Quantitative Prediction of Drug-Drug Interactions Caused by CYP3A Induction Using Endogenous Biomarker 4β-Hydroxycholesterol.

IF 4.4 3区 医学 Q1 PHARMACOLOGY & PHARMACY
Hiroaki Takubo, Toshio Taniguchi, Yukihiro Nomura
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引用次数: 0

Abstract

Evaluation of the CYP3A induction risk is important in early drug development stages. This study focused on 4β-hydroxycholesterol (4β-HC) as an endogenous biomarker of drug-drug interactions (DDIs) caused by CYP3A induction. We investigated a new approach using 4β-HC for quantitative prediction of DDIs caused by CYP3A induction based on the mechanistic static pharmacokinetic (MSPK) model. The induction ratio, i.e., the ratio of plasma 4β-HC or 4β-HC/cholesterol (4β-HC/C) with and without a coadministered CYP3A inducer, and the ratio of the area under the plasma concentration-time curve (AUCR), i.e., the ratio of the AUC of plasma CYP3A substrate drugs with and without a coadministered CYP3A inducer, were collected. The scaling factor (d) in the MSPK model was calculated from the induction ratio of 4β-HC or 4β-HC/C based on the systemic term in the MSPK model. The AUCR of 18 CYP3A substrates with and without coadministration of seven CYP3A inducers were then predicted by substituting the calculated d value into the MSPK model. This approach showed that approximately 84% of the predicted AUCR values were within a twofold range of the observed values, showing that this approach can be a good tool to quantitatively predict DDIs caused by CYP3A induction. SIGNIFICANCE STATEMENT: A concise approach to predict drug interactions with adequate accuracy is preferable in the early drug development stage. In this study, a new approach using 4β-hydroxycholesterol for quantitative prediction of drug-drug interactions caused by CYP3A induction was investigated. The predictability was verified using seven CYP3A inducers and 18 substrates.

利用内源性生物标记物 4β-hydroxycholesterol 定量预测由 CYP3A 诱导引起的药物间相互作用。
评估 CYP3A 诱导风险在早期药物开发阶段非常重要。本研究将 4β-hydroxycholesterol (4β-HC) 作为 CYP3A 诱导引起的药物间相互作用 (DDI) 的内源性生物标记物。我们基于机理静态药代动力学(MSPK)模型,研究了一种利用 4β-HC 定量预测 CYP3A 诱导所致 DDI 的新方法。收集了诱导比值,即血浆中 4β-HC 或 4β-HC/ 胆固醇(4β-HC/C)与未合用 CYP3A 诱导剂时的比值,以及血浆浓度-时间曲线下面积(AUCR)比值,即血浆中 CYP3A 底物药物与未合用 CYP3A 诱导剂时的 AUC 比值。根据 MSPK 模型中的系统项,从 4β-HC 或 4β-HC/C 的诱导比计算出 MSPK 模型中的比例因子 d。然后,将计算出的 d 值代入 MSPK 模型,预测了 18 种 CYP3A 底物在同时服用和不同时服用 7 种 CYP3A 诱导剂时的 AUCR。这种方法显示,约 84% 的预测 AUCR 值与观察值相差两倍,表明这种方法是定量预测 CYP3A 诱导 DDI 的良好工具。意义声明 在药物开发的早期阶段,最好采用一种简洁的方法来预测药物相互作用,并具有足够的准确性。本研究采用 4β-hydroxycholesterol 对 CYP3A 诱导的 DDI 进行了定量预测。使用 7 种 CYP3A 诱导剂和 18 种底物验证了该方法的可预测性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.50
自引率
12.80%
发文量
128
审稿时长
3 months
期刊介绍: An important reference for all pharmacology and toxicology departments, DMD is also a valuable resource for medicinal chemists involved in drug design and biochemists with an interest in drug metabolism, expression of drug metabolizing enzymes, and regulation of drug metabolizing enzyme gene expression. Articles provide experimental results from in vitro and in vivo systems that bring you significant and original information on metabolism and disposition of endogenous and exogenous compounds, including pharmacologic agents and environmental chemicals.
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