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Development of QSAR Model for Subchronic Inhalation Toxicity Using Random Forest Regression Method

机译:随机森林回归方法开发副回归毒性的QSAR模型

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Subchronic inhalation toxicity assessment is mainly used to evaluate both workers and occupational risk. Since the assessment requires repeated experiment of chemical exposure to model animals, this type of studies is laborious and expensive. Computational methods for estimating toxicity play an increasingly important role in assessing toxicity of chemicals. They not only predict toxicity of chemicals but can also analyze molecular features of a chemical causing toxic effect. Here we present a computational model to predict the subchronic inhalation toxicity. We retrieved repeated dose inhalation toxicity information and chemicals from OECD eChemPortal website and compile 143 chemical compounds with NOAEC (No Observed Adverse Effect Concentration) values. The random forest regression approach has been applied to learn inhalation toxicity data using a number of molecular descriptors, such as physicochemical properties and fingerprints. Recursive feature selection with nested cross‐validation was applied to efficiently select essential molecular features. In results, we successfully obtained a model performing with r 2ext = 0.70 and RMSEext = 0.74 for external set.
机译:次级吸入毒性评估主要用于评估工人和职业风险。由于评估需要对模型动物进行化学暴露的重复试验,因此这种类型的研究是费力且昂贵的。估计毒性的计算方法在评估化学品的毒性方面发挥着越来越重要的作用。它们不仅预测化学品的毒性,还可以分析化学物质的分子特征,导致毒性效果。在这里,我们提出了一种计算模型来预测次级调整吸入毒性。从经合组织的Echemportal网站中检索重复的剂量吸入毒性信息和化学品,并使用Noaec(无观察到的不良浓度)值编译143种化合物。随机森林回归方法应用于使用许多分子描述符进行吸入毒性数据,例如物理化学性质和指纹。应用具有嵌套交叉验证的递归特征选择以有效地选择基本的分子特征。在结果中,我们成功获得了使用R 2-10 = 0.70和RMSeext = 0.74进行的模型进行外部集合。

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