James C Y Chan, Shawn P F Tan, Zee Upton, Eric C Y Chan
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引用次数: 14
Abstract
There is a growing need for alternatives to animal testing to derive biokinetic data for evaluating both efficacy and safety of chemicals. One such alternative is bottom-up physiologically-based biokinetic (PBK) modeling which requires only in vitro data. The primary objective of this study is to develop and validate bottom-up PBK models of 3 HMG-CoA reductase inhibitors: rosuvastatin, fluvastatin and pitavastatin. Bottom-up PBK models were built using the Simcyp® Simulator by incorporating in vitro transporter and metabolism data (Vmax, Jmax, Km, CLint) obtained from the literature and proteomics-based scaling factors to account for differences in transporters expression between in vitro systems and in vivo organs. Simulations were performed for single intravenous, single oral and multiple oral dose of these chemicals. The results showed that our bottom-up models predicted systemic exposure (AUC0h-t), maximum plasma concentration (Cmax), plasma clearance and time to reach Cmax (Tmax) within two-fold of the observed data, with the exception of parameters associated with multiple oral pitavastatin dosing and single oral fluvastatin dosing. Additional middle-out simulations were performed using animal distribution data to inform tissue-to-plasma equilibrium distribution ratios for rosuvastatin and pitavastatin. This improved the predicted plasma-concentration time profiles but did not significantly alter the predicted biokinetic parameters. Our study demonstrates that quantitative proteomics-based mechanistic in vitro-to-in vivo extrapolation (IVIVE) could account for downregulation of transporters in culture and predict whole organ clearances without empirical scaling. Hence, bottom-up PBK modeling incorporating mechanistic IVIVE could be a viable alternative to animal testing in predicting human biokinetics.
越来越需要替代动物试验的方法来获得生物动力学数据,以评估化学品的有效性和安全性。一种这样的替代方法是自下而上的基于生理的生物动力学(PBK)建模,它只需要体外数据。本研究的主要目的是建立和验证3种HMG-CoA还原酶抑制剂的自下而上PBK模型:瑞舒伐他汀、氟伐他汀和匹伐他汀。使用Simcyp®Simulator构建自下而上的PBK模型,结合从文献中获得的体外转运蛋白和代谢数据(Vmax, Jmax, Km, CLint)和基于蛋白质组学的比例因子,以解释体外系统和体内器官之间转运蛋白表达的差异。对这些化学物质进行了单次静脉注射、单次口服和多次口服剂量的模拟。结果表明,我们的自下而上模型预测全身暴露(AUC0h-t)、最大血浆浓度(Cmax)、血浆清除率和达到Cmax的时间(Tmax)在观察数据的两倍范围内,但与多次口服匹伐他汀和单次口服氟伐他汀相关的参数除外。使用动物分布数据进行额外的中间模拟,以了解瑞舒伐他汀和匹伐他汀的组织-血浆平衡分布比。这改善了预测的血浆浓度时间曲线,但没有显著改变预测的生物动力学参数。我们的研究表明,基于定量蛋白质组学的体外-体内机制外推(IVIVE)可以解释培养中转运蛋白的下调,并在没有经验尺度的情况下预测整个器官的清除。因此,结合机械IVIVE的自下而上PBK建模可能是预测人类生物动力学的可行替代动物试验。