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Predictive QSPR modeling of the acidic dissociation constant (pK(a)) of phenols in different solvents

机译:不同溶剂中苯酚的酸解离常数(pK(a))的预测QSPR建模

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Given the importance of ionization constant (pK(a)) of phenols in explaining the mechanism of their toxicity, it is of interest to develop theoretical models for the prediction of pK(a) values of phenols in different solvent systems. In the present communication, we developed predictive QSPR models for pK(a) values of substituted phenols in seven different solvent systems such as water, dimethyl sulfoxide (DMSO), methanol, dimethylformamide (DMF), acetonitrile (AN), isopropanol, and tert-butanol using quantum topological molecular similarity (QTMS) descriptors. The data set was divided into training and test sets, and models were developed using partial least squares (PLS) regression from the training set. The predictive potential of the developed models was assessed by the prediction of pK(a) values of the test set compounds. Root mean square error of prediction (RMSEP) values were used as objective function for selection of the best models in different solvent systems. Good predictive models were developed in all solvent systems except isopropanol. Considering all seven solvent systems, distance descriptors give consistently good results whereas ellipticity descriptors are of less importance. Moreover, plots of 'variable importance in the projection' (VIP) for the best models highlight the importance of the bond connecting the phenolic oxygen to the aromatic ring. This suggests the diagnostic nature of QTMS descriptors in identifying the reaction center in acidic dissociation of phenols. Copyright (C) 2008 John Wiley & Sons, Ltd.
机译:鉴于酚的电离常数(pK(a))在解释其毒性机理方面的重要性,开发用于预测不同溶剂系统中酚的pK(a)值的理论模型非常重要。在本交流中,我们针对水,二甲基亚砜(DMSO),甲醇,二甲基甲酰胺(DMF),乙腈(AN),异丙醇和叔叔醇等七个不同溶剂系统中的取代酚的pK(a)值开发了预测性QSPR模型-丁醇使用量子拓扑分子相似性(QTMS)描述符。将数据集分为训练集和测试集,并使用来自训练集的偏最小二乘(PLS)回归开发模型。通过预测测试化合物的pK(a)值来评估已开发模型的预测潜力。预测的均方根误差(RMSEP)值用作选择不同溶剂系统中最佳模型的目标函数。除异丙醇外,所有溶剂系统均开发了良好的预测模型。考虑所有七个溶剂系统,距离描述符给出的结果始终如一,而椭圆率描述符的重要性较小。此外,最佳模型的“预测中的可变重要性”(VIP)图突出了将酚氧与芳环连接的键的重要性。这表明QTMS描述子在鉴定酚酸解离反应中心时的诊断性质。版权所有(C)2008 John Wiley&Sons,Ltd.

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