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应用生理药代动力学(PBPK)模型预测药物-食物相互作用:行业视角。

Use of Physiologically Based Pharmacokinetic (PBPK) Modeling for Predicting Drug-Food Interactions: an Industry Perspective.

机构信息

DMPK and Translational Modeling, AbbVie Inc., North Chicago, Illinois, USA.

Global DMPK, Takeda Pharmaceutical Co., Ltd., San Diego, California, USA.

出版信息

AAPS J. 2020 Sep 27;22(6):123. doi: 10.1208/s12248-020-00508-2.

Abstract

The effect of food on pharmacokinetic properties of drugs is a commonly observed occurrence affecting about 40% of orally administered drugs. Within the pharmaceutical industry, significant resources are invested to predict and characterize a clinically relevant food effect. Here, the predictive performance of physiologically based pharmacokinetic (PBPK) food effect models was assessed via de novo mechanistic absorption models for 30 compounds using controlled, pre-defined in vitro, and modeling methodology. Compounds for which absorption was known to be limited by intestinal transporters were excluded in this analysis. A decision tree for model verification and optimization was followed, leading to high, moderate, or low food effect prediction confidence. High (within 0.8- to 1.25-fold) to moderate confidence (within 0.5- to 2-fold) was achieved for most of the compounds (15 and 8, respectively). While for 7 compounds, prediction confidence was found to be low (> 2-fold). There was no clear difference in prediction success for positive or negative food effects and no clear relationship to the BCS category of tested drug molecules. However, an association could be demonstrated when the food effect was mainly related to changes in the gastrointestinal luminal fluids or physiology, including fluid volume, motility, pH, micellar entrapment, and bile salts. Considering these findings, it is recommended that appropriately verified mechanistic PBPK modeling can be leveraged with high to moderate confidence as a key approach to predicting potential food effect, especially related to mechanisms highlighted here.

摘要

食物对药物药代动力学性质的影响是一种常见的现象,约影响 40%的口服药物。在制药行业,投入了大量资源来预测和表征具有临床相关性的食物效应。在这里,通过使用受控的、预先定义的体外和建模方法,对 30 种化合物的基于生理学的药代动力学(PBPK)食物效应模型的预测性能进行了评估。在这项分析中,排除了吸收已知受到肠道转运体限制的化合物。随后遵循了模型验证和优化的决策树,导致高、中或低的食物效应预测置信度。对于大多数化合物(分别为 15 种和 8 种),实现了高(0.8 至 1.25 倍)到中(0.5 至 2 倍)置信度的预测。然而,对于 7 种化合物,预测置信度被认为较低(>2 倍)。阳性或阴性食物效应的预测成功率没有明显差异,也与测试药物分子的 BCS 类别没有明显关系。然而,当食物效应主要与胃肠道腔液或生理学的变化有关时,包括液体体积、运动、pH 值、胶束捕获和胆汁盐,可以证明存在关联。考虑到这些发现,建议高到中等置信度的经过适当验证的机制性 PBPK 建模可以作为预测潜在食物效应的关键方法,特别是与这里强调的机制相关的效应。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2da1/7520419/10eefe77c18e/12248_2020_508_Fig1_HTML.jpg

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