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Importance of Shrinkage in Empirical Bayes Estimates for Diagnostics: Problems and Solutions

机译:诊断经验贝叶斯估计中收缩的重要性:问题和解决方案

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摘要

Empirical Bayes (“post hoc”) estimates (EBEs) of ηs provide modelers with diagnostics: the EBEs themselves, individual prediction (IPRED), and residual errors (individual weighted residual (IWRES)). When data are uninformative at the individual level, the EBE distribution will shrink towards zero (η-shrinkage, quantified as 1-SD(ηEBE)/ω), IPREDs towards the corresponding observations, and IWRES towards zero (ε-shrinkage, quantified as 1-SD(IWRES)). These diagnostics are widely used in pharmacokinetic (PK) pharmacodynamic (PD) modeling; we investigate here their usefulness in the presence of shrinkage. Datasets were simulated from a range of PK PD models, EBEs estimated in non-linear mixed effects modeling based on the true or a misspecified model, and desired diagnostics evaluated both qualitatively and quantitatively. Identified consequences of η-shrinkage on EBE-based model diagnostics include non-normal and/or asymmetric distribution of EBEs with their mean values (“ETABAR”) significantly different from zero, even for a correctly specified model; EBE–EBE correlations and covariate relationships may be masked, falsely induced, or the shape of the true relationship distorted. Consequences of ε-shrinkage included low power of IPRED and IWRES to diagnose structural and residual error model misspecification, respectively. EBE-based diagnostics should be interpreted with caution whenever substantial η- or ε-shrinkage exists (usually greater than 20% to 30%). Reporting the magnitude of η- and ε-shrinkage will facilitate the informed use and interpretation of EBE-based diagnostics.
机译:η的经验贝叶斯(“事后”)估计(EBE)为建模者提供了诊断:EBE本身,个体预测(IPRED)和残差(个体加权残差(IWRES))。当数据在各个层面上没有提供信息时,EBE分布将缩小为零(η收缩,量化为1-SD(ηEBE)/ω),IPRED趋向于相应的观测值,IWRES趋向于零(ε收缩,量化为1-SD(IWRES))。这些诊断方法广泛用于药代动力学(PK)药效学(PD)建模;我们在这里研究存在收缩时它们的有用性。根据一系列PK PD模型,基于真实或错误指定的模型在非线性混合效应模型中估算的EBE以及一系列定性和定量评估所需的诊断方法,对数据集进行了仿真。 η收缩对基于EBE的模型诊断的确定结果包括:即使对于正确指定的模型,EBE的平均值(“ ETABAR”)的非正态分布和/或不对称分布也明显不同于零。 EBE-EBE相关性和协变量关系可能被掩盖,误导或使真实关系的形状失真。 ε收缩的后果包括IPRED和IWRES的低功率,分别用于诊断结构错误模型和残差误差模型。每当存在显着的η-或ε-收缩(通常大于20%至30%)时,应谨慎解释基于EBE的诊断。报告η和ε收缩的幅度将有助于基于EBE的诊断程序的知情使用和解释。

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