School of Civil and Environmental Engineering, Cornell University, Ithaca, NY, 14853, USA.
Department of Chemistry, Northwestern University, Evanston, IL, 60208, USA.
Water Res. 2019 May 1;154:217-226. doi: 10.1016/j.watres.2019.02.012. Epub 2019 Feb 16.
The removal of organic micropollutants (MPs) from water by means of adsorption is determined by the physicochemical properties of the adsorbent and the MPs. It is challenging to predict the removal of MPs by specific adsorbents due to the extreme diversity in physicochemical properties among MPs of interest. In this research, we established Quantitative Structure-Activity Relationships (QSARs) between the physicochemical properties of a diverse set of MPs and their distribution coefficients (K) measured on coconut shell activated carbon (CCAC) and porous β-cyclodextrin polymer (P-CDP) adsorbents. We conducted batch experiments with a mixture of 200 MPs and used the data to calculate K values for each MP on each adsorbent under conditions of infinite dilution (i.e., low adsorbate concentrations). We used computational software to calculate 3656 molecular descriptors for each MP. We then developed and applied a model-selection workflow to identify the most significant molecular descriptors for each adsorbent. The functional stability and predictive power of the resulting QSARs were confirmed with internal cross validation and external validation. The applicability domain of the QSARs was defined based on the most significant molecular descriptors selected into each QSAR. The QSARs are predictive tools for evaluating adsorption-based water treatment processes and provide new insights into CCAC and P-CDP adsorption mechanisms.
通过吸附从水中去除有机微量污染物(MPs)取决于吸附剂和 MPs 的物理化学性质。由于目标 MPs 在物理化学性质方面存在极大的多样性,因此预测特定吸附剂对 MPs 的去除效果具有挑战性。在这项研究中,我们建立了一组不同 MPs 的物理化学性质与其在椰子壳活性炭(CCAC)和多孔β-环糊精聚合物(P-CDP)吸附剂上测量的分配系数(K)之间的定量构效关系(QSAR)。我们进行了一系列 200 个 MPs 的批量实验,并使用该数据在无限稀释条件下(即低吸附物浓度)计算了每个 MPs 在每种吸附剂上的 K 值。我们使用计算软件为每个 MPs 计算了 3656 个分子描述符。然后,我们开发并应用了一种模型选择工作流程,以确定每个吸附剂最重要的分子描述符。通过内部交叉验证和外部验证来确认所得到的 QSAR 的功能稳定性和预测能力。QSAR 的适用域是基于每个 QSAR 中选择的最重要的分子描述符来定义的。QSAR 是评估基于吸附的水处理工艺的预测工具,并为 CCAC 和 P-CDP 吸附机制提供了新的见解。