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基于生理的药物相互作用代谢预测模型:酮康唑或维拉帕米合用两种细胞色素 P450 3A4 底物。

Predictions of metabolic drug-drug interactions using physiologically based modelling: Two cytochrome P450 3A4 substrates coadministered with ketoconazole or verapamil.

机构信息

Technologie Servier, Orléans, France.

出版信息

Clin Pharmacokinet. 2010 Apr;49(4):239-58. doi: 10.2165/11318130-000000000-00000.

Abstract

Nowadays, evaluation of potential risk of metabolic drug-drug interactions (mDDIs) is of high importance within the pharmaceutical industry, in order to improve safety and reduce the attrition rate of new drugs. Accurate and early prediction of mDDIs has become essential for drug research and development, and in vitro experiments designed to evaluate potential mDDIs are systematically included in the drug development plan prior to clinical assessment. The aim of this study was to illustrate the value and limitations of the classical and new approaches available to predict risks of DDIs in the research and development processes. The interaction of cytochrome P450 (CYP) 3A4 inhibitors (ketoconazole and verapamil) with midazolam was predicted using the inhibitor concentration/inhibition constant ([I]/K(i)) approach, the static approach with added variability (Simcyp(R)), and whole-body physiologically based pharmacokinetic (WB-PBPK) modelling (acslXtreme(R)). Then an in-house reference drug was used to challenge the different approaches based on the midazolam experience. Predicted values (pharmacokinetic parameters, the area under the plasma concentration-time curve [AUC] ratio and plasma concentrations) were compared with observed values obtained after intravenous and oral administration in order to assess the accuracy of the prediction methods. With the [I]/K(i) approach, the interaction risk was always overpredicted for the midazolam substrate, regardless of its route of administration and the coadministered inhibitor. However, the predictions were always satisfactory (within 2-fold) for the reference drug. For the Simcyp(R) calculations, two of the three interaction results for midazolam were overpredicted, both when midazolam was given orally, whereas the prediction obtained when midazolam was administered intravenously was satisfactory. For the reference drug, all predictions could be considered satisfactory. For the WB-PBPK approach, all predictions were satisfactory, regardless of the substrate, route of administration, dose and coadministered inhibitor. DDI risk predictions are performed throughout the research and development processes and are now fully integrated into decision-making processes. The regulatory approach is useful to provide alerts, even at a very early stage of drug development. The 'steady state' approach in Simcyp(R) improves the prediction by using physiological knowledge and mechanistic assumptions. The DDI predictions are very useful, as they provide a range of AUC ratios that include individuals at the extremes of the population, in addition to the 'average tendency'. Finally, the WB-PBPK approach improves the predictions by simulating the concentration-time profiles and calculating the related pharmacokinetic parameters, taking into account the time of administration of each drug - but it requires a good understanding of the absorption, distribution, metabolism and excretion properties of the compound.

摘要

如今,在制药行业,评估潜在的代谢性药物相互作用(mDDI)风险非常重要,这有助于提高安全性并降低新药淘汰率。准确和早期预测 mDDI 对于药物研究和开发至关重要,并且在临床评估之前,设计用于评估潜在 mDDI 的体外实验系统地纳入药物开发计划中。本研究旨在说明可用于预测研究和开发过程中 DDIs 风险的经典和新方法的价值和局限性。使用抑制剂浓度/抑制常数 ([I]/K(i)) 方法、具有附加变异性的静态方法(Simcyp(R))和全身基于生理学的药代动力学 (WB-PBPK) 建模 (acslXtreme(R)) 预测细胞色素 P450 (CYP) 3A4 抑制剂(酮康唑和维拉帕米)与咪达唑仑的相互作用。然后,使用内部参比药物根据咪达唑仑的经验来挑战不同的方法。比较预测值(药代动力学参数、血浆浓度-时间曲线下面积 [AUC] 比值和血浆浓度)与静脉和口服给药后获得的观察值,以评估预测方法的准确性。对于咪达唑仑底物,无论其给药途径和合用的抑制剂如何,[I]/K(i) 方法的相互作用风险总是过高预测。然而,对于参比药物,预测总是令人满意(在 2 倍以内)。对于 Simcyp(R) 计算,咪达唑仑的三个相互作用结果中有两个被过高预测,这两种情况都是口服给予咪达唑仑时,而静脉给予咪达唑仑时的预测是令人满意的。对于参比药物,所有预测都可以认为是令人满意的。对于 WB-PBPK 方法,无论底物、给药途径、剂量和合用的抑制剂如何,所有预测都是令人满意的。DDI 风险预测在整个研究和开发过程中进行,并且现在已完全纳入决策过程。监管方法有助于提供警报,即使在药物开发的早期阶段也是如此。Simcyp(R) 中的“稳态”方法通过使用生理知识和机制假设来改善预测。DDI 预测非常有用,因为它们提供了包括人群极端个体在内的 AUC 比值范围,以及“平均趋势”。最后,WB-PBPK 方法通过模拟浓度-时间曲线并计算相关药代动力学参数来改善预测,同时考虑到每种药物的给药时间 - 但它需要对化合物的吸收、分布、代谢和排泄特性有很好的了解。

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