Slavsky Marina, Karve Aniruddha Sunil, Hariparsad Niresh
Drug Metabolism and Pharmacokinetics, Oncology R&D (Research & Development), AstraZeneca, 35 Gatehouse Park Drive, Boston, MA 02451, USA.
Pharmaceutics. 2025 Aug 21;17(8):1085. doi: 10.3390/pharmaceutics17081085.
Accurate assessment of CYP2C induction-mediated drug-drug interactions (DDIs) remains a challenge, despite the importance of CYP2C enzymes in drug metabolism. Limitations in available models and scarce clinical induction data have hampered quantitative preclinical DDI risk evaluation. In this study, the authors utilized an all-human hepatocyte triculture system to capture CYP2C induction using the perpetrators rifampicin, efavirenz, carbamazepine, and apalutamide. In vitro induction parameters were quantified by measuring changes in both mRNA and enzyme activities for CYP2C8, CYP2C9, and CYP2C19. These induction parameters, along with CYP-specific intrinsic clearance (CL) for the victim compounds, were incorporated into a physiologically based pharmacokinetic (PBPK) model, and pharmacokinetics (PK) of known CYP2C substrates were predicted with and without co-administration of perpetrator compounds using clinical dosing regimens. The results were quantitatively compared with the currently utilized mechanistic static modeling (MSM) approach and the reported clinical DDI outcomes. By incorporating the measured f of CYP2C substrates into PBPK modeling, we observed a lower propensity to over- or underpredict the exposure of these substrates as victims of CYP2C induction-based DDIs when co-administered with known perpetrators, which resulted in an excellent correlation to observed clinical outcomes. The MSM approach predicted the CYP3A4 induction-based DDI risk accurately but could not capture CYP2C induction with similar precision. Overall, this is the first study that demonstrates the utility of PBPK modeling as a complementary approach to MSM for CYP2C induction-based DDI risk assessment.
尽管CYP2C酶在药物代谢中具有重要作用,但准确评估CYP2C诱导介导的药物相互作用(DDIs)仍然是一项挑战。现有模型的局限性和稀缺的临床诱导数据阻碍了临床前DDI风险的定量评估。在本研究中,作者利用全人肝细胞三培养系统,使用利福平、依非韦伦、卡马西平和阿帕鲁胺等引发剂来捕获CYP2C诱导。通过测量CYP2C8、CYP2C9和CYP2C19的mRNA和酶活性变化来量化体外诱导参数。这些诱导参数,连同受害者化合物的CYP特异性内在清除率(CL),被纳入基于生理的药代动力学(PBPK)模型,并使用临床给药方案预测已知CYP2C底物在联合使用引发剂化合物和不联合使用引发剂化合物时的药代动力学(PK)。将结果与目前使用的机制静态建模(MSM)方法和报告的临床DDI结果进行定量比较。通过将测量的CYP2C底物的f纳入PBPK建模,我们观察到在与已知引发剂联合使用时,作为基于CYP2C诱导的DDIs受害者的这些底物的暴露被高估或低估的可能性较低,这导致与观察到的临床结果具有极好的相关性。MSM方法准确地预测了基于CYP3A4诱导的DDI风险,但不能以类似的精度捕获CYP2C诱导。总体而言,这是第一项证明PBPK建模作为MSM的补充方法用于基于CYP2C诱导的DDI风险评估的实用性的研究。