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Bioequivalence tests based on individual estimates using non-compartmental or model-based analyses: evaluation of estimates of sample means and type I error for different designs.

机译:生物等效性测试是基于非房间隔或基于模型的分析,基于单个估算值:评估样本均值估算值和不同设计的I型误差。

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PURPOSE: The main objective of this work is to compare the standard bioequivalence tests based on individual estimates of the area under the curve and the maximal concentration obtained by non-compartmental analysis (NCA) to those based on individual empirical Bayes estimates (EBE) obtained by nonlinear mixed effects models. METHODS: We evaluate by simulation the precision of sample means estimates and the type I error of bioequivalence tests for both approaches. Crossover trials are simulated under H ( 0 ) using different numbers of subjects (N) and of samples per subject (n). We simulate concentration-time profiles with different variability settings for the between-subject and within-subject variabilities and for the variance of the residual error. RESULTS: Bioequivalence tests based on NCA show satisfactory properties with low and high variabilities, except when the residual error is high, which leads to a very poor type I error, or when n is small, which leads to biased estimates. Tests based on EBE lead to an increase of the type I error, when the shrinkage is above 20%, which occurs notably when NCA fails. CONCLUSIONS: For small n or data with high residual error, tests based on a global data analysis should be considered instead of those based on individual estimates.
机译:目的:这项工作的主要目的是将基于曲线下面积的单个估计值和通过非隔室分析(NCA)获得的最大浓度的标准生物等效性测试与基于单个经验贝叶斯估计值(EBE)的标准生物等效性测试进行比较通过非线性混合效应模型。方法:我们通过仿真评估两种方法的均值样本估计值的准确性和生物等效性测试的I型误差。在H(0)下使用不同数量的受试者(N)和每个受试者的样本(n)模拟交叉试验。我们针对受试者之间和受试者内部的变异以及残差的变异模拟了具有不同变异性设置的浓度-时间曲线。结果:基于NCA的生物等效性测试显示出令人满意的低变异性和高变异性,除非当残留误差很高时,这会导致非常差的I型误差,或者当n值很小时,这会导致估计偏差。当收缩率超过20%时,基于EBE的测试会导致I型错误的增加,这在NCA失败时尤其明显。结论:对于较小的n或具有较高残差的数据,应考虑基于全局数据分析的测试,而不是基于单个估计的测试。

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