Physiologically Based Pharmacokinetic Model of OATP1B Substrates with a Nonlinear Mixed Effect Approach: Estimating Empirical In Vitro-to-In Vivo Scaling Factors.

IF 4.6 2区 医学 Q1 PHARMACOLOGY & PHARMACY
Clinical Pharmacokinetics Pub Date : 2024-08-01 Epub Date: 2024-08-19 DOI:10.1007/s40262-024-01408-w
Rui Li, Emi Kimoto, Yi-An Bi, David Tess, Manthena V S Varma
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引用次数: 0

Abstract

Background and objective: Physiologically based pharmacokinetic (PBPK) models are valuable for translating in vitro absorption, distribution, metabolism, and excretion (ADME) data to predict clinical pharmacokinetics, and can enable discovery and early clinical stages of pharmaceutical research. However, in predicting pharmacokinetics of organic anion transporting polypeptide (OATP) 1B substrates based on in vitro transport and metabolism data, PBPK models typically require additional empirical in vitro-to-in vivo scaling factors (ESFs) in order to accurately recapitulate observed clinical profiles. As model simulation is very sensitive to ESFs, a critical evaluation of ESF estimation is prudent. Previously studies have applied classic 'two-stage' and 'naïve pooled data' approaches in identifying a set of compound independent ESFs. However, the 'two-stage' approach has the parameter identification issue in separately fitting data for individual compounds, while the 'naïve pooled data' approach ignores interstudy variability, leading to potentially biased ESF estimates.

Methods: In this study, we have applied a nonlinear mixed-effect approach in estimating ESF of the PBPK model and incorporated additional data from 86 runs of in vitro uptake assay and 49 clinical studies of 12 training compounds in model development to further enhance the translation of in vitro data to predict the pharmacokinetics of OATP1B substrate drugs. To test predication accuracy of the model, a 'leave-one-out' analysis has been performed.

Results: The established model can reasonably describe the clinical observations, with both mean values and interstudy variabilities quantified for ESF and volume of distribution parameters. The mean estimates are largely consistent with values in the previous reports. The interstudy variabilities of these parameters are estimated to be at least 50% (as coefficient of variation). Most compounds can be reasonably predicted in the 'leave-one-out' analysis.

Conclusion: This study improves the confidence in predicting the pharmacokinetics of OATP1B substrates in individual studies of small sample sizes, and quantifies the variability associated with the prediction.

Abstract Image

采用非线性混合效应方法建立基于生理的 OATP1B 底物药代动力学模型:估算体外到体内的经验缩放因子。
背景和目的:基于生理学的药代动力学(PBPK)模型对于将体外吸收、分布、代谢和排泄(ADME)数据转化为临床药代动力学预测非常有价值,并能促进药物研究的发现和早期临床阶段。然而,在根据体外转运和代谢数据预测有机阴离子转运多肽(OATP)1B 底物的药代动力学时,PBPK 模型通常需要额外的经验体外-体内比例因子(ESF),才能准确再现临床观察到的特征。由于模型模拟对 ESF 非常敏感,因此需要对 ESF 估算进行严格评估。以往的研究采用经典的 "两阶段 "和 "原始数据池 "方法来确定一组独立于化合物的 ESF。然而,"两阶段 "方法在分别拟合单个化合物的数据时存在参数识别问题,而 "天真集合数据 "方法则忽略了研究间的变异性,导致 ESF 估计值可能存在偏差:在本研究中,我们采用非线性混合效应方法估算了 PBPK 模型的 ESF,并在模型开发过程中纳入了 12 个训练化合物的 86 次体外吸收测定和 49 次临床研究的额外数据,以进一步加强体外数据的转化,从而预测 OATP1B 底物药物的药代动力学。为了测试模型的预测准确性,我们进行了 "leave-one-out "分析:结果:已建立的模型可以合理地描述临床观察结果,并对 ESF 和分布容积参数的平均值和研究间变异性进行了量化。平均估计值与之前报告中的数值基本一致。据估计,这些参数的研究间变异性至少为 50%(变异系数)。大多数化合物都可以在 "撇除 "分析中得到合理预测:这项研究提高了在样本量较小的个别研究中预测 OATP1B 底物药代动力学的可信度,并量化了与预测相关的变异性。
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来源期刊
CiteScore
8.80
自引率
4.40%
发文量
86
审稿时长
6-12 weeks
期刊介绍: Clinical Pharmacokinetics promotes the continuing development of clinical pharmacokinetics and pharmacodynamics for the improvement of drug therapy, and for furthering postgraduate education in clinical pharmacology and therapeutics. Pharmacokinetics, the study of drug disposition in the body, is an integral part of drug development and rational use. Knowledge and application of pharmacokinetic principles leads to accelerated drug development, cost effective drug use and a reduced frequency of adverse effects and drug interactions.
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