Max Planck Institute for Dynamics of Complex Technical Systems, Magdeburg, Germany.
PLoS Comput Biol. 2020 Jul 27;16(7):e1008110. doi: 10.1371/journal.pcbi.1008110. eCollection 2020 Jul.
The concept of minimal cut sets (MCS) provides a flexible framework for analyzing properties of metabolic networks and for computing metabolic intervention strategies. In particular, it has been used to support the targeted design of microbial strains for bio-based production processes. Herein we present a number of major extensions that generalize the existing MCS approach and broaden its scope for applications in metabolic engineering. We first introduce a modified approach to integrate gene-protein-reaction associations (GPR) in the metabolic network structure for the computation of gene-based intervention strategies. In particular, we present a set of novel compression rules for GPR associations, which effectively speedup the computation of gene-based MCS by a factor of up to one order of magnitude. These rules are not specific for MCS and as well applicable to other computational strain design methods. Second, we enhance the MCS framework by allowing the definition of multiple target (undesired) and multiple protected (desired) regions. This enables precise tailoring of the metabolic solution space of the designed strain with unlimited flexibility. Together with further generalizations such as individual cost factors for each intervention, direct combinations of reaction/gene deletions and additions as well as the possibility to search for substrate co-feeding strategies, the scope of the MCS framework could be broadly extended. We demonstrate the applicability and performance benefits of the described developments by computing (gene-based) Escherichia coli strain designs for the bio-based production of 2,3-butanediol, a chemical, that has recently received much attention in the field of metabolic engineering. With our extended framework, we could identify promising strain designs that were formerly unpredictable, including those based on substrate co-feeding.
最小割集 (MCS) 的概念为分析代谢网络的性质和计算代谢干预策略提供了一个灵活的框架。特别是,它已被用于支持基于微生物菌株的生物生产过程的靶向设计。在此,我们提出了一些主要的扩展,这些扩展扩展了现有的 MCS 方法,并拓宽了其在代谢工程中的应用范围。
我们首先引入了一种改进的方法,将基因-蛋白-反应关联 (GPR) 整合到代谢网络结构中,以计算基于基因的干预策略。特别是,我们提出了一组新的 GPR 关联压缩规则,这些规则可将基于基因的 MCS 计算速度提高高达一个数量级。这些规则不仅适用于 MCS,也适用于其他计算菌株设计方法。
其次,我们通过允许定义多个目标(不期望的)和多个保护(期望的)区域来增强 MCS 框架。这使设计菌株的代谢解决方案空间能够实现精确调整,具有无限的灵活性。与进一步的泛化,如每个干预措施的个体成本因素、反应/基因删除和添加的直接组合以及搜索底物共喂养策略的可能性相结合,MCS 框架的范围可以得到广泛扩展。
我们通过计算基于生物的 2,3-丁二醇生产的大肠杆菌菌株设计(基于基因)来演示所描述的开发的适用性和性能优势,2,3-丁二醇是代谢工程领域最近备受关注的一种化学品。使用我们扩展的框架,我们可以识别以前不可预测的有前途的菌株设计,包括基于底物共喂养的设计。