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首页> 外文期刊>Clinical pharmacokinetics >The relationship between drug clearance and body size: Systematic review and meta-analysis of the literature published from 2000 to 2007
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The relationship between drug clearance and body size: Systematic review and meta-analysis of the literature published from 2000 to 2007

机译:药物清除率与体重之间的关系:2000年至2007年发表的文献的系统评价和荟萃分析

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摘要

Background: A variety of body size covariates have been used in population pharmacokinetic analyses to describe variability in drug clearance (CL), such as total body weight (TBW), body surface area (BSA), lean body weight (LBW) and allometric TBW. There is controversy, however, as to which body size covariate is most suitable for describing CL across the whole population. Given the increasing worldwide prevalence of obesity, it is essential to identify the best size descriptor so that dosing regimens can be developed that are suitable for patients of any size. Aim: The aim of this study was to explore the use of body size covariates in population pharmacokinetic analyses for describing CL. In particular, we sought to determine if any body size covariate was preferential to describe CL and quantify its relationship with CL, and also identify study design features that result in the identification of a nonlinear relationship between TBW and CL. Methods: Population pharmacokinetic articles were identified from MEDLINE using defined keywords. Adatabase was developed to collect information about study designs, model building and covariate analysis strategies, and final reported models for CL. The success of inclusion for a variety of covariates was determined. A meta-analysis of studies was then performed to determine the average relationship reported between CL and TBW. For each study, CL was calculated across the range of TBW for the study population and normalized to allow comparison between studies. BSA, LBW, and allometric TBW and LBW relationships with exponents of 3/4, 2/3, and estimated values were evaluated to determine the relationship that best described the data overall. Additionally, joint distributions of TBW were compared between studies reporting a 'nonlinear' relationship between CL and TBW (i.e. LBW, BSA and allometric TBW-shaped relationships) and those reporting 'other' relationships (e.g. linear increase in CL with TBW, ideal body weight or height). Results: A total of 458 out of 2384 articles were included in the analysis, from which 484 pharmacokinetic studies were reviewed. Fifty-six percent of all models for CL included body size as a covariate, with 52% of models including a nonlinear relationship between CL and TBW. No single size descriptor was more successful than others for describing CL. LBW with a fixed exponent of 2/3, i.e. (LBW/50.45) 2/3, or estimated exponent of 0.646, i.e. ~2/3, was found to best describe the average reported relationship between CL and TBW. The success of identifying a nonlinear increase in CL with TBW was found to be higher for those studies that included a wider range of subject TBW. Conclusions: To the best of our knowledge, this is the first study to have performed a meta-analysis of covariate relationships between CL and body size. Although many studies reported a linear relationship between CL and TBW, the average relationship was found to be nonlinear. LBW with an allometric exponent of ~2/3 may be most suitable for describing an increase in CL with body size as it accounts for both body composition and allometric scaling principles concerning differences in metabolic rates across size.
机译:背景:各种体型协变量已用于群体药代动力学分析,以描述药物清除率(CL)的变异性,例如总体重(TBW),体表面积(BSA),瘦体重(LBW)和异体性TBW 。但是,关于哪个体型协变量最适合描述整个人群的CL,存在争议。鉴于全世界肥胖症的患病率正在上升,因此必须确定最佳的大小指标,以便制定出适合任何大小患者的给药方案。目的:本研究的目的是探讨在人群药代动力学分析中使用体型协变量描述CL。特别是,我们试图确定是否有任何体型协变量更适合描述CL和量化其与CL的关系,并确定研究设计特征,从而确定TBW和CL之间的非线性关系。方法:使用定义的关键词从MEDLINE识别人群药代动力学文章。开发数据库的目的是收集有关研究设计,模型构建和协变量分析策略以及最终报告的CL模型的信息。确定了各种协变量的包含成功性。然后进行研究的荟萃分析,以确定报道的CL和TBW之间的平均关系。对于每项研究,在研究人群的整个TBW范围内计算CL,并将其标准化以进行研究之间的比较。 BSA,LBW以及指数为3 / 4、2 / 3的异形TBW和LBW关系以及估计值进行评估,以确定最能全面描述数据的关系。此外,在报告CL和TBW之间存在“非线性”关系(即LBW,BSA和异速TBW形关系)的研究与报告“其他”关系(例如,CL与TBW线性增加,理想身体)之间的研究中,对TBW的联合分布进行了比较。体重或身高)。结果:共分析2384篇文章中的458篇,其中484篇药物代谢动力学研究得到了综述。在所有CL模型中,有56%的人将身材大小作为协变量,其中52%的模型包括CL和TBW之间的非线性关系。在描述CL方面,没有一个单一大小的描述符比其他描述符更成功。固定指数为2/3的LBW,即(LBW / 50.45)2/3,或估计指数为0.646,即〜2/3的LBW,可以最好地描述CL和TBW之间的平均报告关系。对于那些涉及更广泛的主题TBW的研究,发现与TBW相关的CL的非线性增加的成功率更高。结论:就我们所知,这是首次对CL和体型之间的协变量关系进行荟萃分析的研究。尽管许多研究报告了CL和TBW之间的线性关系,但发现平均关系是非线性的。异体指数为〜2/3的LBW可能最适合描述CL随着体型的增加,因为它同时考虑了身体成分和涉及全尺寸代谢率差异的异体缩放比例原理。

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