Development and Verification of a Full Physiologically Based Pharmacokinetic Model for Sublingual Buprenorphine in Healthy Adult Volunteers that Accounts for Nonlinear Bioavailability.

IF 4.4 3区 医学 Q1 PHARMACOLOGY & PHARMACY Drug Metabolism and Disposition Pub Date : 2024-07-16 DOI:10.1124/dmd.124.001643
Matthijs W van Hoogdalem, Ryota Tanaka, Trevor N Johnson, Alexander A Vinks, Tomoyuki Mizuno
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Abstract

Sublingual buprenorphine is used for opioid use disorder and neonatal opioid withdrawal syndrome. The study aimed to develop a full physiologically based pharmacokinetic (PBPK) model that can adequately describe dose- and formulation-dependent bioavailability of buprenorphine. Simcyp (v21.0) was used for model construction. Four linear regression models (i.e., untransformed or log transformed for dose or proportion sublingually absorbed) were explored to describe sublingual absorption of buprenorphine across dose. Published clinical trial data not used in model development were used for verification. The PBPK model's predictive performance was deemed adequate if the geometric means of ratios between predicted and observed (P/O) area under the curve (AUC), peak concentration (Cmax), and time to reach Cmax (Tmax) fell within the 1.25-fold prediction error range. Sublingual buprenorphine absorption was best described by a regression model with logarithmically transformed dose. By integrating this nonlinear absorption profile, the PBPK model adequately predicted buprenorphine pharmacokinetics (PK) following administration of sublingual tablets and solution across a dose range of 2-32 mg, with geometric mean (95% confidence interval) P/O ratios for AUC and Cmax equaling 0.99 (0.86-1.12) and 1.24 (1.09-1.40), respectively, and median (5th to 95th percentile) for Tmax equaling 1.11 (0.69-1.57). A verified PBPK model was developed that adequately predicts dose- and formulation-dependent buprenorphine PK following sublingual administration. SIGNIFICANCE STATEMENT: The physiologically based pharmacokinetic (PBPK) model developed in this study is the first to adequately predict dose- and formulation-dependent sublingual buprenorphine pharmacokinetics. Accurate prediction was facilitated by the incorporation of a novel nonlinear absorption model. The developed model will serve as the foundation for maternal-fetal PBPK modeling to predict maternal and fetal buprenorphine exposures to optimize buprenorphine treatment for neonatal opioid withdrawal syndrome.

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开发并验证了健康成年志愿者舌下含服丁丙诺啡的完整生理药代动力学模型,该模型考虑了非线性生物利用度。
丁丙诺啡舌下含服可用于治疗阿片类药物使用障碍和新生儿阿片类药物戒断综合征(NOWS)。该研究旨在开发一个完整的基于生理学的药代动力学(PBPK)模型,该模型可充分描述丁丙诺啡的生物利用度与剂量和制剂有关。模型的构建使用了 Simcyp(v21.0)。研究人员探索了四种线性回归模型(即剂量或舌下吸收比例未经转换或对数转换),以描述不同剂量下丁丙诺啡的舌下吸收情况。模型开发过程中未使用的已发表临床试验数据被用于验证。如果预测值与观察值之比(P/O 比值)、曲线下面积(AUC)、峰值浓度(Cmax)和达到 Cmax 的时间(Tmax)的几何平均数在 1.25 倍的预测误差范围内,则认为 PBPK 模型的预测性能是充分的。舌下丁丙诺啡的吸收用剂量对数变换的回归模型来描述最为恰当。通过整合这一非线性吸收曲线,PBPK 模型可充分预测舌下含服片剂和溶液后 2-32 毫克剂量范围内的丁丙诺啡药代动力学(PK),AUC 和 Cmax 的几何平均(95% 置信区间)P/O 比分别为 0.99(0.86-1.12)和 1.24(1.09-1.40),Tmax 的中位数(第 5 到第 95 百分位数)为 1.11(0.69-1.57)。经过验证的 PBPK 模型可以充分预测舌下给药后与剂量和制剂有关的丁丙诺啡 PK。意义声明 本研究建立的 PBPK 模型是首个能够充分预测舌下含服丁丙诺啡的剂量和制剂依赖性药代动力学的模型。新颖的非线性吸收模型为准确预测提供了便利。所开发的模型将作为胎儿和母体 PBPK 模型的基础,用于预测母体和胎儿的丁丙诺啡暴露量,以优化新生儿阿片戒断综合征(NOWS)的丁丙诺啡治疗。
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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