Xu Xu Steven, Yuan Min, Yang Haitao, Feng Yan, Xu Jinfeng, Pinheiro Jose
Janssen Research and Development, 920 Route 202, Raritan, New Jersey, 08869, USA.
School of public health administration, Anhui Medical University, Hefei, China.
AAPS J. 2017 Jan;19(1):264-273. doi: 10.1208/s12248-016-0001-4. Epub 2016 Oct 19.
Covariate analysis based on population pharmacokinetics (PPK) is used to identify clinically relevant factors. The likelihood ratio test (LRT) based on nonlinear mixed effect model fits is currently recommended for covariate identification, whereas individual empirical Bayesian estimates (EBEs) are considered unreliable due to the presence of shrinkage. The objectives of this research were to investigate the type I error for LRT and EBE approaches, to confirm the similarity of power between the LRT and EBE approaches from a previous report and to explore the influence of shrinkage on LRT and EBE inferences. Using an oral one-compartment PK model with a single covariate impacting on clearance, we conducted a wide range of simulations according to a two-way factorial design. The results revealed that the EBE-based regression not only provided almost identical power for detecting a covariate effect, but also controlled the false positive rate better than the LRT approach. Shrinkage of EBEs is likely not the root cause for decrease in power or inflated false positive rate although the size of the covariate effect tends to be underestimated at high shrinkage. In summary, contrary to the current recommendations, EBEs may be a better choice for statistical tests in PPK covariate analysis compared to LRT. We proposed a three-step covariate modeling approach for population PK analysis to utilize the advantages of EBEs while overcoming their shortcomings, which allows not only markedly reducing the run time for population PK analysis, but also providing more accurate covariate tests.
基于群体药代动力学(PPK)的协变量分析用于识别临床相关因素。目前推荐基于非线性混合效应模型拟合的似然比检验(LRT)来进行协变量识别,而由于存在收缩现象,个体经验贝叶斯估计(EBE)被认为不可靠。本研究的目的是调查LRT和EBE方法的I型错误,从先前的报告中确认LRT和EBE方法之间效能的相似性,并探讨收缩对LRT和EBE推断的影响。使用一个口服单室药代动力学模型,其中有一个影响清除率的单一协变量,我们根据双向析因设计进行了广泛的模拟。结果显示,基于EBE的回归不仅在检测协变量效应方面提供了几乎相同的效能,而且在控制假阳性率方面比LRT方法更好。尽管在高收缩率下协变量效应的大小往往被低估,但EBE的收缩可能不是效能降低或假阳性率膨胀的根本原因。总之,与当前建议相反,在PPK协变量分析中,与LRT相比,EBE可能是统计检验的更好选择。我们提出了一种用于群体药代动力学分析的三步协变量建模方法,以利用EBE的优势同时克服其缺点,这不仅可以显著减少群体药代动力学分析的运行时间,还能提供更准确的协变量检验。