Feng Sheng, Shi Jun, Parrott Neil, Hu Pei, Weber Cornelia, Martin-Facklam Meret, Saito Tomohisa, Peck Richard
Roche Pharma Research and Early Development, Roche Innovation Center Shanghai, Building 6, Lane 917, Ha Lei Road, Pudong, Shanghai, China.
Roche Pharma Research and Early Development, Roche Innovation Center Basel, Basel, Switzerland.
Clin Pharmacokinet. 2016 Jul;55(7):823-832. doi: 10.1007/s40262-015-0356-1.
We propose a strategy for studying ethnopharmacology by conducting sequential physiologically based pharmacokinetic (PBPK) prediction (a 'bottom-up' approach) and population pharmacokinetic (popPK) confirmation (a 'top-down' approach), or in reverse order, depending on whether the purpose is ethnic effect assessment for a new molecular entity under development or a tool for ethnic sensitivity prediction for a given pathway. The strategy is exemplified with bitopertin.
A PBPK model was built using Simcyp(®) to simulate the pharmacokinetics of bitopertin and to predict the ethnic sensitivity in clearance, given pharmacokinetic data in just one ethnicity. Subsequently, a popPK model was built using NONMEM(®) to assess the effect of ethnicity on clearance, using human data from multiple ethnic groups. A comparison was made to confirm the PBPK-based ethnic sensitivity prediction, using the results of the popPK analysis.
PBPK modelling predicted that the bitopertin geometric mean clearance values after 20 mg oral administration in Caucasians would be 1.32-fold and 1.27-fold higher than the values in Chinese and Japanese, respectively. The ratios of typical clearance in Caucasians to the values in Chinese and Japanese estimated by popPK analysis were 1.20 and 1.17, respectively. The popPK analysis results were similar to the PBPK modelling results.
As a general framework, we propose that PBPK modelling should be considered to predict ethnic sensitivity of pharmacokinetics prior to any human data and/or with data in only one ethnicity. In some cases, this will be sufficient to guide initial dose selection in different ethnicities. After clinical trials in different ethnicities, popPK analysis can be used to confirm ethnic differences and to support dose justification and labelling. PBPK modelling prediction and popPK analysis confirmation can complement each other to assess ethnic differences in pharmacokinetics at different drug development stages.
我们提出一种研究民族药理学的策略,即根据研究目的是评估正在研发的新分子实体的种族效应还是预测给定途径的种族敏感性,采用基于生理的药代动力学(PBPK)预测(“自下而上”方法)和群体药代动力学(popPK)验证(“自上而下”方法)的顺序进行研究,或者反之。以比特普汀为例对该策略进行了说明。
使用Simcyp(®)构建PBPK模型,以模拟比特普汀的药代动力学,并在仅有一种族的药代动力学数据的情况下预测清除率的种族敏感性。随后,使用NONMEM(®)构建popPK模型,利用来自多个种族群体的人体数据评估种族对清除率的影响。使用popPK分析结果进行比较,以确认基于PBPK的种族敏感性预测。
PBPK建模预测,口服20mg后,高加索人中比特普汀的几何平均清除率值分别比中国人和日本人高1.32倍和1.27倍。popPK分析估计的高加索人典型清除率与中国人和日本人的值之比分别为1.20和1.17。popPK分析结果与PBPK建模结果相似。
作为一个通用框架,我们建议在获得任何人体数据之前和/或仅使用一个种族的数据时,应考虑使用PBPK建模来预测药代动力学的种族敏感性。在某些情况下,这足以指导不同种族的初始剂量选择。在不同种族进行临床试验后,popPK分析可用于确认种族差异,并支持剂量调整和标签说明。PBPK建模预测和popPK分析验证可以相互补充,以评估不同药物研发阶段药代动力学的种族差异。