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基于肾小球滤过率的方法预测肾功能损害对肾排泄药物暴露或清除的影响:一种简单肾小球滤过率方法与基于生理的药代动力学模型的比较研究。

A GFR-Based Method to Predict the Effect of Renal Impairment on the Exposure or Clearance of Renally Excreted Drugs: A Comparative Study Between a Simple GFR Method and a Physiologically Based Pharmacokinetic Model.

机构信息

Mahmood Clinical Pharmacology Consultancy, LLC, 1709 Piccard Dr, Rockville, MD, 20850, USA.

出版信息

Drugs R D. 2020 Dec;20(4):377-387. doi: 10.1007/s40268-020-00327-y. Epub 2020 Nov 4.

DOI:10.1007/s40268-020-00327-y
PMID:33150526
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7641486/
Abstract

OBJECTIVE

The objective of this study was to compare the predictive performances of a glomerular filtration rate (GFR) model with a physiologically based pharmacokinetic (PBPK) model to predict total or renal clearance or area under the curve of renally excreted drugs in subjects with varying degrees of renal impairment.

METHODS

From the literature, 11 studies were randomly selected in which total or renal clearance or area under the curve of drugs in subjects with different degrees of renal impairment were predicted by PBPK models. In these published studies, drugs were given to subjects intravenously or orally. The PBPK model was generally a whole-body model whereas the GFR model was as follows: Predicted total clearance (CL) = CL in healthy subjects × (GFR in RI/GFR in H), Predicted AUC = AUC in healthy subjects × (GFR in H/GFR in RI), where H is the healthy subjects and RI is renal impairment. The predicted clearance or area under the curve values using PBPK and GFR models were compared with the observed (experimental pharmacokinetic) values. The acceptable prediction error was within the 0.5- to 2-fold or 0.5- to 1.5-fold prediction error.

RESULTS

There were 33 drugs with a total number of 101 observations (area under the curve, total and renal clearance in subjects with mild, moderate, and severe renal impairment). From PBPK and GFR models, out of 101 observations, 94 (93.1%) and 96 (95.0%) observations were within the 0.5- to 2-fold prediction error, respectively.

CONCLUSIONS

This study indicates that the predictive power of a simple GFR model is similar to a PBPK model for the prediction of clearance or area under the curve in subjects with renal impairment. The GFR method is simple, robust, and reliable and can replace complex empirical PBPK models.

摘要

目的

本研究旨在比较肾小球滤过率(GFR)模型和基于生理的药代动力学(PBPK)模型的预测性能,以预测不同程度肾功能损害患者的总清除率或肾清除率或肾排泄药物的曲线下面积。

方法

从文献中随机选择了 11 项研究,其中通过 PBPK 模型预测了不同程度肾功能损害患者的药物总清除率或肾清除率或曲线下面积。在这些已发表的研究中,药物被给予静脉注射或口服。PBPK 模型通常是全身模型,而 GFR 模型如下:预测总清除率(CL)=健康受试者的 CL×(RI 的 GFR/H 的 GFR),预测 AUC=健康受试者的 AUC×(H 的 GFR/RI 的 GFR),其中 H 为健康受试者,RI 为肾功能损害。使用 PBPK 和 GFR 模型预测的清除率或曲线下面积值与观察(实验药代动力学)值进行比较。可接受的预测误差在 0.5 至 2 倍或 0.5 至 1.5 倍预测误差范围内。

结果

共有 33 种药物,共 101 个观察值(轻度、中度和重度肾功能损害患者的曲线下面积、总清除率和肾清除率)。从 PBPK 和 GFR 模型中,101 个观察值中,94 个(93.1%)和 96 个(95.0%)观察值在 0.5 至 2 倍预测误差范围内。

结论

本研究表明,简单 GFR 模型的预测能力与 PBPK 模型相似,可用于预测肾功能损害患者的清除率或曲线下面积。GFR 方法简单、稳健、可靠,可以替代复杂的经验 PBPK 模型。

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