention relationship (QSRR) of linear retention indices of volatile compounds using multiple linear regressions (MLR), multiple non-linear regressions (MNLR) and artificial neural network (ANN) methods. We propose quantitative models according to these analyses. The models were used to predict the linear retention indices of the test set compounds and agreement between the experimental and predicted values was verified. The descriptors showed by QSRR study were used for study and designing of new compounds. The statistical results indicate that the predicted values are in good agreement with the experimental results. To validate the predictive power of the resulting models, external validation multiple correlation coefficient was calculated and has both in addition to a performance prediction power, a favorable estimation of stability.
用统计方法研究挥发性化合物线性保留指数的QSRR
使用ACD/ChemSketch、marvinssketch和ChemOffice程序计算了138种挥发性化合物(32种碳氢化合物、29种酮类化合物、28种醛类化合物、23种醇类化合物、7种羧酸类化合物、6种卤代化合物、4种呋喃类化合物、2种吡嗪类化合物、1种酯类化合物、1种硫类化合物、1种吡啶类化合物、1种胺类化合物和3种其他化合物)的分子描述符。采用多元线性回归(MLR)、多元非线性回归(MNLR)和人工神经网络(ANN)等方法,选取最佳描述符建立挥发性化合物线性保留指标的定量结构保留关系(QSRR)。根据这些分析,我们提出了定量模型。利用该模型对测试集化合物的线性保留指数进行了预测,并验证了预测值与实验值的一致性。QSRR研究得到的描述子可用于新化合物的研究和设计。统计结果表明,预测值与实验结果吻合较好。为了验证所得模型的预测能力,计算了外部验证多重相关系数,并同时具有预测能力和良好的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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