Shou Magang, Hayashi Mike, Pan Yvonne, Xu Yang, Morrissey Kari, Xu Lilly, Skiles Gary L
Department of Pharmacokinetics and Drug Metabolism, 30E-2-B, Amgen, Inc., One Amgen Center Drive, Thousand Oaks, CA 91320-1799, USA.
Drug Metab Dispos. 2008 Nov;36(11):2355-70. doi: 10.1124/dmd.108.020602. Epub 2008 Jul 31.
CYP3A4 induction is not generally considered to be a concern for safety; however, serious therapeutic failures can occur with drugs whose exposure is lower as a result of more rapid metabolic clearance due to induction. Despite the potential therapeutic consequences of induction, little progress has been made in quantitative predictions of CYP3A4 induction-mediated drug-drug interactions (DDIs) from in vitro data. In the present study, predictive models have been developed to facilitate extrapolation of CYP3A4 induction measured in vitro to human clinical DDIs. The following parameters were incorporated into the DDI predictions: 1) EC(50) and E(max) of CYP3A4 induction in primary hepatocytes; 2) fractions unbound of the inducers in human plasma (f(u, p)) and hepatocytes (f(u, hept)); 3) relevant clinical in vivo concentrations of the inducers ([Ind](max, ss)); and 4) fractions of the victim drugs cleared by CYP3A4 (f(m, CYP3A4)). The values for [Ind](max, ss) and f(m, CYP3A4) were obtained from clinical reports of CYP3A4 induction and inhibition, respectively. Exposure differences of the affected drugs in the presence and absence of the six individual inducers (bosentan, carbamazepine, dexamethasone, efavirenz, phenobarbital, and rifampicin) were predicted from the in vitro data and then correlated with those reported clinically (n = 103). The best correlation was observed (R(2) = 0.624 and 0.578 from two hepatocyte donors) when f(u, p) and f(u, hept) were included in the predictions. Factors that could cause over- or underpredictions (potential outliers) of the DDIs were also analyzed. Collectively, these predictive models could add value to the assessment of risks associated with CYP3A4 induction-based DDIs by enabling their determination in the early stages of drug development.
CYP3A4诱导一般不被视为安全问题;然而,对于那些因诱导导致代谢清除加快而暴露量降低的药物,可能会出现严重的治疗失败情况。尽管诱导存在潜在的治疗后果,但从体外数据对CYP3A4诱导介导的药物-药物相互作用(DDIs)进行定量预测方面进展甚微。在本研究中,已开发出预测模型,以促进将体外测量的CYP3A4诱导外推至人类临床DDIs。以下参数被纳入DDI预测:1)原代肝细胞中CYP3A4诱导的半数效应浓度(EC(50))和最大效应(E(max));2)诱导剂在人血浆(f(u, p))和肝细胞(f(u, hept))中的游离分数;3)诱导剂的相关临床体内浓度([Ind](max, ss));4)被CYP3A4清除的受影响药物的分数(f(m, CYP3A4))。[Ind](max, ss)和f(m, CYP3A4)的值分别从CYP3A4诱导和抑制的临床报告中获得。根据体外数据预测了六种单独诱导剂(波生坦、卡马西平、地塞米松、依非韦伦、苯巴比妥和利福平)存在和不存在时受影响药物的暴露差异,然后将其与临床报告的差异进行关联(n = 103)。当预测中纳入f(u, p)和f(u, hept)时,观察到最佳相关性(来自两名肝细胞供体的R(2)分别为0.624和0.578)。还分析了可能导致DDIs预测过高或过低(潜在异常值)的因素。总体而言,这些预测模型通过在药物开发早期阶段确定基于CYP3A4诱导的DDIs相关风险,可为风险评估增添价值。