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Performance comparison of first-order conditional estimation with interaction and Bayesian estimation methods for estimating the population parameters and its distribution from data sets with a low number of subjects

机译:一阶条件估计与交互性和贝叶斯估计方法之间的性能比较用于从人口较少的数据集中估计总体参数及其分布

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摘要

BackgroundExploratory preclinical, as well as clinical trials, may involve a small number of patients, making it difficult to calculate and analyze the pharmacokinetic (PK) parameters, especially if the PK parameters show very high inter-individual variability (IIV). In this study, the performance of a classical first-order conditional estimation with interaction (FOCE-I) and expectation maximization (EM)-based Markov chain Monte Carlo Bayesian (BAYES) estimation methods were compared for estimating the population parameters and its distribution from data sets having a low number of subjects.
机译:背景技术探索性的临床前以及临床试验可能会涉及少量患者,这使得难以计算和分析药代动力学(PK)参数,尤其是在PK参数显示非常高的个体间差异(IIV)的情况下。在这项研究中,比较了基于相互作用的经典一阶条件估计(FOCE-I)和基于期望最大化(EM)的马尔可夫链蒙特卡洛贝叶斯(BAYES)估计方法的性能,以估计人口参数及其分布主题数量少的数据集。

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