基于生理学的药代动力学模型
药理学
药代动力学
药品
代理(哲学)
生化工程
计算机科学
化学
医学
工程类
认识论
哲学
作者
Kunal S. Taskar,Venkatesh Pilla Reddy,Howard Burt,Maria M. Posada,Manthena V. S. Varma,Ming Zheng,Mohammed Ullah,Arian Emami Riedmaier,Kenichi Umehara,Jan Snoeys,Masanori Nakakariya,Xiaoyan Chu,Maud Bénéton,Yuan Chen,Felix Huth,Rangaraj Narayanan,Dwaipayan Mukherjee,Vaishali Dixit,Yuichi Sugiyama,Sibylle Neuhoff
摘要
Physiologically‐based pharmacokinetic (PBPK) modeling has been extensively used to quantitatively translate in vitro data and evaluate temporal effects from drug–drug interactions (DDIs), arising due to reversible enzyme and transporter inhibition, irreversible time‐dependent inhibition, enzyme induction, and/or suppression. PBPK modeling has now gained reasonable acceptance with the regulatory authorities for the cytochrome‐P450‐mediated DDIs and is routinely used. However, the application of PBPK for transporter‐mediated DDIs (tDDI) in drug development is relatively uncommon. Because the predictive performance of PBPK models for tDDI is not well established, here, we represent and discuss examples of PBPK analyses included in regulatory submission (the US Food and Drug Administration (FDA), the European Medicines Agency (EMA), and the Pharmaceuticals and Medical Devices Agency (PMDA)) across various tDDIs. The goal of this collaborative effort (involving scientists representing 17 pharmaceutical companies in the Consortium and from academia) is to reflect on the use of current databases and models to address tDDIs. This challenges the common perceptions on applications of PBPK for tDDIs and further delves into the requirements to improve such PBPK predictions. This review provides a reflection on the current trends in PBPK modeling for tDDIs and provides a framework to promote continuous use, verification, and improvement in industrialization of the transporter PBPK modeling.
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