Ghasemi Jahan B, Abdolmaleki Azizeh, Mandoumi Noushin
Chemistry Department, Faculty of Sciences, Razi University, Kermanshah, Iran.
J Hazard Mater. 2009 Jan 15;161(1):74-80. doi: 10.1016/j.jhazmat.2008.03.089. Epub 2008 Mar 26.
QSPR studies for estimating the incorporation organic hazardous compounds in cationic surfactant (CTAB) were developed by application of the structural descriptors and multiple linear regression (MLR) method. Various structure-related descriptors were studied in order to derive information on hydrophobic, electronic and steric properties of solute molecules. Theoretical molecular descriptors selected by genetic algorithms-procedure were followed to predict logKs values by a stepwise-MLR method. A simple model with low standard errors and high correlation coefficients was selected. It was also found that MLR method could model the relationship between solubility and structural descriptors perfectly. The proposed methodology was validated using full cross validation and external validation using division of the available data set into training and test sets. The squared regression coefficient of prediction for the MLR model was 0.9624. The results illustrated that the linear techniques such as MLR combined with a successful variable selection procedure are capable to generate an efficient QSPR model for predicting the solubility of different compounds. The proposed model can be used adequately for the prediction and description of the solubility of organic compounds in micellar solutions.
通过应用结构描述符和多元线性回归(MLR)方法,开展了用于估计阳离子表面活性剂(CTAB)中有机有害化合物掺入情况的定量构效关系(QSPR)研究。研究了各种与结构相关的描述符,以便获取溶质分子的疏水、电子和空间性质信息。采用遗传算法程序选择的理论分子描述符,通过逐步MLR方法预测logKs值。选择了一个具有低标准误差和高相关系数的简单模型。还发现MLR方法能够完美地模拟溶解度与结构描述符之间的关系。使用完全交叉验证和将可用数据集划分为训练集和测试集的外部验证对所提出的方法进行了验证。MLR模型预测的平方回归系数为0.9624。结果表明,诸如MLR等线性技术与成功的变量选择程序相结合,能够生成一个用于预测不同化合物溶解度的有效QSPR模型。所提出的模型可充分用于预测和描述有机化合物在胶束溶液中的溶解度。