首页> 外文期刊>Environmental Science & Technology >Consensus kNN QSAR: A Versatile Method for Predicting the Estrogenic Activity of Organic Compounds In Silico, A Comparative Study with Five Estrogen Receptors and a Large, Diverse Set of Ligands
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Consensus kNN QSAR: A Versatile Method for Predicting the Estrogenic Activity of Organic Compounds In Silico, A Comparative Study with Five Estrogen Receptors and a Large, Diverse Set of Ligands

机译:kNN QSAR共识:一种预测有机硅中有机化合物雌激素活性的多功能方法,具有五个雌激素受体和一大批不同配体的比较研究

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Quantitative structure-activity relationships (QSARs) have proved increasingly useful for predicting the biological activities of molecules (e.g., their binding affinities to different receptors) and can be used in environmental chemistry as a preliminary tool for screening the activities of untested molecules, producing valuable information on which compounds should be tested more thoroughly with experimental affinity assays or in animals. The predictive ability of the consensus kNN QSAR method is corroborated here using a diverse set of 245 compounds, which have been assayed fortheir relative binding affinities to the estrogen receptor of four species: human (ERα and ERβ), calf, mouse, and rat. Leave-one-out cross-validation (LOO-CV) and y-randomization tests were applied to the QSAR models for internal validation, and separate training and test sets were used for external validation. The internal predictive abilities of the consensus models for all five data sets were convincing, with cross-validated correlation coefficients (LOO-CV q{sup}2 values) varying from 0.69 (human ERβ data) to 0.79 (human Erα data). The external predictive abilities were also encouraging, as the predictive r{sup}2 scores (pr-r{sup}2 values) varied from 0.62 (human Erβ data) to 0.77 (calf and mouse data). The results indicate that consensus kNN QSAR is a feasible method for rapid screening of the estrogenic activity of organic compounds.
机译:定量构效关系(QSAR)已被证明对预测分子的生物学活性(例如,它们与不同受体的结合亲和力)越来越有用,并且可以在环境化学中用作筛选未经测试的分子活性的初步工具,从而产生有价值的有关应该通过实验亲和力分析或在动物中更彻底地测试哪些化合物的信息。此处使用多种245种化合物证实了共有kNN QSAR方法的预测能力,已对它们与四种物种(人(ERα和ERβ),小牛,小鼠和大鼠)的雌激素受体的相对结合亲和力进行了测定。将留一法交叉验证(LOO-CV)和y随机化测试应用于QSAR模型进行内部验证,并使用单独的训练和测试集进行外部验证。所有五个数据集的共识模型的内部预测能力令人信服,交叉验证的相关系数(LOO-CV q {sup} 2值)从0.69(人类ERβ数据)到0.79(人类Erα数据)不等。外部预测能力也令人鼓舞,因为预测性r {sup} 2得分(pr-r {sup} 2值)从0.62(人类Erβ数据)到0.77(小腿和小鼠数据)不等。结果表明,共识性kNN QSAR是一种快速筛选有机化合物雌激素活性的可行方法。

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