Drug Metabolism & Pharmacokinetics, Janssen Research & Development, LLC, San Diego, California, USA.
Drug Metabolism & Pharmacokinetics, Janssen Research & Development, LLC, Spring House, Pennsylvania, USA.
CPT Pharmacometrics Syst Pharmacol. 2022 Jan;11(1):55-67. doi: 10.1002/psp4.12733. Epub 2021 Nov 6.
As one of the key components in model-informed drug discovery and development, physiologically-based pharmacokinetic (PBPK) modeling linked with in vitro-to-in vivo extrapolation (IVIVE) is widely applied to quantitatively predict drug-drug interactions (DDIs) on drug-metabolizing enzymes and transporters. This study aimed to investigate an IVIVE for intestinal P-glycoprotein (Pgp, ABCB1)-mediated DDIs among three Pgp substrates, digoxin, dabigatran etexilate, and quinidine, and two Pgp inhibitors, itraconazole and verapamil, via PBPK modeling. For Pgp substrates, assuming unbound Michaelis-Menten constant (K ) to be intrinsic, in vitro-to-in vivo scaling factors for maximal Pgp-mediated efflux rate (J ) were optimized based on the clinically observed results without co-administration of Pgp inhibitors. For Pgp inhibitors, PBPK models utilized the reported in vitro values of Pgp inhibition constants (K ), 1.0 μM for itraconazole and 2.0 μM for verapamil. Overall, the PBPK modeling sufficiently described Pgp-mediated DDIs between these substrates and inhibitors with the prediction errors of less than or equal to ±25% in most cases, suggesting a reasonable IVIVE for Pgp kinetics in the clinical DDI results. The modeling results also suggest that Pgp kinetic parameters of both the substrates (K and J ) and the inhibitors (K ) are sensitive to Pgp-mediated DDIs, thus being key for successful DDI prediction. It would also be critical to incorporate appropriate unbound inhibitor concentrations at the site of action into PBPK models. The present results support a quantitative prediction of Pgp-mediated DDIs using in vitro parameters, which will significantly increase the value of in vitro studies to design and run clinical DDI studies safely and effectively.
作为模型指导药物发现和开发的关键组成部分之一,与体外到体内外推法(IVIVE)相关联的生理药物动力学(PBPK)建模广泛应用于定量预测药物代谢酶和转运体的药物-药物相互作用(DDI)。本研究旨在通过 PBPK 建模研究三种 P-糖蛋白(Pgp,ABCB1)底物地高辛、达比加群酯和奎尼丁,以及两种 Pgp 抑制剂伊曲康唑和维拉帕米之间的肠 Pgp 介导的 DDI 的 IVIVE。对于 Pgp 底物,假设未结合的米氏常数(K)为内在的,基于无 Pgp 抑制剂共给药的临床观察结果,优化了最大 Pgp 介导外排率(J)的体外到体内缩放因子。对于 Pgp 抑制剂,PBPK 模型利用了报道的 Pgp 抑制常数(K)的体外值,伊曲康唑为 1.0 μM,维拉帕米为 2.0 μM。总体而言,PBPK 模型充分描述了这些底物和抑制剂之间的 Pgp 介导的 DDI,在大多数情况下,预测误差小于或等于±25%,表明在临床 DDI 结果中 Pgp 动力学具有合理的 IVIVE。建模结果还表明,底物(K 和 J)和抑制剂(K)的 Pgp 动力学参数对 Pgp 介导的 DDI 敏感,因此是成功 DDI 预测的关键。在 PBPK 模型中纳入作用部位适当的未结合抑制剂浓度也将是至关重要的。本研究结果支持使用体外参数对 Pgp 介导的 DDI 进行定量预测,这将极大地提高体外研究的价值,以安全有效地设计和开展临床 DDI 研究。