Department of Environmental Engineering and Earth Sciences, Clemson University , 342 Computer Court, Anderson, South Carolina 29625, United States.
Environ Sci Technol. 2013 Mar 5;47(5):2295-303. doi: 10.1021/es3001689. Epub 2012 Jul 13.
In the present study, Quantitative Structure-Activity Relationship (QSAR) and Linear Solvation Energy Relationship (LSER) techniques were used to develop predictive models for adsorption of organic contaminants by multi-walled carbon nanotubes (MWCNTs). Adsorption data for 29 aromatic compounds from literature (i.e., the training data) including some of the experimental results obtained in our laboratory were used to develop predictive models with multiple linear regression analysis. The generated QSAR (r(2) = 0.88), and LSER (r(2) = 0.83) equations were validated externally using an independent validation data set of 30 aromatic compounds. External validation accuracies indicated the success of parameter selection, data fitting ability, and the prediction strength of the developed models. Finally, the combination of training and validation data were used to obtain a combined LSER equation (r(2) = 0.83) that would be used for predicting adsorption of a wide range of low molecular weight aromatics by MWCNTs. In addition, LSER models at different concentrations were generated, and LSER parameter coefficients were examined to gain insights to the predominant adsorption interactions of low molecular weight aromatics on MWCNTs. The molecular volume term (V) of the LSER model was the most influential descriptor controlling adsorption at all concentrations. At higher equilibrium concentrations, hydrogen bond donating (A) and hydrogen bond accepting (B) terms became significant in the models. The results demonstrate that successful predictive models can be developed for the adsorption of organic compounds by CNTs using QSAR and LSER techniques.
在本研究中,定量构效关系(QSAR)和线性溶解能关系(LSER)技术被用于建立多壁碳纳米管(MWCNTs)吸附有机污染物的预测模型。使用文献中 29 种芳香族化合物的吸附数据(即训练数据),包括我们实验室获得的一些实验结果,通过多元线性回归分析来建立预测模型。生成的 QSAR(r(2) = 0.88)和 LSER(r(2) = 0.83)方程通过 30 种芳香族化合物的独立验证数据集进行了外部验证。外部验证的准确性表明了参数选择、数据拟合能力和所开发模型的预测强度的成功。最后,使用训练和验证数据的组合获得了一个组合的 LSER 方程(r(2) = 0.83),该方程将用于预测 MWCNTs 对广泛的低分子量芳烃的吸附。此外,生成了不同浓度下的 LSER 模型,并检查了 LSER 参数系数,以深入了解低分子量芳烃在 MWCNTs 上的主要吸附相互作用。LSER 模型中的分子体积项(V)是控制所有浓度下吸附的最具影响力的描述符。在较高的平衡浓度下,氢键供体(A)和氢键受体(B)项在模型中变得重要。结果表明,使用 QSAR 和 LSER 技术可以成功地为 CNTs 吸附有机化合物建立预测模型。