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首页> 外文期刊>Journal of pharmacokinetics and pharmacodynamics >Experiment design for nonparametric models based on minimizing Bayes Risk: application to voriconazole
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Experiment design for nonparametric models based on minimizing Bayes Risk: application to voriconazole

机译:基于最小化贝叶斯风险的非参数模型的实验设计:在伏立康唑的应用

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摘要

An experimental design approach is presented for individualized therapy in the special case where the prior information is specified by a nonparametric (NP) population model. Here, a NP model refers to a discrete probability model characterized by a finite set of support points and their associated weights. An important question arises as to how to best design experiments for this type of model. Many experimental design methods are based on Fisher information or other approaches originally developed for parametric models. While such approaches have been used with some success across various applications, it is interesting to note that they largely fail to address the fundamentally discrete nature of the NP model. Specifically, the problem of identifying an individual from a NP prior is more naturally treated as a problem of classification, i.e., to find a support point that best matches the patient's behavior. This paper studies the discrete nature of the NP experiment design problem from a classification point of view. Several new insights are provided including the use of Bayes Risk as an information measure, and new alternative methods for experiment design. One particular method, denoted as MMopt (multiple-model optimal), will be examined in detail and shown to require minimal computation while having distinct advantages compared to existing approaches. Several simulated examples, including a case study involving oral voriconazole in children, are given to demonstrate the usefulness of MMopt in pharmacokinetics applications.
机译:在特殊情况下呈现实验性设计方法,在特殊情况下由非参数(NP)群体模型规定的特殊情况。这里,NP模型是指由一个有限的支持点及其相关的权重的分立概率模型。一个重要问题是出于如何最佳设计实验的这种类型的模型。许多实验设计方法基于Fisher信息或最初为参数模型开发的其他方法。虽然这些方法已经在各种应用中取得了一些成功,但有趣的是要注意,它们在很大程度上未能解决NP模型的基本离散性质。具体地,从NP之前识别个人的问题更自然地被视为分类的问题,即找到最能匹配患者行为的支持点。本文从分类的角度研究了NP实验设计问题的离散性质。提供了几种新洞察,包括使用贝叶斯风险作为信息测量,以及用于实验设计的新的替代方法。将详细检查一个特定方法,表示为MMOPT(多模型最佳),并显示有与现有方法相比具有不同优势的最小计算。若干模拟实例包括涉及儿童口服伏立康唑的案例研究,以证明MMOPT在药代动力学应用中的有用性。

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