Parameter Estimation and Identifiability in Kinetic Flux Profiling Models of Metabolism.

IF 2 4区 数学 Q2 BIOLOGY Bulletin of Mathematical Biology Pub Date : 2024-11-27 DOI:10.1007/s11538-024-01386-x
Breanna Guppy, Colleen Mitchell, Eric B Taylor
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Abstract

Metabolic fluxes are the rates of life-sustaining chemical reactions within a cell and metabolites are the components. Determining the changes in these fluxes is crucial to understanding diseases with metabolic causes and consequences. Kinetic flux profiling (KFP) is a method for estimating flux that utilizes data from isotope tracing experiments. In these experiments, the isotope-labeled nutrient is metabolized through a pathway and integrated into the downstream metabolite pools. Measurements of proportion labeled for each metabolite in the pathway are taken at multiple time points and used to fit an ordinary differential equations model with fluxes as parameters. We begin by generalizing the process of converting diagrams of metabolic pathways into mathematical models composed of differential equations and algebraic constraints. The scaled differential equations for proportions of unlabeled metabolite contain parameters related to the metabolic fluxes in the pathway. We investigate flux parameter identifiability given data collected only at the steady state of the differential equation. Next, we give criteria for valid parameter estimations in the case of a large separation of timescales with fast-slow analysis. Bayesian parameter estimation on simulated data from KFP experiments containing both irreversible and reversible reactions illustrates the accuracy and reliability of flux estimations. These analyses provide constraints that serve as guidelines for the design of KFP experiments to estimate metabolic fluxes.

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代谢动力学通量剖析模型中的参数估计和可识别性。
代谢通量是细胞内维持生命的化学反应的速率,代谢物是其组成部分。确定这些通量的变化对于了解具有代谢原因和后果的疾病至关重要。动力学通量分析(KFP)是一种利用同位素追踪实验数据估算通量的方法。在这些实验中,同位素标记的营养物质通过途径进行代谢,并整合到下游代谢物池中。在多个时间点测量途径中每种代谢物的标记比例,并以通量为参数拟合常微分方程模型。我们首先将代谢途径图转化为由微分方程和代数约束条件组成的数学模型的过程加以推广。未标记代谢物比例的比例微分方程包含与途径中代谢通量有关的参数。我们研究了仅在微分方程稳定状态下收集到的数据下通量参数的可识别性。接下来,我们给出了在快慢分析时标分离较大的情况下进行有效参数估计的标准。对包含不可逆和可逆反应的 KFP 实验模拟数据进行贝叶斯参数估计,说明了通量估计的准确性和可靠性。这些分析提供了制约因素,可作为设计 KFP 实验以估算代谢通量的指南。
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来源期刊
CiteScore
3.90
自引率
8.60%
发文量
123
审稿时长
7.5 months
期刊介绍: The Bulletin of Mathematical Biology, the official journal of the Society for Mathematical Biology, disseminates original research findings and other information relevant to the interface of biology and the mathematical sciences. Contributions should have relevance to both fields. In order to accommodate the broad scope of new developments, the journal accepts a variety of contributions, including: Original research articles focused on new biological insights gained with the help of tools from the mathematical sciences or new mathematical tools and methods with demonstrated applicability to biological investigations Research in mathematical biology education Reviews Commentaries Perspectives, and contributions that discuss issues important to the profession All contributions are peer-reviewed.
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