Development and Verification of a Physiologically Based Pharmacokinetic Model of Furmonertinib and Its Main Metabolite for Drug-Drug Interaction Predictions.

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Yali Wu, Helena Leonie Hanae Loer, Yifan Zhang, Dafang Zhong, Yong Jiang, Jie Hu, Uwe Fuhr, Thorsten Lehr, Xingxing Diao
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Abstract

Furmonertinib demonstrated potent efficacy as a newly developed tyrosine kinase inhibitor for the treatment of patients with epidermal growth factor receptor (EGFR) mutation-positive non-small cell lung cancer. In vitro research showed that furmonertinib is metabolized to its active metabolite AST5902 via the cytochrome P450 (CYP) enzyme CYP3A4. Furmonertinib is a strong CYP3A4 inducer, while the metabolite is a weaker CYP3A4 inducer. In clinical studies, nonlinear pharmacokinetics were observed during chronic dosing. The apparent clearance showed time- and dose-dependent increases. In this evaluation, a combination of in vitro data using radiolabeled compounds, clinical pharmacokinetic data, and drug-drug interaction (DDI) data of furmonertinib in oncology patients and/or in healthy subjects was used to develop a physiologically based pharmacokinetic (PBPK) model. The model was built in PK-Sim Version 11 using a total of 44 concentration-time profiles of furmonertinib and its metabolite AST5902. Suitability of the predictive model performance was demonstrated by both goodness-of-fit plots and statistical evaluation. The model predicted the observed monotherapy concentration profiles of furmonertinib well, with 32/32 predicted AUClast (area under the curve until the last concentration measurement) values and 32/32 maximum plasma concentration (Cmax) ratios being within twofold of the respective observed values. In addition, 8/8 predicted DDI AUClast and Cmax ratios with furmonertinib as a victim of CYP3A4 inhibition or induction were within twofold of their respective observed values. Potential applications of the final model include the prediction of DDIs for chronic administration of CYP3A4 perpetrators along with furmonertinib, considering auto-induction of furmonertinib and its metabolite AST5902.

基于生理的弗蒙尼尼及其主要代谢物的药代动力学模型的开发和验证,用于药物-药物相互作用预测。
Furmonertinib是一种新开发的酪氨酸激酶抑制剂,用于治疗表皮生长因子受体(EGFR)突变阳性的非小细胞肺癌患者。体外研究表明,furmonertinib通过细胞色素P450 (CYP)酶CYP3A4代谢为其活性代谢物AST5902。Furmonertinib是强CYP3A4诱导剂,而代谢物是弱CYP3A4诱导剂。在临床研究中,慢性给药过程中观察到非线性药代动力学。表观清除率随时间和剂量增加而增加。在这项评估中,结合使用放射性标记化合物的体外数据、临床药代动力学数据和肿瘤患者和/或健康受试者中呋莫那替尼的药物-药物相互作用(DDI)数据,建立了一个基于生理的药代动力学(PBPK)模型。在PK-Sim Version 11中使用furmonertinib及其代谢物AST5902共44个浓度-时间谱建立模型。通过拟合优度图和统计评价证明了预测模型性能的适宜性。该模型很好地预测了观察到的furmonertinib单药浓度分布,32/32预测了AUClast(曲线下面积,直到最后一次浓度测量)值,32/32最大血浆浓度(Cmax)比值在各自观察值的两倍之内。此外,8/8的预测结果表明,呋门尼替尼作为CYP3A4抑制或诱导的牺牲品,其DDI AUClast和Cmax比值均在各自观察值的两倍以内。最终模型的潜在应用包括预测慢性给药CYP3A4加害者和呋门尼替尼的dis,考虑到呋门尼替尼及其代谢物AST5902的自动诱导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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