Yang Chen, Zhao Yingqi, Xue Boyuan, Wang Shaojie, Su Haijia
State Key Laboratory of Green Biomanufacturing, National Energy R&D Center for Biorefinery, Beijing Key Laboratory of Green Chemicals Biomanufacturing, Beijing Synthetic Bio-manufacturing Technology Innovation Center, Beijing University of Chemical Technology, No.15, Beisanhuan East Road, Beijing 100029, PR China.
Brief Bioinform. 2025 May 1;26(3). doi: 10.1093/bib/bbaf295.
Simulating production in microbial consortia is crucial for optimizing metabolic engineering strategies to achieve high yields. However, existing algorithms for modeling polymicrobial metabolic fluxes, based on genome-scale metabolic networks, often overlook the conflicts and coordination between biosynthesis tasks and self-growth interests, leading to limited prediction accuracy. This study introduces the Polymicrobial cell factory Yield Forecasting (PYF) algorithm, which simulates the relationships between biosynthesis and growth more effectively by incorporating the expression degrees of biosynthesis pathways. PYF was shown to accurately predict the production of Escherichia coli-E. coli consortia under various scenarios, including mono-metabolite exchange, dual-carbon sources, and dual-metabolite exchange. The results revealed a mean relative error (MRE) of 0.106, an average determination coefficient of 0.883, and an average hypothesis testing parameter of 0.930 between predicted and experimental productions. Compared with the recent metabolic simulation algorithm, PYF reduced the MRE by ~61.6%. PYF is adaptable and enables accurate simulation even without enzyme catalytic data. Meanwhile, PYF rapidly analyzed and optimized metabolic engineering strategies through sensitivity analysis. By eliminating the need for specialized division and integration of polymicrobial metabolic networks, PYF greatly simplifies the simulation process, offering a novel approach for predicting and enhancing production in microbial consortia.
模拟微生物群落中的生产对于优化代谢工程策略以实现高产至关重要。然而,现有的基于基因组规模代谢网络的多微生物代谢通量建模算法,往往忽视了生物合成任务与自身生长利益之间的冲突和协调,导致预测准确性有限。本研究引入了多微生物细胞工厂产量预测(PYF)算法,该算法通过纳入生物合成途径的表达程度,更有效地模拟了生物合成与生长之间的关系。结果表明,PYF能够准确预测大肠杆菌 - 大肠杆菌群落在各种情况下的产量,包括单代谢物交换、双碳源和双代谢物交换。结果显示,预测产量与实验产量之间的平均相对误差(MRE)为0.106,平均决定系数为0.883,平均假设检验参数为0.930。与最近的代谢模拟算法相比,PYF将MRE降低了约61.6%。PYF具有适应性,即使没有酶催化数据也能进行准确模拟。同时,PYF通过敏感性分析快速分析和优化代谢工程策略。通过消除对多微生物代谢网络进行专门划分和整合的需求,PYF大大简化了模拟过程,为预测和提高微生物群落中的产量提供了一种新方法。