Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education, College of Computer Science and Technology, Jilin University, Changchun, 130012, China.
Translational Medical Center for Stem Cell Therapy and Institute for Regenerative Medicine, Shanghai East Hospital, Bioinformatics Department, School of Life Sciences and Technology, Tongji University, Shanghai, China.
Nat Commun. 2023 Sep 14;14(1):5700. doi: 10.1038/s41467-023-41392-6.
Genome-scale metabolic networks (GSMs) are fundamental systems biology representations of a cell's entire set of stoichiometrically balanced reactions. However, such static GSMs do not incorporate the functional organization of metabolic genes and their dynamic regulation (e.g., operons and regulons). Specifically, there are numerous topologically coupled local reactions through which fluxes are coordinated; the global growth state often dynamically regulates many gene expression of metabolic reactions via global transcription factor regulators. Here, we develop a GSM reconstruction method, Decrem, by integrating locally coupled reactions and global transcriptional regulation of metabolism by cell state. Decrem produces predictions of flux and growth rates, which are highly correlated with those experimentally measured in both wild-type and mutants of three model microorganisms Escherichia coli, Saccharomyces cerevisiae, and Bacillus subtilis under various conditions. More importantly, Decrem can also explain the observed growth rates by capturing the experimentally measured flux changes between wild-types and mutants. Overall, by identifying and incorporating locally organized and regulated functional modules into GSMs, Decrem achieves accurate predictions of phenotypes and has broad applications in bioengineering, synthetic biology, and microbial pathology.
基因组规模代谢网络(GSMs)是细胞所有化学计量平衡反应的基础系统生物学表示形式。然而,这种静态的 GSM 并未纳入代谢基因的功能组织及其动态调控(例如操纵子和调节子)。具体而言,有许多拓扑耦合的局部反应可以协调通量;全局生长状态通常通过全局转录因子调节剂动态调节许多代谢反应的基因表达。在这里,我们通过整合细胞状态下局部耦合反应和代谢的全局转录调控,开发了一种 GSM 重建方法 Decrem。Decrem 产生了通量和生长速率的预测值,这些预测值与三种模型微生物大肠杆菌、酿酒酵母和枯草芽孢杆菌在各种条件下的野生型和突变体的实验测量值高度相关。更重要的是,Decrem 还可以通过捕获野生型和突变体之间实验测量的通量变化来解释观察到的生长速率。总体而言,通过识别和整合局部组织和调节的功能模块到 GSM 中,Decrem 实现了对表型的准确预测,并在生物工程、合成生物学和微生物病理学中有广泛的应用。