Seyis Mihriban, Razaghi-Moghadam Zahra, Nikoloski Zoran
Bioinformatics Department, Institute of Biochemistry and Biology, University of Potsdam, Potsdam, Germany.
Systems Biology and Mathematical Modeling Group, Max Planck Institute of Molecular Plant Physiology, Potsdam, Germany.
PLoS Comput Biol. 2025 Apr 7;21(4):e1012972. doi: 10.1371/journal.pcbi.1012972. eCollection 2025 Apr.
Metabolites acting as substrates and regulators of all biochemical reactions play an important role in maintaining the functionality of cellular metabolism. Despite advances in the constraint-based framework for genome-scale metabolic modeling, we lack reliable proxies for metabolite concentrations that can be efficiently determined and that allow us to investigate the relationship between metabolite concentrations in specific metabolic states in the absence of measurements. Here, we introduce a constraint-based approach, the flux-sum coupling analysis (FSCA), which facilitates the study of the interdependencies between metabolite concentrations by determining coupling relationships based on the flux-sum of metabolites. Application of FSCA on metabolic models of Escherichia coli, Saccharomyces cerevisiae, and Arabidopsis thaliana showed that the three coupling relationships are present in all models and pinpointed similarities in coupled metabolite pairs. Using the available concentration measurements of E. coli metabolites, we demonstrated that the coupling relationships identified by FSCA can capture the qualitative associations between metabolite concentrations and that flux-sum is a reliable proxy for metabolite concentration. Therefore, FSCA provides a novel tool for exploring and understanding the intricate interdependencies between the metabolite concentrations, advancing the understanding of metabolic regulation, and improving flux-centered systems biology approaches.
作为所有生化反应底物和调节剂的代谢物,在维持细胞代谢功能方面发挥着重要作用。尽管基于约束的基因组规模代谢建模框架取得了进展,但我们缺乏可有效测定的代谢物浓度可靠代理,这些代理能让我们在没有测量数据的情况下研究特定代谢状态下代谢物浓度之间的关系。在此,我们引入一种基于约束的方法——通量和耦合分析(FSCA),该方法通过基于代谢物的通量和确定耦合关系,促进对代谢物浓度之间相互依存关系的研究。将FSCA应用于大肠杆菌、酿酒酵母和拟南芥的代谢模型表明,所有模型中都存在这三种耦合关系,并指出了耦合代谢物对中的相似之处。利用大肠杆菌代谢物的现有浓度测量数据,我们证明了FSCA识别出的耦合关系能够捕捉代谢物浓度之间的定性关联,并且通量和是代谢物浓度的可靠代理。因此,FSCA为探索和理解代谢物浓度之间复杂的相互依存关系、推进对代谢调节的理解以及改进以通量为中心的系统生物学方法提供了一种新工具。