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首页> 外文期刊>Journal of Hazardous Materials >Use of a large dataset to develop new models for estimating the sorption of active pharmaceutical ingredients in soils and sediments
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Use of a large dataset to develop new models for estimating the sorption of active pharmaceutical ingredients in soils and sediments

机译:使用大型数据集以开发用于估算土壤和沉积物中活性药物成分的吸附的新模型

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摘要

Information on the sorption of active pharmaceutical ingredients (APIs) in soils and sediments is needed for assessing the environmental risks of these substances yet these data are unavailable for many APIs in use. Predictive models for estimating sorption could provide a solution. The performance of existing models is, however, often poor and most models do not account for the effects of soil/sediment properties which are known to significantly affect API sorption. Therefore, here, we use a high-quality dataset on the sorption behavior of 54 APIs in 13 soils and sediments to develop new models for estimating sorption coefficients for APIs in soils and sediments using three machine learning approaches (artificial neural network, random forest and support vector machine) and linear regression. A random forest-based model, with chemical and solid descriptors as the input, was the best performing model. Evaluation of this model using an independent sorption dataset from the literature showed that the model was able to predict sorption coefficients of 90% of the test set to within a factor of 10 of the experimental values. This new model could be invaluable in assessing the sorption behavior of molecules that have yet to be tested and in landscape-level risk assessments.
机译:有关土壤和沉积物中活性药物成分(API)的吸附的信息,用于评估这些物质的环境风险,但这些数据对于许多使用的API不可用。用于估算吸附的预测模型可以提供解决方案。然而,现有模型的性能通常差,大多数模型不考虑已知的土壤/沉积物特性的影响,这是显着影响API吸附的影响。因此,在这里,我们使用高质量的数据集在13个土壤中的54个API的吸附行为和沉积物中的吸附行为,以开发用于使用三种机器学习方法(人工神经网络,随机森林和随机森林支持向量机)和线性回归。随机林的基于森林的模型,用化学和坚固的描述符作为输入,是表现最好的模型。使用来自文献的独立吸附数据集对该模型的评估表明,该模型能够将90%的测试系数预测到实验值10的10%的试验中。这种新模型可在评估尚未测试的分子的吸附行为和景观水平风险评估中具有无价性。

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