Wählby U, Jonsson E N, Karlsson M O
Division of Pharmacokinetics and Drug Therapy, Department of Pharmaceutical Biosciences, Uppsala University, Box 591, 751 24 Uppsala, Sweden.
J Pharmacokinet Pharmacodyn. 2001 Jun;28(3):231-52. doi: 10.1023/a:1011527125570.
The objectives of this study were to assess the difference between actual and nominal significance levels, as judged by the likelihood ratio test, for hypothesis tests regarding covariate effects using NONMEM, and to study what factors influence these levels. Also, a strategy for obtaining closer agreement between nominal and actual significance levels was investigated. Pharmacokinetic (PK) data without covariate relationships were simulated from a one compartment i.v. bolus model for 50 individuals. Models with and without covariate relationships were then fitted to the data, and differences in the objective function values were calculated. Alterations were made to the simulation settings; the structural and error models, the number of individuals, the number of samples per individual and the covariate distribution. Different estimation methods in NONMEM were also tried. In addition, a strategy for estimating the actual significance levels for a specific data set, model and parameter was investigated using covariate randomization and a real data set. Under most conditions when the first-order (FO) method was used, the actual significance level for including a covariate relationship in a model was higher than the nominal significance level. Among factors with high impact were frequency of sampling and residual error magnitude. The use of the first-order conditional estimation method with interaction (FOCE-INTER) resulted in close agreement between actual and nominal significance levels. The results from the covariate randomization procedure of the real data set were in agreement with the results from the simulation study. With the FO method the actual significance levels were higher than the nominal, independent of the covariate type, but depending on the parameter influenced. When using FOCE-INTER the actual and nominal levels were similar. The most important factors influencing the actual significance levels for the FO method are the approximation of the influence of the random effects in a nonlinear model, a heteroscedastic error structure in which an existing interaction between interindividual and residual variability is not accounted for in the model, and a lognormal distribution of the residual error which is approximated by a symmetric distribution. Estimation with FOCE-INTER and the covariate randomization procedure provide means to achieve agreement between nominal and actual significance levels.
本研究的目的是评估使用NONMEM进行协变量效应假设检验时,通过似然比检验判断的实际显著性水平与名义显著性水平之间的差异,并研究哪些因素会影响这些水平。此外,还研究了一种使名义显著性水平与实际显著性水平更接近一致的策略。从单室静脉推注模型为50名个体模拟了无协变量关系的药代动力学(PK)数据。然后将有无协变量关系的模型拟合到数据上,并计算目标函数值的差异。对模拟设置进行了更改;结构和误差模型、个体数量、每个个体的样本数量以及协变量分布。还尝试了NONMEM中的不同估计方法。此外,使用协变量随机化和一个实际数据集研究了一种针对特定数据集、模型和参数估计实际显著性水平的策略。在大多数使用一阶(FO)方法的情况下,模型中包含协变量关系的实际显著性水平高于名义显著性水平。影响较大的因素包括采样频率和残差误差大小。使用带有交互作用的一阶条件估计方法(FOCE - INTER)可使实际显著性水平与名义显著性水平接近一致。实际数据集的协变量随机化程序的结果与模拟研究的结果一致。使用FO方法时,实际显著性水平高于名义显著性水平,与协变量类型无关,但取决于受影响的参数。使用FOCE - INTER时,实际水平和名义水平相似。影响FO方法实际显著性水平的最重要因素是非线性模型中随机效应影响的近似、模型中未考虑个体间和残差变异性之间现有交互作用的异方差误差结构,以及由对称分布近似的残差误差的对数正态分布。使用FOCE - INTER估计和协变量随机化程序提供了使名义显著性水平与实际显著性水平达成一致的方法。