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首页> 外文期刊>Journal of Medicinal Chemistry >Combining in vitro and in vivo pharmacokinetic data for prediction of hepatic drug clearance in humans by artificial neural networks and multivariate statistical techniques.
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Combining in vitro and in vivo pharmacokinetic data for prediction of hepatic drug clearance in humans by artificial neural networks and multivariate statistical techniques.

机译:结合体外和体内药代动力学数据,通过人工神经网络和多元统计技术预测人类肝药物清除率。

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摘要

Several statistical regression models and artificial neural networks were used to predict the hepatic drug clearance in humans from in vitro (hepatocyte) and in vivo pharmacokinetic data and to identify the most predictive models for this purpose. Cross-validation was performed to assess prediction accuracy. It turned out that human hepatocyte data was the best predictor, followed by rat hepatocyte data. Dog hepatocyte data and dog and rat in vivo data appear to be uncorrelated with human in vivo clearance and did not significantly contribute to the prediction models. Considering the present evaluation, the most cost-effective and most accurate approach to achieve satisfactory predictions in human is a combination of in vitro clearances on human and rat hepatocytes. Such information is of considerable value to speed up drug discovery. This study also showed some of the limitations of the approach related to the size of the database used in the present evaluation.
机译:几种统计回归模型和人工神经网络被用来从体外(肝细胞)和体内药代动力学数据预测人类的肝药物清除率,并为此目的确定最具预测性的模型。进行交叉验证以评估预测准确性。事实证明,人类肝细胞数据是最好的预测指标,其次是大鼠肝细胞数据。狗肝细胞数据以及狗和大鼠体内数据似乎与人体内清除率无关,并且对预测模型没有显着贡献。考虑到目前的评估,在人类中获得令人满意的预测的最具成本效益和最准确的方法是结合人类和大鼠肝细胞的体外清除率。此类信息对于加速药物发现具有重要价值。这项研究还表明,该方法的某些局限性与本评估中使用的数据库大小有关。

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