Ette E I, Ludden T M
Division of Biopharmaceutics, Center for Drug Evaluation and Research, Food and Drug Administration, Rockville, Maryland 20857, USA.
Pharm Res. 1995 Dec;12(12):1845-55. doi: 10.1023/a:1016215116835.
The usefulness of several modelling methods were examined in the development of a population pharmacokinetics model for cefepime.
The analysis was done in six steps: (1) exploratory data analysis to examine distributions and correlations among covariates, (2) determination of a basic pharmacokinetic model using the NON-MEM program and obtaining Bayesian individual parameter estimates, (3) examination of the distribution of parameter estimates, (4) multiple linear regression (MLR) with case deletion diagnostics, generalized additive modelling (GAM), and tree-based modelling (TBM) for the selection of covariates and revealing structure in the data, (5) final NONMEM modelling to determine the population PK model, and (6) the evaluation of final parameter estimates.
An examination of the distribution of individual clearance (CL) estimates suggested bimodality. Thus, the mixture model feature in NONMEM was used for the separation of subpopulations. MLR and GAM selected creatinine clearance (CRCL) and age, while TBM selected both of these covariates and weight as predictors of CL. The final NONMEM model for CL included only a linear relationship with CRCL. However, two subpopulations were identified that differed in slope and intercept.
The findings suggest that using informative graphical and statistical techniques enhance the understanding of the data structure and lead to an efficient analysis of the data.
在头孢吡肟群体药代动力学模型的开发中,考察了几种建模方法的实用性。
分析分六个步骤进行:(1)探索性数据分析,以检查协变量之间的分布和相关性;(2)使用NON-MEM程序确定基本药代动力学模型并获得贝叶斯个体参数估计值;(3)检查参数估计值的分布;(4)采用带有病例删除诊断的多元线性回归(MLR)、广义相加模型(GAM)和基于树的建模(TBM)来选择协变量并揭示数据结构;(5)进行最终的NONMEM建模以确定群体药代动力学模型;(6)评估最终参数估计值。
对个体清除率(CL)估计值分布的检查显示出双峰性。因此,在NONMEM中使用混合模型特征来分离亚组。MLR和GAM选择了肌酐清除率(CRCL)和年龄,而TBM选择了这两个协变量以及体重作为CL的预测因子。CL的最终NONMEM模型仅包括与CRCL的线性关系。然而,识别出了两个在斜率和截距上不同的亚组。
研究结果表明,使用信息丰富的图形和统计技术可增强对数据结构的理解,并导致对数据进行高效分析。