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Assessing Applicability Domains of Toxicological QSARs: Definition, Confidence in Predicted Values, and the Role of Mechanisms of Action

机译:评估毒理学QSAR的适用范围:定义,对预测值的信心以及作用机制的作用

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There are many issues relating to the use of Quantitative Structure - Activity Relationships (QSARs) to make predictions for regulatory purposes. Among those issues, characterization of models and the development of suitable tools to determine applicability domains rank as the more important. With regard to aquatic toxicology, QSARs for acute effects (e.g., IGC_(50)-1) often take the form of a hydrophobic [i.e., Logarithm of the 1-Octanol/Water Partition Coefficient (log P)]-electrophilic [e.g., Maximum Acceptor Superdelocalizability (A_(max))] -dependent, regression-based model. In this study, the applicability domain of a model for the toxicity of aromatic compounds to Tetrahymena pyriformis [log (IGC_(50)-1) = 0.545(0.015) log P+16.2(0.62) A_(max)-5.91(0.20); n = 384, r2 (adj) = 0.859, r~2(pred) = 0.856, s = 0.275, s=1163, Pr>F= 0.0001] was assessed. The structural and physicochemical domains of the model were characterized using two test sets of toxicity data (one prescreened to be within the descriptor space and structural domain of the training set and the other to be outside the structural domain of the training set). For test set compounds inside the domain of the model, there was no relationship between absolute residue values for predictions and hydrophobicity; however, there was a linear relationship between absolute residue values and electrophilicity. It was concluded that predictivity in the region of the domain associated with higher electrophilicity, greater potency, and derivatives containing both halo- and nitro-groups is poorer than elsewhere in the domain, and therefore less confidence should be given to those values. Compounds in this region of the domain of the model are associated with the soft-, or pro-electrophilic mechanisms of toxic action. For the second test set, i.e., derivatives outside the structural domain, an examination of absolute residue values revealed that the observed toxicity is typically in excess of that predicted, especially for compounds in the structural space(s) of well-known electrophilic mechanisms of reactive toxicity. Caution is therefore urged in using statistical approaches to account for, and apply confidence to predictions from the applicability domain. An appreciation of the mechanism of toxicity appears to be critical to the determination of the most likely applicability domain.
机译:有关使用定量结构-活动关系(QSAR)进行监管目的的预测存在许多问题。在这些问题中,模型的表征和确定适用性域的合适工具的开发更为重要。关于水生毒理学,用于急性效应的QSAR(例如IGC_(50)-1)通常采取疏水性[即1-辛醇/水分配系数的对数(log P)]-亲电性[例如,最大受体超可局部化性(A_(max))]依赖的基于回归的模型。在这项研究中,芳香族化合物对梨形四膜虫的毒性模型的适用范围[log(IGC_(50)-1)= 0.545(0.015)log P + 16.2(0.62)A_(max)-5.91(0.20) ;评估n = 384,r 2(adj)= 0.859,r〜2(pred)= 0.856,s = 0.275,s = 1163,Pr> F = 0.0001]。使用两个毒性数据测试集来表征模型的结构和物理化学域(一个被预先筛选在训练集的描述符空间和结构域内,另一个被筛选在训练集的结构域外)。对于模型域内的测试化合物,预测的绝对残基值和疏水性之间没有关系。但是,绝对残基值和亲电性之间存在线性关系。得出的结论是,与更高的亲电子性,更大的效能以及同时包含卤基和硝基的衍生物相关的区域区域的可预测性比该区域中的其他区域差,因此对这些值的置信度较低。在模型域的该区域中的化合物与毒性作用的软或亲电子机制相关。对于第二个测试集,即结构域外的衍生物,对绝对残基值的检查表明,观察到的毒性通常超过了预期的毒性,特别是对于结构中已知的亲电子机理的化合物而言反应毒性。因此,在使用统计方法来考虑适用性域的预测并将置信度应用于预测方面时,应谨慎行事。对毒性机理的了解对于确定最可能的适用范围至关重要。

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