机器学习预测蓝藻的全系统代谢通量控制

IF 6.8 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Metabolic engineering Pub Date : 2024-02-21 DOI:10.1016/j.ymben.2024.02.013
Amit Kugler, Karin Stensjö
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引用次数: 0

摘要

代谢通量及其控制机制是细胞代谢的基础,为生物系统研究和生物技术应用提供了启示。然而,对微生物细胞工厂中生化反应控制的定量和预测性理解,尤其是在系统层面的理解还很有限。在这项工作中,我们介绍了 ARCTICA,一个将基于约束的建模与机器学习工具相结合来应对这一挑战的计算框架。以蓝藻模型 Synechocystis sp. PCC 6803 为底盘,我们证明了 ARCTICA 能有效模拟全球规模的代谢通量控制。主要发现有:(i) 光合生物生产主要由卡尔文-本森-巴塞尔循环(CBB)中的酶控制,而不是由参与最终产品生物合成的酶;(ii) CBB 循环的催化能力限制了光合作用活性和下游途径;(iii) 核酮糖-1,5-二磷酸羧化酶/氧化酶(RuBisCO)是 CBB 循环中的一个主要限制步骤,但不是最主要的限制步骤。预测的代谢反应与之前的实验观察结果基本一致,验证了我们的建模方法。ARCTICA 是了解细胞生理学和预测基因组尺度代谢网络中限速步骤的重要管道,从而为蓝藻的生物工程提供指导。
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Machine learning predicts system-wide metabolic flux control in cyanobacteria

Metabolic fluxes and their control mechanisms are fundamental in cellular metabolism, offering insights for the study of biological systems and biotechnological applications. However, quantitative and predictive understanding of controlling biochemical reactions in microbial cell factories, especially at the system level, is limited. In this work, we present ARCTICA, a computational framework that integrates constraint-based modelling with machine learning tools to address this challenge. Using the model cyanobacterium Synechocystis sp. PCC 6803 as chassis, we demonstrate that ARCTICA effectively simulates global-scale metabolic flux control. Key findings are that (i) the photosynthetic bioproduction is mainly governed by enzymes within the Calvin–Benson–Bassham (CBB) cycle, rather than by those involve in the biosynthesis of the end-product, (ii) the catalytic capacity of the CBB cycle limits the photosynthetic activity and downstream pathways and (iii) ribulose-1,5-bisphosphate carboxylase/oxygenase (RuBisCO) is a major, but not the most, limiting step within the CBB cycle. Predicted metabolic reactions qualitatively align with prior experimental observations, validating our modelling approach. ARCTICA serves as a valuable pipeline for understanding cellular physiology and predicting rate-limiting steps in genome-scale metabolic networks, and thus provides guidance for bioengineering of cyanobacteria.

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来源期刊
Metabolic engineering
Metabolic engineering 工程技术-生物工程与应用微生物
CiteScore
15.60
自引率
6.00%
发文量
140
审稿时长
44 days
期刊介绍: Metabolic Engineering (MBE) is a journal that focuses on publishing original research papers on the directed modulation of metabolic pathways for metabolite overproduction or the enhancement of cellular properties. It welcomes papers that describe the engineering of native pathways and the synthesis of heterologous pathways to convert microorganisms into microbial cell factories. The journal covers experimental, computational, and modeling approaches for understanding metabolic pathways and manipulating them through genetic, media, or environmental means. Effective exploration of metabolic pathways necessitates the use of molecular biology and biochemistry methods, as well as engineering techniques for modeling and data analysis. MBE serves as a platform for interdisciplinary research in fields such as biochemistry, molecular biology, applied microbiology, cellular physiology, cellular nutrition in health and disease, and biochemical engineering. The journal publishes various types of papers, including original research papers and review papers. It is indexed and abstracted in databases such as Scopus, Embase, EMBiology, Current Contents - Life Sciences and Clinical Medicine, Science Citation Index, PubMed/Medline, CAS and Biotechnology Citation Index.
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