基于生理的药代动力学模型预测乳中乳腺癌耐药蛋白底物的药物浓度

IF 1.7 4区 医学 Q3 PHARMACOLOGY & PHARMACY Biopharmaceutics & Drug Disposition Pub Date : 2022-10-20 DOI:10.1002/bdd.2335
Tao Zhang, Peng Zou, Yingsi Fang, Yanyan Li
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引用次数: 3

摘要

许多母亲在母乳喂养期间需要服用一些药物,这可能对母乳喂养的婴儿有风险。因此,确定转移到母乳中的药物量对于母乳喂养的风险-收益分析至关重要。乳腺癌抵抗蛋白(Breast cancer resistance protein, BCRP)是一种保护机体免受环境和饮食毒素侵害的外排转运蛋白,据报道在泌乳乳腺中高表达。在这项研究中,我们建立了一种基于哺乳期生理机制的药代动力学(PBPK)建模方法,结合BCRP介导的转运动力学来模拟五种BCRP药物底物(阿昔洛韦、安非他酮、西咪替丁、环丙沙星和呋喃妥因)在哺乳期妇女血浆和乳汁中的浓度-时间分布。由于护理女性缺乏特定的生理参数和比例因子,我们将自下而上和自上而下的PBPK建模方法与文献报道的数据结合起来,优化并确定了一组适用于所有五种药物的参数。通过比较预测的药代动力学特征和乳浆比(M/P)与临床报告数据,评估PBPK模型的预测性能。阿昔洛韦、安非他酮、西咪替丁、环丙沙星和呋喃妥英的预测M/P比分别为2.48、3.70、3.55、1.21和5.78,与实测值的误差均在1.5倍以内。这些PBPK模型有助于预测这五种药物在不同给药方案下的PK谱。此外,本研究提出的方法将适用于预测牛奶中其他转运体底物的药代动力学。
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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Physiologically based pharmacokinetic model to predict drug concentrations of breast cancer resistance protein substrates in milk

Many mothers need to take some medications during breastfeeding, which may carry a risk to breastfed infants. Thus, determining the amount of a drug transferred into breast milk is critical for risk–benefit analysis of breastfeeding. Breast cancer resistance protein (BCRP), an efflux transporter which usually protects the body from environmental and dietary toxins, was reported to be highly expressed in lactating mammary glands. In this study, we developed a mechanistic lactation physiologically based pharmacokinetic (PBPK) modeling approach incorporating BCRP mediated transport kinetics to simulate the concentration–time profiles of five BCRP drug substrates (acyclovir, bupropion, cimetidine, ciprofloxacin, and nitrofurantoin) in nursing women’s plasma and milk. Due to the lack of certain physiological parameters and scaling factors in nursing women, we combine the bottom up and top down PBPK modeling approaches together with literature reported data to optimize and determine a set of parameters that are applicable for all five drugs. The predictive performance of the PBPK models was assessed by comparing predicted pharmacokinetic profiles and the milk-to-plasma (M/P) ratio with clinically reported data. The predicted M/P ratios for acyclovir, bupropion, cimetidine, ciprofloxacin, and nitrofurantoin were 2.48, 3.70, 3.55, 1.21, and 5.78, which were all within 1.5-fold of the observed values. These PBPK models are useful to predict the PK profiles of those five drugs in the milk for different dosing regimens. Furthermore, the approach proposed in this study will be applicable to predict pharmacokinetics of other transporter substrates in the milk.

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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
35
审稿时长
6-12 weeks
期刊介绍: Biopharmaceutics & Drug Dispositionpublishes original review articles, short communications, and reports in biopharmaceutics, drug disposition, pharmacokinetics and pharmacodynamics, especially those that have a direct relation to the drug discovery/development and the therapeutic use of drugs. These includes: - animal and human pharmacological studies that focus on therapeutic response. pharmacodynamics, and toxicity related to plasma and tissue concentrations of drugs and their metabolites, - in vitro and in vivo drug absorption, distribution, metabolism, transport, and excretion studies that facilitate investigations related to the use of drugs in man - studies on membrane transport and enzymes, including their regulation and the impact of pharmacogenomics on drug absorption and disposition, - simulation and modeling in drug discovery and development - theoretical treatises - includes themed issues and reviews and exclude manuscripts on - bioavailability studies reporting only on simple PK parameters such as Cmax, tmax and t1/2 without mechanistic interpretation - analytical methods
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