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离散生化系统理论

Discrete Biochemical Systems Theory.

作者信息

Voit Eberhard O, Olivença Daniel V

机构信息

The Wallace H. Coulter Department of Biomedical Engineering, Georgia Institute of Technology and Emory University, Atlanta, GA, United States.

出版信息

Front Mol Biosci. 2022 May 4;9:874669. doi: 10.3389/fmolb.2022.874669. eCollection 2022.

Abstract

Almost every biomedical systems analysis requires early decisions regarding the choice of the most suitable representations to be used. De facto the most prevalent choice is a system of ordinary differential equations (ODEs). This framework is very popular because it is flexible and fairly easy to use. It is also supported by an enormous array of stand-alone programs for analysis, including many distinct numerical solvers that are implemented in the main programming languages. Having selected ODEs, the modeler must then choose a mathematical format for the equations. This selection is not trivial as nearly unlimited options exist and there is seldom objective guidance. The typical choices include ad hoc representations, default models like mass-action or Lotka-Volterra equations, and generic approximations. Within the realm of approximations, linear models are typically successful for analyses of engineered systems, but they are not as appropriate for biomedical phenomena, which often display nonlinear features such as saturation, threshold effects or limit cycle oscillations, and possibly even chaos. Power-law approximations are simple but overcome these limitations. They are the key ingredient of Biochemical Systems Theory (BST), which uses ODEs exclusively containing power-law representations for all processes within a model. BST models cover a vast repertoire of nonlinear responses and, at the same time, have structural properties that are advantageous for a wide range of analyses. Nonetheless, as all ODE models, the BST approach has limitations. In particular, it is not always straightforward to account for genuine discreteness, time delays, and stochastic processes. As a new option, we therefore propose here an alternative to BST in the form of discrete Biochemical Systems Theory (dBST). dBST models have the same generality and practicality as their BST-ODE counterparts, but they are readily implemented even in situations where ODEs struggle. As a case study, we illustrate dBST applied to the dynamics of the aryl hydrocarbon receptor (AhR), a signal transduction system that simultaneously involves time delays and stochasticity.

摘要

几乎每一项生物医学系统分析都需要尽早决定使用最合适的表示方法。事实上,最普遍的选择是常微分方程(ODE)系统。这个框架非常受欢迎,因为它灵活且相当易于使用。它还得到了大量独立分析程序的支持,包括许多用主要编程语言实现的不同数值求解器。选择了ODE之后,建模者必须为方程选择一种数学格式。这种选择并非易事,因为存在几乎无限的选项,而且很少有客观的指导。典型的选择包括临时表示、诸如质量作用或洛特卡 - 沃尔泰拉方程之类的默认模型以及通用近似。在近似领域内,线性模型通常在工程系统分析中很成功,但它们不太适合生物医学现象,生物医学现象常常表现出非线性特征,如饱和度、阈值效应或极限环振荡,甚至可能是混沌。幂律近似很简单,但克服了这些局限性。它们是生化系统理论(BST)的关键要素,BST在模型中对所有过程仅使用包含幂律表示的ODE。BST模型涵盖了大量的非线性响应,同时具有有利于广泛分析的结构特性。尽管如此,与所有ODE模型一样,BST方法也有局限性。特别是,考虑真正的离散性、时间延迟和随机过程并不总是那么直接。因此,作为一种新的选择,我们在此提出离散生化系统理论(dBST)作为BST的替代方案。dBST模型与其BST - ODE对应模型具有相同的通用性和实用性,但即使在ODE难以应用的情况下也能轻松实现。作为一个案例研究,我们展示了dBST应用于芳烃受体(AhR)的动力学,AhR是一个同时涉及时间延迟和随机性的信号转导系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7372/9116487/33617fd0ef6b/fmolb-09-874669-g001.jpg

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