...
首页> 外文期刊>Statistics in medicine >Impact of modelling intra-subject variability on tests based on non-linear mixed-effects models in cross-over pharmacokinetic trials with application to the interaction of tenofovir on atazanavir in HIV patients.
【24h】

Impact of modelling intra-subject variability on tests based on non-linear mixed-effects models in cross-over pharmacokinetic trials with application to the interaction of tenofovir on atazanavir in HIV patients.

机译:在交叉药代动力学试验中,基于非线性混合效应模型的受试者内部变异建模对测试的影响,以及将替诺福韦与阿扎那韦在HIV患者中的相互作用应用。

获取原文
获取原文并翻译 | 示例
           

摘要

We evaluated the impact of modelling intra-subject variability on the likelihood ratio test (LRT) and the Wald test based on non-linear mixed effects models in pharmacokinetic interaction and bioequivalence cross-over trials. These tests were previously found to achieve a good power but an inflated type I error when intra-subject variability was not taken into account. Trials were simulated under H0 and several H1 and analysed with the NLME function. Different configurations of the number of subjects n and of the number of samples per subject J were evaluated for pharmacokinetic interaction and bioequivalence trials. Assuming intra-subject variability in the model dramatically improved the type I error of both interaction tests. For the Wald test, the type I error decreased from 22, 14 and 7.7 per cent for the original (n = 12, J = 10), intermediate (n = 24, J = 5) and sparse (n = 40, J = 3) designs, respectively, down to 7.5, 6.4 and 3.5 per cent when intra-subject variability was modelled. The LRT achieved very similar results. This improvement seemed mostly due to a better estimation of the standard error of the treatment effect. For J = 10, the type I error was found to be closer to 5 per cent when n increased when modelling intra-subject variability. Power was satisfactory for both tests. For bioequivalence trials, the type I error of the Wald test was 6.4, 5.7 and 4.2 per cent for the original, intermediate and sparse designs, respectively, when modelling intra-subject variability. We applied the Wald test to the pharmacokinetic interaction of tenofovir on atazanavir, a novel protease inhibitor. A significant decrease of the area under the curve of atazanavir was found when patients received tenofovir.
机译:我们在药代动力学相互作用和生物等效性交叉试验中,基于非线性混合效应模型,评估了建模受试者内部变异性对似然比检验(LRT)和Wald检验的影响。先前发现这些测试具有良好的功效,但是当不考虑受试者内部的变异性时,I型错误会膨胀。在H0和几个H1下模拟试验,并使用NLME函数进行分析。对于药代动力学相互作用和生物等效性试验,评估了受试者n的数量和每个受试者J的样品数量的不同配置。假设模型中对象内部的变异性显着改善了两个交互测试的I型错误。对于Wald检验,I型错误从原始(n = 12,J = 10),中级(n = 24,J = 5)和稀疏(n = 40,J = 10)的22%,14%和7.7%降低。 3)在对受试者内部的可变性进行建模时,设计分别降低到7.5%,6.4%和3.5%。轻铁取得了非常相似的结果。这种改善似乎主要是由于更好地估计了治疗效果的标准误。对于J = 10,在对受试者内部变异性建模时,当n增加时,I型错误被发现接近5%。两种测试的功率均令人满意。对于生物等效性试验,在模拟受试者内部变异性时,原始设计,中间设计和稀疏设计的Wald检验的I型误差分别为6.4%,5.7%和4.2%。我们将Wald试验应用于替诺福韦对新型蛋白酶抑制剂阿扎那韦的药代动力学相互作用。当患者接受替诺福韦治疗时,发现阿扎那韦曲线下面积明显减少。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号