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Two general methods for population pharmacokinetic modeling: non-parametric adaptive grid and non-parametric Bayesian.

机译:人口药代动力学建模的两种通用方法:非参数自适应网格和非参数贝叶斯。

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摘要

Population pharmacokinetic (PK) modeling methods can be statistically classified as either parametric or nonparametric (NP). Each classification can be divided into maximum likelihood (ML) or Bayesian (B) approaches. In this paper we discuss the nonparametric case using both maximum likelihood and Bayesian approaches. We present two nonparametric methods for estimating the unknown joint population distribution of model parameter values in a pharmacokinetic/pharmacodynamic (PK/PD) dataset. The first method is the NP Adaptive Grid (NPAG). The second is the NP Bayesian (NPB) algorithm with a stick-breaking process to construct a Dirichlet prior. Our objective is to compare the performance of these two methods using a simulated PK/PD dataset. Our results showed excellent performance of NPAG and NPB in a realistically simulated PK study. This simulation allowed us to have benchmarks in the form of the true population parameters to compare with the estimates produced by the two methods, while incorporating challenges like unbalanced sample times and sample numbers as well as the ability to include the covariate of patient weight. We conclude that both NPML and NPB can be used in realistic PK/PD population analysis problems. The advantages of one versus the other are discussed in the paper. NPAG and NPB are implemented in R and freely available for download within the Pmetrics package from www.lapk.org.
机译:人口药代动力学(PK)建模方法可以统计分类为参数或非参数(NP)。每个分类可以分为最大可能性(ml)或贝叶斯(b)方法。在本文中,我们使用最大可能性和贝叶斯方法讨论非参数案例。我们介绍了两个非参数方法,用于估计药代动力学/药物动力学(PK / PD)数据集中的模型参数值的未知联合人口分布。第一种方法是NP自适应网格(NPAG)。第二种是NP贝叶斯(NPB)算法,具有粘性过程以在之前构建Dirichlet。我们的目标是使用模拟PK / PD数据集进行比较这两种方法的性能。我们的结果表明,在现实模拟的PK研究中表明NPAG和NPB的出色表现。该模拟使我们能够以真正的人口参数的形式具有基准,以比较两种方法产生的估计,同时包含不平衡样本时间和样品数量等挑战,以及包括患者体重的协变量的能力。我们得出结论,NPML和NPB都可以用于现实的PK / PD种群分析问题。本文讨论了一个与另一个相反的优点。 NPAG和NPB在R和WWW.LAPK.ORG的PMetrics包中自由地下载。

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