School of Environmental Science and Engineering, Key Laboratory of Thin Film and Microfabrication Technology (Ministry of Education), Shanghai Jiao Tong University, Shanghai, 200240, China.
Department of Medical Nanotechnology, Faculty of Advanced Medical Sciences, Tabriz University of Medical Sciences, Tabriz, Iran.
J Environ Manage. 2022 May 15;310:114747. doi: 10.1016/j.jenvman.2022.114747. Epub 2022 Feb 20.
Peracetic acid (PAA) is considered as an effective and powerful oxidant for eliminating organic contaminants in wastewater treatment. The second-order rate constant (k) for the reaction of PAA with organic contaminants is practically important for evaluating their removal efficiency in wastewater treatment, but only limited numbers of k values are available. In this study, 70 organic compounds with various structures were selected, and the k of PAA with each organic compound was used to develop two quantitative structure-activity relationship (QSAR) models based on three kinds of descriptors including constitutional, quantum chemical, and the PaDEL descriptors. The genetic algorithm (GA) was applied to select the molecular descriptors, then the models developed by multiple linear regression (MLR). The most important descriptors that explain the reactivity of organic compounds with PAA are the E for the model with the constitutional and quantum chemical descriptors. The maxHdsCH and minHdCH are two most important descriptors for the model with only PaDEL descriptors. The developed models can be used to predict k for a wide range of organic contaminants. The accuracy of the developed models was proved by the internal, external validation and the Y-scrambling technique. The developed QSAR models using the GA-MLR method can be used as a screening tool for predicting the elimination of organic contaminants by PAA and increasing the understanding of chemical pollutant fate.
过氧乙酸(PAA)被认为是一种有效且强大的氧化剂,可用于去除废水中的有机污染物。PAA 与有机污染物反应的二级速率常数(k)对于评估其在废水处理中的去除效率具有实际意义,但目前只有有限数量的 k 值可用。在这项研究中,选择了 70 种具有不同结构的有机化合物,并使用 PAA 与每种有机化合物的 k 值来开发基于三种描述符(包括结构、量子化学和 PaDEL 描述符)的两种定量构效关系(QSAR)模型。遗传算法(GA)用于选择分子描述符,然后使用多元线性回归(MLR)对模型进行开发。解释有机化合物与 PAA 反应性的最重要描述符是模型中结构和量子化学描述符的 E。对于仅使用 PaDEL 描述符的模型,maxHdsCH 和 minHdCH 是两个最重要的描述符。所开发的模型可用于预测广泛的有机污染物的 k 值。通过内部、外部验证和 Y -scrambling 技术证明了所开发模型的准确性。使用 GA-MLR 方法开发的 QSAR 模型可用作预测 PAA 去除有机污染物和增加对化学污染物命运理解的筛选工具。