Operational characteristics of full random effects modelling ('frem') compared to stepwise covariate modelling ('scm').

IF 2.2 4区 医学 Q3 PHARMACOLOGY & PHARMACY Journal of Pharmacokinetics and Pharmacodynamics Pub Date : 2023-08-01 DOI:10.1007/s10928-023-09856-w
Lisa F Amann, Sebastian G Wicha
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Abstract

An adequate covariate selection is a key step in population pharmacokinetic modelling. In this study, the automated stepwise covariate modelling technique ('scm') was compared to full random effects modelling ('frem'). We evaluated the power to identify a 'true' covariate (covariate with highest correlation to the pharmacokinetic parameter), precision, and accuracy of the parameter-covariate estimates. Furthermore, the predictive performance of the final models was assessed. The scenarios varied in covariate effect sizes, number of individuals (n = 20-500) and covariate correlations (0-90% cov-corr). The PsN 'frem' routine provides a 90% confidence intervals around the covariate effects. This was used to evaluate its operational characteristics for a statistical backward elimination procedure, defined as 'fremposthoc' and to facilitate the comparison to 'scm'. 'Fremposthoc' had a higher power to detect the true covariate with lower bias in small n studies compared to 'scm', applied with commonly used settings (forward p < 0.05, backward p < 0.01). This finding was vice versa in a statistically similar setting. For 'fremposthoc', power, precision and accuracy of the covariate coefficient increased with higher number of individuals and covariate effect magnitudes. Without a backward elimination step 'frem' models provided unbiased coefficients with highly imprecise coefficients in small n datasets. Yet, precision was superior to final 'scm' model precision obtained using common settings. We conclude that 'fremposthoc' is also a suitable method to guide covariate selection, although intended to serve as a full model approach. However, a deliberated selection of automated methods is essential for the modeller and using those methods in small datasets needs to be taken with caution.

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与逐步协变量模型(scm)相比,全随机效应模型(“frem”)的操作特性。
适当的协变量选择是群体药代动力学建模的关键步骤。在本研究中,将自动逐步协变量建模技术(scm)与完全随机效应建模(frem)进行了比较。我们评估了识别“真实”协变量(与药代动力学参数相关性最高的协变量)的能力、精密度和参数协变量估计的准确性。此外,还对最终模型的预测性能进行了评估。这些情景在协变量效应大小、个体数量(n = 20-500)和协变量相关性(0-90% cov-corr)方面各不相同。PsN“frem”例程在协变量效应周围提供了90%的置信区间。这是用来评估其操作特性的统计反向消除程序,定义为“自由后置”,并促进与“scm”的比较。与“scm”相比,“Fremposthoc”在小n研究中具有更高的检测真实协变量的能力,偏差更低,应用常用设置(前向p posthoc),协变量系数的功率,精度和准确性随着个体数量和协变量效应大小的增加而增加。在没有反向消除步骤的情况下,“frem”模型在小n个数据集中提供了具有高度不精确系数的无偏系数。然而,精度优于使用普通设置获得的最终“scm”模型精度。我们得出结论,“frempostthoc”也是一种合适的方法来指导协变量选择,尽管打算作为一个完整的模型方法。然而,对于建模者来说,慎重选择自动化方法是必不可少的,在小数据集中使用这些方法需要谨慎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.90
自引率
4.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: Broadly speaking, the Journal of Pharmacokinetics and Pharmacodynamics covers the area of pharmacometrics. The journal is devoted to illustrating the importance of pharmacokinetics, pharmacodynamics, and pharmacometrics in drug development, clinical care, and the understanding of drug action. The journal publishes on a variety of topics related to pharmacometrics, including, but not limited to, clinical, experimental, and theoretical papers examining the kinetics of drug disposition and effects of drug action in humans, animals, in vitro, or in silico; modeling and simulation methodology, including optimal design; precision medicine; systems pharmacology; and mathematical pharmacology (including computational biology, bioengineering, and biophysics related to pharmacology, pharmacokinetics, orpharmacodynamics). Clinical papers that include population pharmacokinetic-pharmacodynamic relationships are welcome. The journal actively invites and promotes up-and-coming areas of pharmacometric research, such as real-world evidence, quality of life analyses, and artificial intelligence. The Journal of Pharmacokinetics and Pharmacodynamics is an official journal of the International Society of Pharmacometrics.
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