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首页> 外文期刊>Drug Metabolism and Disposition: The Biological Fate of Chemicals >A combined model for predicting CYP3A4 clinical net drug-drug interaction based on CYP3A4 inhibition, inactivation, and induction determined in vitro.
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A combined model for predicting CYP3A4 clinical net drug-drug interaction based on CYP3A4 inhibition, inactivation, and induction determined in vitro.

机译:一种基于CYP3A4抑制,失活和诱导的体外预测CYP3A4临床净药物相互作用的组合模型。

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Although approaches to the prediction of drug-drug interactions (DDIs) arising via time-dependent inactivation have recently been developed, such approaches do not account for simple competitive inhibition or induction. Accordingly, these approaches do not provide accurate predictions of DDIs arising from simple competitive inhibition (e.g., ketoconazole) or induction of cytochromes P450 (e.g., phenytoin). In addition, methods that focus upon a single interaction mechanism are likely to yield misleading predictions in the face of mixed mechanisms (e.g., ritonavir). As such, we have developed a more comprehensive mathematical model that accounts for the simultaneous influences of competitive inhibition, time-dependent inactivation, and induction of CYP3A in both the liver and intestine to provide a net drug-drug interaction prediction in terms of area under the concentration-time curve ratio. This model provides a framework by which readily obtained in vitro values for competitive inhibition, time-dependent inactivation and induction for the precipitant compound as well as literature values for f(m) and F(G) for the object drug can be used to provide quantitative predictions of DDIs. Using this model, DDIs arising via inactivation (e.g., erythromycin) continue to be well predicted, whereas those arising via competitive inhibition (e.g., ketoconazole), induction (e.g., phenytoin), and mixed mechanisms (e.g., ritonavir) are also predicted within the ranges reported in the clinic. This comprehensive model quantitatively predicts clinical observations with reasonable accuracy and can be a valuable tool to evaluate candidate drugs and rationalize clinical DDIs.
机译:尽管最近已经开发了预测通过时间依赖性失活产生的药物相互作用的方法,但是这些方法并不能说明简单的竞争性抑制或诱导作用。因此,这些方法不能提供由简单的竞争性抑制(例如,酮康唑)或细胞色素P450(例如,苯妥英)的诱导产生的DDI的准确预测。另外,针对单一相互作用机制的方法在面对混合机制(例如利托那韦)时可能会产生误导性的预测。因此,我们开发了一种更全面的数学模型,该模型解释了肝脏和肠道中竞争性抑制,时间依赖性灭活和CYP3A诱导的同时影响,从而提供了一个净药物-药物相互作用预测面积浓度-时间曲线比率。该模型提供了一个框架,通过该框架可轻松获得沉淀化合物的竞争性抑制,时间依赖性灭活和诱导的体外值,以及目标药物的f(m)和F(G)的文献值,以提供DDI的定量预测。使用这种模型,通过失活(例如红霉素)产生的DDIs仍然得到很好的预测,而通过竞争性抑制(例如酮康唑),诱导(例如苯妥英)和混合机制(例如利托那韦)产生的DDI也被预测为诊所报告的范围。该综合模型以合理的准确性定量预测临床观察结果,并且可以作为评估候选药物和合理化临床DDI的有价值的工具。

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