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Coloured chemical image-based models for the prediction of soil sorption of herbicides

机译:基于彩色化学图像的除草剂土壤吸附预测模型

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Herbicides with high soil sorption profiles constitute important organic pollutants leading to detrimental environmental effects, particularly due to prolonged use. Soil sorption is described in terms of log K-OC, the logarithm of the soil/water partition coefficient normalized to organic carbon. This work reports the use of molecular drawings to generate molecular descriptors, which are posteriorly correlated with the log KOC values of a series of herbicides. These images are two-dimensional projections of chemical structures, with their atom sizes drawn to be proportional to the corresponding van der Waals radii and each chemical element assigned a different colour to distinguish atom types. The progressive changes in the molecular structures explain the variance in the corresponding soil sorption. Unlike previous QSPR studies on soil sorption, the series of herbicides employed in the present study included different classes of compounds (carboxylic acids, ethers, phenols, amines, amides and carbamates) guaranteeing a diverse chemical structural space. The obtained Partial Least Squares (PLS) and Multiple Linear Regression (MLR) based models for the log KOC values were found to be robust and with high predictive power. Mechanistic interpretation of the effect of different substituents (bonded to the common structural moiety in the herbicides series) on the log KOC values was performed yielding interesting results. These findings allow greater understanding of the chemical groups (or structural characteristics) responsible for high/low soil sorption, which in turn provides key leads for structural optimization to yield environmentally friendly and equally effective herbicides.
机译:具有高土壤吸附特性的除草剂会构成重要的有机污染物,导致有害的环境影响,尤其是长时间使用会造成不利影响。用log K-OC来描述土壤吸附,log K-OC是归一化为有机碳的土壤/水分配系数的对数。这项工作报告了分子图的使用,以生成分子描述符,该描述符与一系列除草剂的log KOC值在后面相关。这些图像是化学结构的二维投影,其原子大小绘制为与相应的范德华半径成比例,并且每个化学元素都分配了不同的颜色以区分原子类型。分子结构的逐步变化解释了相应土壤吸附的变化。与先前对土壤吸附的QSPR研究不同,本研究中使用的除草剂系列包括不同类别的化合物(羧酸,醚,酚,胺,酰胺和氨基甲酸酯),可确保多样化的化学结构空间。发现针对log KOC值而获得的基于偏最小二乘(PLS)和多元线性回归(MLR)的模型是鲁棒的,并且具有较高的预测能力。对不同取代基(键合到除草剂系列的通用结构部分)对log KOC值的影响进行了机械解释,得出了有趣的结果。这些发现使人们对引起土壤高/低吸附的化学基团(或结构特征)有了更深入的了解,这反过来又为结构优化提供了关键线索,从而生产出对环境友好且同样有效的除草剂。

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