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首页> 外文期刊>Future medicinal chemistry >Computational tools and resources for metabolism-related property predictions. 2. Application to prediction of half-life time in human liver microsomes
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Computational tools and resources for metabolism-related property predictions. 2. Application to prediction of half-life time in human liver microsomes

机译:用于与代谢相关的特性预测的计算工具和资源。 2.在预测人肝微粒体半衰期中的应用

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Background: The most important factor affecting metabolic excretion of compounds from the body is their half-life time. This provides an indication of compound stability of, for example, drug molecules. We report on our efforts to develop QSAR models for metabolic stability of compounds, based on in vitro half-life assay data measured in human liver microsomes. Method: A variety of QSAR models generated using different statistical methods and descriptor sets implemented in both open-source and commercial programs (KNIME, GUSAR and StarDrop) were analyzed. The models obtained were compared using four different external validation sets from public and commercial data sources, including two smaller sets of in vivo half-life data in humans. Conclusion: In many cases, the accuracy of prediction achieved on one external test set did not correspond to the results achieved with another test set. The most predictive models were used for predicting the metabolic stability of compounds from the open NCI database, the results of which are publicly available on the NCI/CADD Group web server (http://cactus.nci.nih.gov).
机译:背景:影响化合物从体内代谢排泄的最重要因素是其半衰期。这提供了例如药物分子的化合物稳定性的指示。我们报告了基于在人肝微粒体中测得的体外半衰期测定数据,我们为开发化合物代谢稳定性的QSAR模型所做的努力。方法:分析了使用不同统计方法生成的各种QSAR模型和在开源和商业程序(KNIME,GUSAR和StarDrop)中实现的描述符集。使用来自公共和商业数据源的四个不同的外部验证集(包括两个较小的人类体内半衰期数据集)对获得的模型进行了比较。结论:在许多情况下,在一个外部测试集上获得的预测准确性与在另一个测试集上获得的结果不符。最具预测性的模型用于从开放的NCI数据库预测化合物的代谢稳定性,其结果可在NCI / CADD Group Web服务器(http://cactus.nci.nih.gov)上公开获得。

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