生物工程中的结构和实用可识别性分析:初学者指南。

IF 5.7 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Linda Wanika, Joseph R Egan, Nivedhitha Swaminathan, Carlos A Duran-Villalobos, Juergen Branke, Stephen Goldrick, Mike Chappell
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引用次数: 0

摘要

数字技术的进步使建模技术在从医疗到建筑的众多学科中占据了前沿地位。数学模型通常使用参数化的常微分方程组来表示,可用于描述不同的过程。为了推断未知参数的可能估计值,这些模型通常使用相关的实验数据进行校准。结构和实际可识别性分析是参数估计前应评估的关键部分。这是因为,可识别性分析可以帮助人们深入了解参数是否可以取单个、多个、甚至无限或可数的值,而这些值最终将对参数估计的可靠性产生影响。此外,可识别性分析还有助于确定所收集的数据是否足够或质量是否足够好,从而真正估算出参数,或者是否需要更多的数据,甚至对模型进行重新参数化,以继续参数估计过程。因此,此类分析在模型设计(结构可识别性分析)和实验数据收集(实际可识别性分析)方面也发挥着重要作用。尽管利用数据估计未知参数值的做法很流行,但这些模型的结构和实际可识别性分析却常常被忽视。不考虑应用此类分析的可能原因可能是缺乏认识、可及性和可用性问题,特别是对于较为复杂的模型和分析方法。本研究的目的是通过应用于成熟和普遍接受的生物工程模型,以易于理解和信息丰富的方式介绍和执行结构和实际可识别性分析。这将有助于提高对建模过程中这一阶段重要性的认识,并使生物工程研究人员了解如何在未来的模型开发中利用从此类分析中获得的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural and practical identifiability analysis in bioengineering: a beginner's guide.

Advancements in digital technology have brought modelling to the forefront in many disciplines from healthcare to architecture. Mathematical models, often represented using parametrised sets of ordinary differential equations, can be used to characterise different processes. To infer possible estimates for the unknown parameters, these models are usually calibrated using associated experimental data. Structural and practical identifiability analyses are a key component that should be assessed prior to parameter estimation. This is because identifiability analyses can provide insights as to whether or not a parameter can take on single, multiple, or even infinitely or countably many values which will ultimately have an impact on the reliability of the parameter estimates. Also, identifiability analyses can help to determine whether the data collected are sufficient or of good enough quality to truly estimate the parameters or if more data or even reparameterization of the model is necessary to proceed with the parameter estimation process. Thus, such analyses also provide an important role in terms of model design (structural identifiability analysis) and the collection of experimental data (practical identifiability analysis). Despite the popularity of using data to estimate the values of unknown parameters, structural and practical identifiability analyses of these models are often overlooked. Possible reasons for non-consideration of application of such analyses may be lack of awareness, accessibility, and usability issues, especially for more complicated models and methods of analysis. The aim of this study is to introduce and perform both structural and practical identifiability analyses in an accessible and informative manner via application to well established and commonly accepted bioengineering models. This will help to improve awareness of the importance of this stage of the modelling process and provide bioengineering researchers with an understanding of how to utilise the insights gained from such analyses in future model development.

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来源期刊
Journal of Biological Engineering
Journal of Biological Engineering BIOCHEMICAL RESEARCH METHODS-BIOTECHNOLOGY & APPLIED MICROBIOLOGY
CiteScore
7.10
自引率
1.80%
发文量
32
审稿时长
17 weeks
期刊介绍: Biological engineering is an emerging discipline that encompasses engineering theory and practice connected to and derived from the science of biology, just as mechanical engineering and electrical engineering are rooted in physics and chemical engineering in chemistry. Topical areas include, but are not limited to: Synthetic biology and cellular design Biomolecular, cellular and tissue engineering Bioproduction and metabolic engineering Biosensors Ecological and environmental engineering Biological engineering education and the biodesign process As the official journal of the Institute of Biological Engineering, Journal of Biological Engineering provides a home for the continuum from biological information science, molecules and cells, product formation, wastes and remediation, and educational advances in curriculum content and pedagogy at the undergraduate and graduate-levels. Manuscripts should explore commonalities with other fields of application by providing some discussion of the broader context of the work and how it connects to other areas within the field.
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