| Literature DB >> 28639622 |
Axel von Kamp1, Steffen Klamt1.
Abstract
Computational modelling of metabolic networks has become an established procedure in the metabolic engineering of production strains. One key principle that is frequently used to guide the rational design of microbial cell factories is the stoichiometric coupling of growth and product synthesis, which makes production of the desired compound obligatory for growth. Here we show that the coupling of growth and production is feasible under appropriate conditions for almost all metabolites in genome-scale metabolic models of five major production organisms. These organisms comprise eukaryotes and prokaryotes as well as heterotrophic and photoautotrophic organisms, which shows that growth coupling as a strain design principle has a wide applicability. The feasibility of coupling is proven by calculating appropriate reaction knockouts, which enforce the coupling behaviour. The study presented here is the most comprehensive computational investigation of growth-coupled production so far and its results are of fundamental importance for rational metabolic engineering.Entities:
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Year: 2017 PMID: 28639622 PMCID: PMC5489714 DOI: 10.1038/ncomms15956
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Figure 1Design of production strains with growth-coupled product synthesis.
The yield space shows the projection of all feasible steady-state flux distributions in the network with respect to their biomass yield and product yield. Herein we demand strong coupling, meaning that in the mutant strain to be constructed, growth without product synthesis is not possible anymore (production without growth is allowed). All (remaining) flux distributions in the mutant strain reach a product yield above a demanded threshold.
Details of the models used in this study.
| 1,805 | 2,582 (1,761) | 1,414 (1,154) | 1,168 (607) | 15 (glucose) | 3.15 | ||
| 1,228 | 1,577 (1,217) | 1,020 (822) | 557 (395) | 10 (glucose) | 1 | ||
| 984 | 1,065 (647) | 788 (510) | 277 (137) | 5.4 (glucose) | 3.2 | ||
| 1,037 | 1,280 (1,094) | 961 (877) | 319 (217) | 2 (glucose) | 1.9 | ||
| 518 | 594 (594) | 584 (584) | 10 (10) | 100 (photons) | — |
ATP, adenosine triphosphate.
Operative reactions are those that can carry a flux under the considered constraints and growth conditions (minimal medium). Irrepressible reactions (for example, exchange reactions, transporters, technical or pseudo reactions) are not allowed to be knocked out. The substrate for all organisms is glucose, except for Synechocystis sp. PCC 6803, which absorbs photons. ATP maintenance is a technical reaction that represents the ATP requirements for non-growth-associated maintenance processes. Where such a reaction was provided by the respective models, the lower limit of its flux is set to the value shown in the table.
Figure 2Feasibility of strong coupling in Escherichia coli and Saccharomyces cerevisiae.
Percentage of substrate-producible organic metabolites from E. coli and S. cerevisiae for which feasibility (coloured bars) or infeasibility (grey bars) of strong coupling can be proven, depending on the minimum yield level and conditions used. Statistics for the cut set sizes and MILP computation time are given in the table. The column (50*) for E. coli (aerobic growth) shows the cMCS sizes that result when the solver is restarted from the solution associated with the original cut set (for 50% minimum yield level) and minimization of the number of cuts is continued for up to 10 min for each cMCS. Sixty-eight of the cMCS found in this way can even be proven to be the smallest cMCS, that is, the solver has found an optimal solution.
Figure 3Feasibility of strong coupling in Aspergillus niger, Corynebacterium glutamicum and Synechocystis species PCC 6803.
Percentage of substrate-producible organic metabolites from A. niger, C. glutamicum and Synechocystis species PCC 6803 for which feasibility of strong coupling can be proven, depending on the minimum yield level. For the practically obligate aerobes A. niger and C. glutamicum aerobic growth on glucose was considered while photoautotrophic metabolism was assumed for Synechocystis. Statistics for the cMCS sizes and MILP computation time are shown in the table.