Resource and Environment Institute of North China Electric Power University, Beijing 102206, China; The State Key Laboratory of Regional Optimisation of Energy System, North China Electric Power University, Beijing 102206, China.
Resource and Environment Institute of North China Electric Power University, Beijing 102206, China; The State Key Laboratory of Regional Optimisation of Energy System, North China Electric Power University, Beijing 102206, China.
Ecotoxicol Environ Saf. 2016 Feb;124:202-212. doi: 10.1016/j.ecoenv.2015.10.024. Epub 2015 Nov 2.
Based on the experimental data of octanol-air partition coefficients (KOA) for 19 polychlorinated biphenyl (PCB) congeners, two types of QSAR methods, comparative molecular field analysis (CoMFA) and comparative molecular similarity indices analysis (CoMSIA), are used to establish 3D-QSAR models using the structural parameters as independent variables and using logKOA values as the dependent variable with the Sybyl software to predict the KOA values of the remaining 190 PCB congeners. The whole data set (19 compounds) was divided into a training set (15 compounds) for model generation and a test set (4 compounds) for model validation. As a result, the cross-validation correlation coefficient (q(2)) obtained by the CoMFA and CoMSIA models (shuffled 12 times) was in the range of 0.825-0.969 (>0.5), the correlation coefficient (r(2)) obtained was in the range of 0.957-1.000 (>0.9), and the SEP (standard error of prediction) of test set was within the range of 0.070-0.617, indicating that the models were robust and predictive. Randomly selected from a set of models, CoMFA analysis revealed that the corresponding percentages of the variance explained by steric and electrostatic fields were 23.9% and 76.1%, respectively, while CoMSIA analysis by steric, electrostatic and hydrophobic fields were 0.6%, 92.6%, and 6.8%, respectively. The electrostatic field was determined as a primary factor governing the logKOA. The correlation analysis of the relationship between the number of Cl atoms and the average logKOA values of PCBs indicated that logKOA values gradually increased as the number of Cl atoms increased. Simultaneously, related studies on PCB detection in the Arctic and Antarctic areas revealed that higher logKOA values indicate a stronger PCB migration ability. From CoMFA and CoMSIA contour maps, logKOA decreased when substituents possessed electropositive groups at the 2-, 3-, 3'-, 5- and 6- positions, which could reduce the PCB migration ability. These results are expected to be beneficial in predicting logKOA values of PCB homologues and derivatives and in providing a theoretical foundation for further elucidation of the global migration behaviour of PCBs.
基于 19 种多氯联苯(PCB)同系物的辛醇-空气分配系数(KOA)实验数据,使用 Sybyl 软件,采用比较分子场分析(CoMFA)和比较分子相似性指数分析(CoMSIA)两种 QSAR 方法,以结构参数为自变量,logKOA 值为因变量,建立了 3D-QSAR 模型,以预测其余 190 种 PCB 同系物的 KOA 值。整个数据集(19 种化合物)分为用于模型生成的训练集(15 种化合物)和用于模型验证的测试集(4 种化合物)。结果表明,CoMFA 和 CoMSIA 模型(随机置换 12 次)的交叉验证相关系数(q(2))在 0.825-0.969(>0.5)范围内,得到的相关系数(r(2))在 0.957-1.000(>0.9)范围内,测试集的SEP(预测标准误差)在 0.070-0.617 范围内,表明模型稳健且具有预测能力。从一组模型中随机选择 CoMFA 分析表明,立体场和静电场解释的方差比例分别为 23.9%和 76.1%,而 CoMSIA 分析的立体场、静电场和疏水场分别为 0.6%、92.6%和 6.8%。静电场被确定为控制 logKOA 的主要因素。对 PCBs 氯原子数与平均 logKOA 值之间关系的相关分析表明,随着氯原子数的增加,logKOA 值逐渐增加。同时,对北极和南极地区 PCB 检测的相关研究表明,较高的 logKOA 值表明 PCB 具有更强的迁移能力。从 CoMFA 和 CoMSIA 等高线图可以看出,当取代基在 2-、3-、3'-、5-和 6-位具有正电性基团时,logKOA 值降低,这可以降低 PCB 的迁移能力。这些结果有望有助于预测 PCB 同系物和衍生物的 logKOA 值,并为进一步阐明 PCBs 的全球迁移行为提供理论基础。