School of Chemical & Biomolecular Engineering, Georgia Institute of Technology, 311 Ferst Dr NW, Atlanta, GA, 30332-0100, USA.
NPJ Syst Biol Appl. 2024 Aug 22;10(1):94. doi: 10.1038/s41540-024-00412-x.
Ordinary differential equation (ODE) models are powerful tools for studying the dynamics of metabolic pathways. However, key challenges lie in constructing ODE models for metabolic pathways, specifically in our limited knowledge about which metabolite levels control which reaction rates. Identification of these regulatory networks is further complicated by the limited availability of relevant data. Here, we assess the conditions under which it is feasible to accurately identify regulatory networks in metabolic pathways by computationally fitting candidate network models with biochemical systems theory (BST) kinetics to data of varying quality. We use network motifs commonly found in metabolic pathways as a simplified testbed. Key features correlated with the level of difficulty in identifying the correct regulatory network were identified, highlighting the impact of sampling rate, data noise, and data incompleteness on structural uncertainty. We found that for a simple branched network motif with an equal number of metabolites and fluxes, identification of the correct regulatory network can be largely achieved and is robust to missing one of the metabolite profiles. However, with a bi-substrate bi-product reaction or more fluxes than metabolites in the network motif, the identification becomes more challenging. Stronger regulatory interactions and higher metabolite concentrations were found to be correlated with less structural uncertainty. These results could aid efforts to predict whether the true metabolic regulatory network can be computationally identified for a given stoichiometric network topology and dataset quality, thus helping to identify optimal measures to mitigate such identifiability issues in kinetic model development.
常微分方程 (ODE) 模型是研究代谢途径动力学的有力工具。然而,构建代谢途径的 ODE 模型面临着关键挑战,特别是我们对哪些代谢物水平控制哪些反应速率的了解有限。由于相关数据的有限可用性,这些调控网络的识别变得更加复杂。在这里,我们评估了通过计算将候选网络模型与生化系统理论 (BST) 动力学拟合到不同质量的数据来准确识别代谢途径中调控网络的可行性条件。我们使用代谢途径中常见的网络基元作为简化的测试平台。确定了与识别正确调控网络的难度相关的关键特征,突出了采样率、数据噪声和数据不完整性对结构不确定性的影响。我们发现,对于具有相等数量的代谢物和通量的简单分支网络基元,正确调控网络的识别可以在很大程度上实现,并且对一个代谢物谱的缺失具有鲁棒性。然而,对于具有双底物双产物反应或网络基元中的通量多于代谢物的情况,识别变得更加具有挑战性。更强的调控相互作用和更高的代谢物浓度与较少的结构不确定性相关。这些结果可以帮助预测对于给定的计量网络拓扑和数据集质量,是否可以通过计算来识别真实的代谢调控网络,从而有助于确定在动力学模型开发中减轻这种可识别性问题的最佳措施。