预测健康受试者纳多洛尔血浆浓度-时间曲线下面积的有限采样策略

IF 2.9 4区 医学
Shingen Misaka, Yuko Maejima, Kenju Shimomura
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引用次数: 0

摘要

纳多洛尔是一种亲水性β-肾上腺素受体阻滞剂,半衰期相对较长,代谢几乎可以忽略不计。它是P-糖蛋白和有机阴离子转运多肽1A2的底物,可作为体内探针药物,用于评估由这些转运体介导的药物-药物和食物-药物相互作用。本研究旨在建立有限采样策略(LSS)模型,用于预测纳多洛尔的血浆浓度-时间曲线下面积(AUC0-∞)。我们将先前四项研究中报告的健康志愿者血浆浓度数据(Ct)随机分为用于模型开发的训练数据集(n = 15)和用于模型验证的测试数据集(n = 16)。通过多元线性回归分析,我们确认使用两个时间点的八个模型中的四个和使用三个时间点的所有模型都符合可接受的标准。特别是使用(C3、C6 和 C24)和(C4、C8 和 C24)的三个时间点模型显示出更好的预测性能,r2 值分别为 0.983 和 0.980。在纳多洛尔与伊曲康唑、利福平、葡萄柚汁和绿茶提取物的药物相互作用研究中,两种 LSS 模型都能准确预测 AUC0-∞,平均绝对误差百分比≤11%,均方根误差百分比≤12%。此外,利用纳多洛尔的数字化药代动力学数据,通过预测不同剂量的 AUC0-∞ 进一步验证了这两个 LSS 模型。结果表明,使用三个时间点的 LSS 模型可以可靠地预测纳多洛尔在健康人体内的 AUC0-∞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Limited Sampling Strategy for Predicting the Area under Plasma Concentration-Time Curve of Nadolol in Healthy Subjects.

Nadolol is a hydrophilic β-adrenoceptor blocker with a relatively long half-life and negligible metabolism. It is a substrate of P-glycoprotein and organic anion transporting polypeptide 1A2, and may serve as an in vivo probe drug for the assessment of drug-drug and food-drug interactions mediated by these transporters. In the present study, we aimed to develop limited sampling strategy (LSS) models for predicting the area under the plasma concentration-time curve (AUC0-∞) of nadolol. Plasma concentration data (Ct) in healthy volunteers reported in four previous studies were randomly divided into a training dataset for model development (n = 15) and a test dataset for model validation (n = 16). By multiple linear regression analysis, we confirmed that four out of the eight models using two time points and all models using three time points met the acceptable criteria. In particular, the three time point models using (C3, C6, and C24) and (C4, C8, and C24) showed better predictive performances with r2 values of 0.983 and 0.980, respectively. In drug interaction studies of nadolol with itraconazole, rifampicin, grapefruit juice, and green tea extract, both LSS models accurately predicted the AUC0-∞ with percent mean absolute error ≤11% and percent root mean square error ≤12%. In addition, using digitized pharmacokinetic data of nadolol, both LSS models were further validated by predicting the AUC0-∞ in different doses. The results suggest that the LSS models using three time points allow a reliable prediction of AUC0-∞ of nadolol in healthy individuals.

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来源期刊
Journal of Clinical Pharmacology
Journal of Clinical Pharmacology PHARMACOLOGY & PHARMACY-
自引率
3.40%
发文量
0
期刊介绍: The Journal of Clinical Pharmacology (JCP) is a Human Pharmacology journal designed to provide physicians, pharmacists, research scientists, regulatory scientists, drug developers and academic colleagues a forum to present research in all aspects of Clinical Pharmacology. This includes original research in pharmacokinetics, pharmacogenetics/pharmacogenomics, pharmacometrics, physiologic based pharmacokinetic modeling, drug interactions, therapeutic drug monitoring, regulatory sciences (including unique methods of data analysis), special population studies, drug development, pharmacovigilance, womens’ health, pediatric pharmacology, and pharmacodynamics. Additionally, JCP publishes review articles, commentaries and educational manuscripts. The Journal also serves as an instrument to disseminate Public Policy statements from the American College of Clinical Pharmacology.
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