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Statistically validated QSARs, based on theoretical descriptors, for modeling aquatic toxicity of organic chemicals in Pimephales promelas (fathead minnow)

机译:基于理论描述符的统计验证的QSAR,用于Pimephales Promelas(Fathead Minnow)的有机化学物质的水生毒性模拟

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摘要

The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects of chemicals plays an important role in ecotoxicology. (LC50)(96h) in Pimephales promelas (Duluth database) is widely modeled as an aquatic toxicity end-point. The object of this study was to compare different molecular descriptors in the development of new statistically validated QSAR models to predict the aquatic toxicity of chemicals classified according to their MOA and in a unique general model. The applied multiple linear regression approach (ordinary least squares) is based on theoretical molecular descriptor variety (1D, 2D, and 3D, from DRAGON package, and some calculated logP). The best combination of modeling descriptors was selected by the Genetic Algorithm-Variable Subset Selection procedure. The robustness and the predictive performance of the proposed models was verified using both internal (cross-validation by LOO, bootstrap, Y-scrambling) and external statistical validations (by splitting the original data set into training and validation sets by Kohonen-artificial neural networks (K-ANN)). The model applicability domain (AD) was checked by the leverage approach to verify prediction reliability.
机译:在评估化学品的潜在负面影响时,使用定量结构 - 活性关系在生态毒理学中起重要作用。 (LC50)(96H)在Pimephales Promelas(Duluth数据库)被广泛建模为水生毒性终点。本研究的目的是比较新的统计验证的QSAR模型的不同分子描述符,以预测根据其MOA和独特的综合模型进行分类的化学品的水生毒性。所施加的多个线性回归方法(普通最小二乘)基于理论分子描述符品种(1D,2D和3D,来自Dragon Package和一些计算的LOGP)。通过遗传算法 - 可变子集选择过程选择建模描述符的最佳组合。建议模型的稳健性和预测性能使用内部(通过LOO,Bootstrap,Y扰扰)和外部统计验证(通过将原始数据分成Kohonen - 人工神经网络划分为培训和验证集(k-Ann))。通过杠杆方法检查模型适用性域(AD)以验证预测可靠性。

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