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NONMEM 中的自动协变量模型构建。

Automated covariate model building within NONMEM.

作者信息

Jonsson E N, Karlsson M O

机构信息

Department of Pharmacy, Uppsala University, Sweden.

出版信息

Pharm Res. 1998 Sep;15(9):1463-8. doi: 10.1023/a:1011970125687.

Abstract

PURPOSE

One important task in population pharmacokinetic/pharmacodynamic model building is to identify the relationships between the parameters and demographic factors (covariates). The purpose of this study is to present an automated procedure that accomplishes this. The benefits of the proposed procedure over other commonly used methods are (i) the covariate model is built for all parameters simultaneously, (ii) the covariate model is built within the population modeling program (NONMEM) giving familiar meaning to the significance levels used, (iii) it can appropriately handle covariates that varies over time and (iv) it is not dependent on the quality of the posterior Bayes estimates of the individual parameter values. For situations in which the computer run-times are a limiting factor, a linearization of the non-linear mixed effects model is proposed and evaluated.

METHODS

The covariate model is built in a stepwise fashion in which both linear and non-linear relationships between the parameters and covariates are considered. The linearization is basically a linear mixed effects model in which the population predictions and their derivatives with respect to the parameters are fixed from a model without covariates. The stepwise procedure as well as the linearization was evaluated using simulations in which the covariates were taken from a real data set.

RESULTS

The covariate models identified agreed well with what could be expected based on the covariates that were actually supported in each of the simulated data sets. The predictive performance of the linearized model was close to that of the non-linearized model.

CONCLUSIONS

The proposed procedure identifies covariate models that are close to the model supported by the data set as well as being useful in the prediction of new data. The linearized model performs nearly as well as the non-linearized model.

摘要

目的

群体药代动力学/药效学模型构建中的一项重要任务是确定参数与人口统计学因素(协变量)之间的关系。本研究的目的是提出一种实现此目的的自动化程序。与其他常用方法相比,该程序的优势在于:(i)针对所有参数同时构建协变量模型;(ii)在群体建模程序(NONMEM)中构建协变量模型,赋予所使用的显著性水平熟悉的意义;(iii)能够妥善处理随时间变化的协变量;(iv)不依赖于个体参数值的后验贝叶斯估计质量。对于计算机运行时间是限制因素的情况,提出并评估了非线性混合效应模型的线性化方法。

方法

以逐步方式构建协变量模型,其中考虑了参数与协变量之间的线性和非线性关系。线性化基本上是一个线性混合效应模型,其中群体预测及其关于参数的导数从无协变量的模型中固定。使用从真实数据集中获取协变量的模拟对逐步程序以及线性化进行了评估。

结果

所确定的协变量模型与基于每个模拟数据集中实际支持的协变量所预期的结果非常吻合。线性化模型的预测性能接近非线性化模型。

结论

所提出的程序能够识别与数据集支持的模型相近的协变量模型,并且在预测新数据方面也很有用。线性化模型的性能几乎与非线性化模型相同。

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