Yu Guanqi, Zhuo Qianlan, Wang Chuan
School of Environmental Science & Engineering, Tianjin University, Tianjin, China.
School of Ecology & Environment, Inner Mongolia University, Hohhot, China.
J Environ Sci Health B. 2025;60(5):219-231. doi: 10.1080/03601234.2025.2489259. Epub 2025 Apr 17.
Organophosphates (OPs) are highly hazardous chemicals with broad-spectrum toxicity. Traditional methods for determining OP toxicity are time-consuming and labor-intensive. In this study, we developed a quantitative structure-activity relationship (QSAR) model to predict acute rat toxicity of OPs using two-dimensional molecular and quantum chemical descriptors, optimized through genetic algorithm-based multiple linear regression (GA-MLR). The optimal model demonstrated robust performance with the following statistical parameters: coefficient of determination () of 0.7451, leave-one-out cross-validation (LOOCV) coefficient () of 0.6208, external test set coefficient of determination () of 0.7360. These metrics indicate excellent generalization and predictive capabilities of the model. Interpretative analysis of the model revealed that NumHDonors and PEOE_VSA were the most significant descriptors influencing OP toxicity. An increase in hydrogen bond donors within OP molecules reduces toxicity, as these donors enhance hydrophilicity, diminishing membrane permeability. Moreover, the PEOE_VSA descriptor characterizes the partial charge properties of OP molecules, reflecting their electrostatic interactions with acetylcholinesterase (AChE) during binding, which influences toxicity. This study presents an optimized modeling strategy designed for small datasets, enabling stable feature selection and accurate assessment of their contributions to toxicity prediction. This research provides a reliable QSAR approach for OP toxicity prediction while offering new insights into toxicity mechanisms.
有机磷酸酯(OPs)是具有广谱毒性的高危险化学品。传统的测定OP毒性的方法既耗时又费力。在本研究中,我们开发了一种定量构效关系(QSAR)模型,使用二维分子和量子化学描述符来预测OPs对大鼠的急性毒性,并通过基于遗传算法的多元线性回归(GA-MLR)进行优化。最优模型表现出稳健的性能,具有以下统计参数:决定系数()为0.7451,留一法交叉验证(LOOCV)系数()为0.6208,外部测试集决定系数()为0.7360。这些指标表明该模型具有出色的泛化能力和预测能力。对该模型的解释性分析表明,氢键供体数量(NumHDonors)和分子表面积的价态极化效应(PEOE_VSA)是影响OP毒性的最显著描述符。OP分子中氢键供体数量的增加会降低毒性,因为这些供体增强了亲水性,降低了膜通透性。此外,PEOE_VSA描述符表征了OP分子的部分电荷性质,反映了它们在结合过程中与乙酰胆碱酯酶(AChE)的静电相互作用,从而影响毒性。本研究提出了一种针对小数据集设计的优化建模策略,能够实现稳定的特征选择并准确评估它们对毒性预测的贡献。这项研究为OP毒性预测提供了一种可靠的QSAR方法,同时为毒性机制提供了新的见解。