Walkerton Clean Water Centre, Walkerton, Ontario N0G 2V0, Canada.
NSERC Chair in Water Treatment, Department of Civil and Environmental Engineering, University of Waterloo, Waterloo, Ontario N2L 3G1, Canada.
Chemosphere. 2015 Nov;138:1-9. doi: 10.1016/j.chemosphere.2015.05.034. Epub 2015 May 22.
Quantitative structure-property relationship (QSPR) models which predict hydroxyl radical rate constants (kOH) for a wide range of emerging micropollutants are a cost effective approach to assess the susceptibility of these contaminants to advanced oxidation processes (AOPs). A QSPR model for the prediction of kOH of emerging micropollutants from their physico-chemical properties was developed with special attention to model validation, applicability domain and mechanistic interpretation. In this study, 118 emerging micropollutants including those experimentally determined by the author and data collected from the literature, were randomly divided into the training set (n=89) and validation set (n=29). 951 DRAGON molecular descriptors were calculated for model development. The QSPR model was calibrated by applying forward multiple linear regression to the training set. As a result, 7 DRAGON descriptors were found to be important in predicting the kOH values which related to the electronegativity, polarizability, and double bonds, etc. of the compounds. With outliers identified and removed, the final model fits the training set very well and shows good robustness and internal predictivity. The model was then externally validated with the validation set showing good predictive power. The applicability domain of the model was also assessed using the Williams plot approach. Overall, the developed QSPR model provides a valuable tool for an initial assessment of the susceptibility of micropollutants to AOPs.
定量构效关系 (QSPR) 模型可预测广泛出现的新兴污染物的羟基自由基速率常数 (kOH),是评估这些污染物对高级氧化工艺 (AOP) 敏感性的一种具有成本效益的方法。本研究开发了一种基于新兴污染物物理化学性质预测 kOH 的 QSPR 模型,特别关注模型验证、适用域和机制解释。本研究中,将 118 种新兴污染物(包括作者实验测定的和文献中收集的数据)随机分为训练集(n=89)和验证集(n=29)。为了开发模型,计算了 951 个 DRAGON 分子描述符。通过正向多元线性回归对训练集进行校准,确定了 7 个 DRAGON 描述符对预测 kOH 值很重要,这些描述符与化合物的电负性、极化率和双键等有关。通过识别和去除异常值,最终模型很好地拟合了训练集,表现出良好的稳健性和内部预测性。然后,使用验证集对模型进行外部验证,显示出良好的预测能力。还使用 Williams 图方法评估了模型的适用域。总之,开发的 QSPR 模型为初步评估污染物对 AOP 的敏感性提供了一种有价值的工具。