两种新的用户友好型方法,用于评估分类和连续量表的药物计量参数可识别性。

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY CPT: Pharmacometrics & Systems Pharmacology Pub Date : 2024-05-07 DOI:10.1002/psp4.13147
Martijn van Noort, Martijn Ruppert
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引用次数: 0

摘要

参数可识别性方法评估模型参数是否由观测数据唯一确定。虽然模型拟合的成功与否可以提供一些相关信息,但在尝试任何拟合之前确定可识别性,或将可识别性与其他问题区分开来,还是很有价值的。灵敏度矩阵(SM)和费雪信息矩阵(FIM)这两个概念非常适合可识别性分析,但一直未得到充分利用。本文介绍了两种新开发的方法,一种基于 SM,另一种基于 FIM。这两种方法都能评估各种模型的局部可识别性,只需有限的努力就能使用,而且免费提供。这两种方法都要求输入微分方程组形式的拟议模型、参数值和研究设计。这些方法不需要观测值或成功的模型拟合,因此可以先验使用。传统方法对可识别性问题提供单一的分类(是/否)答案。在许多情况下,这种方法信息量不大,可识别性取决于研究设计(如剂量水平或观察时间)和参数值。表征可识别性水平的连续量表指标将提供更详细、更相关的信息,例如用于指导模型开发。我们的两种方法既提供了分类指标,也提供了连续指标。这两种方法都通过计算参数空间中最难识别的方向,指出哪些参数组合难以识别。这些方法通过一个示例问题进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Two new user-friendly methods to assess pharmacometric parameter identifiability on categorical and continuous scales

Parameter identifiability methods assess whether the parameters of a model are uniquely determined by the observations. While the success of a model fit can provide some information on this, it can be valuable to determine identifiability before any fit has been attempted, or to separate identifiability from other issues. Two concepts that lean themselves well for identifiability analysis and have been underutilized are the sensitivity matrix (SM) and the Fisher information matrix (FIM). This paper presents two newly developed methods, one based on the SM and one based on the FIM. Both methods can assess local identifiability for a wide set of models, can be used with limited effort, and are freely available. The methods require the proposed model in the form of a set of differential equations, the parameter values, and the study design as input. They can be used a priori, as they do not need observed values or a successful model fit. Traditional methods provide a single categorical (yes/no) answer to the question of identifiability. In many cases, this is not very informative, and identifiability depends on study design (e.g., dose levels or observation times) and parameter values. Indicators on a continuous scale characterizing the level of identifiability would provide more detailed and relevant information, for example, to guide model development. Our two methods provide both categorical and continuous indicators. Both methods indicate which parameter combinations are difficult to identify by calculating the directions in parameter space that are least identifiable. The methods were validated with an example problem.

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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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