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首页> 外文期刊>Journal of Pharmacokinetics and Pharmacodynamics >Population Fisher information matrix and optimal design of discrete data responses in population pharmacodynamic experiments
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Population Fisher information matrix and optimal design of discrete data responses in population pharmacodynamic experiments

机译:种群药效学实验中的Fisher种群信息矩阵和离散数据响应的优化设计

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摘要

In the recent years, interest in the application of experimental design theory to population pharmacokinetic (PK) and pharmacodynamic (PD) experiments has increased. The aim is to improve the efficiency and the precision with which parameters are estimated during data analysis and sometimes to increase the power and reduce the sample size required for hypothesis testing. The population Fisher information matrix (PFIM) has been described for uniresponse and multiresponse population PK experiments for design evaluation and optimisation. Despite these developments and availability of tools for optimal design of population PK and PD experiments much of the effort has been focused on repeated continuous variable measurements with less work being done on repeated discrete type measurements. Discrete data arise mainly in PDs e.g. ordinal, nominal, dichotomous or count measurements. This paper implements expressions for the PFIM for repeated ordinal, dichotomous and count measurements based on analysis by a mixed-effects modelling technique. Three simulation studies were used to investigate the performance of the expressions. Example 1 is based on repeated dichotomous measurements, Example 2 is based on repeated count measurements and Example 3 is based on repeated ordinal measurements. Data simulated in MATLAB were analysed using NONMEM (Laplace method) and the glmmML package in R (Laplace and adaptive Gauss-Hermite quadrature methods). The results obtained for Examples 1 and 2 showed good agreement between the relative standard errors obtained using the PFIM and simulations. The results obtained for Example 3 showed the importance of sampling at the most informative time points. Implementation of these expressions will provide the opportunity for efficient design of population PD experiments that involve discrete type data through design evaluation and optimisation.
机译:近年来,人们对将实验设计理论应用于群体药代动力学(PK)和药代动力学(PD)实验的兴趣不断增加。目的是提高数据分析期间估计参数的效率和精度,有时还可以提高功能并减少假设检验所需的样本量。人口费雪信息矩阵(PFIM)已针对无响应和多响应人口PK实验进行了描述,以进行设计评估和优化。尽管有这些发展和提供了用于人口PK和PD实验最佳设计的工具,但大部分工作仍集中在重复连续变量测量上,而在重复离散类型测量上所做的工作却更少。离散数据主要出现在PD中,例如顺序,名义,二分或计数测量。本文基于混合效果建模技术的分析,为重复序数,二分法和计数测量实现了PFIM的表达式。使用三个模拟研究来研究这些表达式的性能。示例1基于重复的二分法测量,示例2基于重复的计数测量,示例3基于重复的序数测量。使用NONMEM(拉普拉斯方法)和R中的glmmML软件包(拉普拉斯和自适应Gauss-Hermite正交方法)分析了在MATLAB中模拟的数据。实施例1和2的结果表明,使用PFIM获得的相对标准误差与模拟值之间具有良好的一致性。实施例3获得的结果表明了在信息最丰富的时间点进行采样的重要性。这些表达式的实现将为通过设计评估和优化涉及离散类型数据的群体PD实验的有效设计提供机会。

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