Wang Y, Li Y, Ding J, Jiang Z, Chang Y
Key Lab of Mariculture and Biotechnology, Ministry of Agriculture, Dalian Fisheries University, China.
SAR QSAR Environ Res. 2008 Apr-Jun;19(3-4):375-95. doi: 10.1080/10629360802085058.
Bioconcentration assessment is important in the scientific evaluation of risks that chemicals may pose to humans and environment and is a current focus of regulatory effort. In this work, a new QSAR model by adopting electronic topological properties and flexibility of chemicals to predict the bioconcentration factor (BCF) in fish was established based on a large number of diverse compounds. Multiple linear regression (MLR) and partial least squares (PLS) were used to build reliable QSARs, which were evaluated with internal five cross-validations (Qcv2) and an external validation (Qex2). The proposed MLR model showed reasonable predictivity of BCF (Qcv2 = 0.79,Qex2 = 0.79) and included seven molecular descriptors, namely SsCl, SaasC, SaaaC, SsNH2, Hmin, SssO, and Phia. The PLS model (Qcv2 = 0.83, Qex2 = 0.80) was shown to be slightly better than the MLR one in prediction accuracy, using six PLS latent components. In addition, the relationship between the log BCF and the theoretical calculated log Kow was extensively investigated. These studies may help to understand the factors influencing the bioconcentration process of chemicals and to develop alternative methods for prescreening of environmental toxic compounds.
生物富集评估在科学评估化学品可能对人类和环境造成的风险方面具有重要意义,并且是当前监管工作的重点。在这项工作中,基于大量不同的化合物,通过采用化学品的电子拓扑性质和柔韧性建立了一种新的定量构效关系(QSAR)模型,用于预测鱼类中的生物富集因子(BCF)。使用多元线性回归(MLR)和偏最小二乘法(PLS)建立可靠的QSAR模型,并通过内部五重交叉验证(Qcv2)和外部验证(Qex2)对其进行评估。所提出的MLR模型显示出对BCF具有合理的预测能力(Qcv2 = 0.79,Qex2 = 0.79),并包含七个分子描述符,即SsCl、SaasC、SaaaC、SsNH2、Hmin、SssO和Phia。PLS模型(Qcv2 = 0.83,Qex2 = 0.80)在预测准确性方面略优于MLR模型,使用了六个PLS潜变量成分。此外,还广泛研究了log BCF与理论计算的log Kow之间的关系。这些研究可能有助于理解影响化学品生物富集过程的因素,并开发用于环境有毒化合物预筛选的替代方法。