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A new exact test for the evaluation of population pharmacokinetic and/or pharmacodynamic models using random projections.

机译:使用随机投影评估种群药代动力学和/或药效学模型的新精确测试。

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PURPOSE: Within-subject dependency of observations has a strong impact on the evaluation of population pharmacokinetic (PK) and/or pharmacodynamic (PD) models. To our knowledge, none of the current model evaluation tools correctly address this issue. We present a new method with a global test and easy diagnostic plot which relies on the use of a random projection technique that allows the analysis of dependent data. METHODS: For each subject, the vector of standardised residuals is calculated and projected onto many random directions drawn uniformly from the unit sphere. Our test compares the empirical distribution of projections with their distribution under the model. Simulation studies assess the level of the test and compare its performance with common metrics including normalised prediction distribution errors and different types of weighted residuals. An application to real data is performed. RESULTS: In contrast to other evaluated methods, our test shows adequate level for all models and designs investigated, which confirms its good theoretical properties. The weakness of other methods is demonstrated and discussed. CONCLUSIONS: This new test appears promising and could be used in combination with other tools to drive model evaluation in population PK/PD analyses.
机译:目的:观察对象之间的依存关系对总体药代动力学(PK)和/或药效学(PD)模型的评估有很大影响。就我们所知,当前的模型评估工具都无法正确解决此问题。我们提出了一种具有全局测试和简单诊断图的新方法,该方法依赖于使用随机投影技术来分析相关数据。方法:对于每个对象,计算标准化残差的向量并将其投影到从单位球体均匀绘制的许多随机方向上。我们的测试将投影的经验分布与其在模型下的分布进行比较。仿真研究评估了测试的水平,并将其性能与常见指标进行了比较,这些指标包括标准化的预测分布误差和不同类型的加权残差。执行对真实数据的应用。结果:与其他评估方法相比,我们的测试显示出对所有模型和设计的研究都足够的水平,这证实了其良好的理论特性。演示并讨论了其他方法的弱点。结论:这项新的测试看起来很有希望,可以与其他工具结合使用,以进行人口PK / PD分析中的模型评估。

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