利用识别不清的数学模型进行预测。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Matthew J Simpson, Oliver J Maclaren
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引用次数: 0

摘要

数学生物学领域的许多常用数学模型都面临参数不可识别性的挑战。即使是相对简单的模型,也经常会遇到实际的不可识别性,即数据的质量和数量无法提供足够精确的参数估计。特别是,经常会遇到一些参数可识别而另一些参数不可识别的情况。在这项工作中,我们首次将一种最新的基于似然法的工作流程(称为 "轮廓-明智分析",Profile-Wise Analysis (PWA))应用于不可识别的模型。PWA 工作流程在一个统一的框架内处理可识别性、参数估计和预测问题,易于实施和解释。以前的工作流程实施只处理理想化的可识别问题。在本研究中,我们将以简单的人口增长模型为背景,说明 PWA 工作流程如何应用于结构上不可识别和实际上不可识别的模型。通过处理简单的数学模型,我们可以将 PWA 工作流程展示在一份说教式的、自成一体的文档中,与 GitHub 上提供的相对简单的 Julia 代码一起学习。使用简单数学模型可以将 PWA 工作流的预测区间与黄金标准全似然预测区间进行比较。总之,我们的例子说明了 PWA 工作流程如何为我们提供了处理不可识别性的系统方法,尤其是与其他方法相比,如寻求特别的参数组合,或简单地将参数值设置为任意默认值。重要的是,我们展示了 PWA 工作流程能让我们深入了解一些参数可识别而另一些参数不可识别的常见情况,让我们能够探索一些参数和参数组合的不确定性(无论其可识别性如何)是如何以一种具有洞察力和可解释性的方式影响模型预测的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Making Predictions Using Poorly Identified Mathematical Models.

Making Predictions Using Poorly Identified Mathematical Models.

Many commonly used mathematical models in the field of mathematical biology involve challenges of parameter non-identifiability. Practical non-identifiability, where the quality and quantity of data does not provide sufficiently precise parameter estimates is often encountered, even with relatively simple models. In particular, the situation where some parameters are identifiable and others are not is often encountered. In this work we apply a recent likelihood-based workflow, called Profile-Wise Analysis (PWA), to non-identifiable models for the first time. The PWA workflow addresses identifiability, parameter estimation, and prediction in a unified framework that is simple to implement and interpret. Previous implementations of the workflow have dealt with idealised identifiable problems only. In this study we illustrate how the PWA workflow can be applied to both structurally non-identifiable and practically non-identifiable models in the context of simple population growth models. Dealing with simple mathematical models allows us to present the PWA workflow in a didactic, self-contained document that can be studied together with relatively straightforward Julia code provided on GitHub . Working with simple mathematical models allows the PWA workflow prediction intervals to be compared with gold standard full likelihood prediction intervals. Together, our examples illustrate how the PWA workflow provides us with a systematic way of dealing with non-identifiability, especially compared to other approaches, such as seeking ad hoc parameter combinations, or simply setting parameter values to some arbitrary default value. Importantly, we show that the PWA workflow provides insight into the commonly-encountered situation where some parameters are identifiable and others are not, allowing us to explore how uncertainty in some parameters, and combinations of parameters, regardless of their identifiability status, influences model predictions in a way that is insightful and interpretable.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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