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A new predictive model for the bioconcentration factors of polychlorinated biphenyls (PCBs) based on the molecular electronegativity distance vector (MEDV)

机译:基于分子电负性距离矢量(MEDV)的多氯联苯(PCB)生物富集因子的新预测模型

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Polychlorinated biphenyls (PCBs) are some of the most prevalent pollutants in the total environment and receive more and more concerns as a group of ubiquitous potential persistent organic pollutants. Using the variable selection and modeling based on prediction (VSMP), the molecular electronegativity distance vector (MEDV) derived directly from the molecular topological structures was employed to develop a linear model (MI) between the bioconcentration factors (BCF) and two MEDV descriptors of 58 PCBs. The MI model showed a good estimation ability with a correlation coefficient (r) of 0.9605 and a high stability with a leave-one-out cross-validation correlation coefficient (q) of 0.9564. The MEDV-base model (MI) is easier to use than the splinoid poset method reported by Ivanciuc et al. [Ivanciuc, T., Ivanciuc, O., Klein, D.J., 2006. Modeling the bioconcentration factors and bioaccumulation factors of polychlorinated biphenyls with posetic qualitative super-structure/activity relationships (QSSAR). Mol. Divers. 10, 133-145] and gives a better statistics than molecular connectivity index (MCI)-base model developed by Hu et al. [Hu, H.Y., Xu, F.L., Li, B.G., Cao, J., Dawson, R., Tao, S., 2005. Prediction of the bioconcentration factor of PCBs in fish using the molecular connectivity index and fragment constant models. Water Environ. Res. 77, 87-97]. Main structural factors influencing the BCF of PCBs are the substructures expressed by two atomic groups >C= and -CH=. 58 PCBs were divided into an "odd set" and "even set" in order to ensure the predicted potential of the MI for the external samples. It was shown that three models, MI, MO for "odd set", and ME for "even set", can be used to predict the BCF of remaining 152 PCBs in which the experimental BCFs are not available.
机译:多氯联苯(PCBs)是整个环境中最普遍的污染物之一,作为一种普遍存在的潜在持久性有机污染物,受到越来越多的关注。使用基于预测的变量选择和建模(VSMP),直接从分子拓扑结构推导的分子电负性距离矢量(MEDV)用于建立生物富集因子(BCF)和两个MEDV描述子之间的线性模型(MI)。 58个PCB。 MI模型显示出良好的估计能力,相关系数(r)为0.9605,稳定性高,留一法交叉验证相关系数(q)为0.9564。基于MEDV的模型(MI)比Ivanciuc等人报道的板状波状体方法更易于使用。 [Ivanciuc,T.,Ivanciuc,O.,Klein,D.J.,2006。利用定性定性超结构/活性关系(QSSAR)对多氯联苯的生物富集因子和生物富集因子进行建模。大声笑潜水员10,133-145],并提供了比Hu等人开发的基于分子连接指数(MCI)的模型更好的统计数据。 [Hu,H.Y.,Xu,F.L.,Li,B.G.,Cao,J.,Dawson,R.,Tao,S.,2005。使用分子连接指数和片段常数模型预测鱼类中PCBs的生物富集因子。水环境。 Res。 77,87-97]。影响PCB的BCF的主要结构因素是用两个原子团> C =和-CH =表示的亚结构。将58个PCB分为“奇数集”和“偶数集”,以确保MI对于外部样本的预测电位。结果表明,可以使用三种模型(MI,MO表示“奇数集”和ME表示“偶数集”)来预测剩余的152个PCB的BCF,而这些BFC均不可用。

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