| Literature DB >> 31758233 |
Daan H de Groot1, Julia Lischke2, Riccardo Muolo2, Robert Planqué3, Frank J Bruggeman2, Bas Teusink2.
Abstract
Living cells can express different metabolic pathways that support growth. The criteria that determine which pathways are selected in which environment remain unclear. One recurrent selection is overflow metabolism: the simultaneous usage of an ATP-efficient and -inefficient pathway, shown for example in Escherichia coli, Saccharomyces cerevisiae and cancer cells. Many models, based on different assumptions, can reproduce this observation. Therefore, they provide no conclusive evidence which mechanism is causing overflow metabolism. We compare the mathematical structure of these models. Although ranging from flux balance analyses to self-fabricating metabolism and expression models, we can rewrite all models into one standard form. We conclude that all models predict overflow metabolism when two, model-specific, growth-limiting constraints are hit. This is consistent with recent theory. Thus, identifying these two constraints is essential for understanding overflow metabolism. We list all imposed constraints by these models, so that they can hopefully be tested in future experiments.Entities:
Keywords: Elementary flux modes; Elementary growth modes; Genome-scale modeling; Growth rate maximization; Metabolism and expression; Overflow metabolism
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Year: 2019 PMID: 31758233 PMCID: PMC7010627 DOI: 10.1007/s00018-019-03380-2
Source DB: PubMed Journal: Cell Mol Life Sci ISSN: 1420-682X Impact factor: 9.261
Fig. 1A general view on overflow metabolism and how it is modeled. In general, overflow metabolism is the simultaneous usage of two independent growth-supporting subnetworks with different substrate yields. In the top left subfigure, the blue pathway produces more energy equivalents per gram nutrient than the red pathway. Together with the non-depicted rest of the metabolic network, the blue and red pathway can separately lead to steady-state growth. In the top right subfigure, we illustrate that imposing homogeneous constraints, in this case a steady-state assumption, gives rise to relations between optimization variables. The optimization variables can for example be reaction rates or enzyme concentrations, but for simplicity, we only show one variable here. The model objective is here visualized along the y-axis, so that the combination of variables that gives the highest y-coordinate is optimal. In the bottom figures, we add inhomogeneous constraints on the optimization variables. These affect which combination of variables is optimal. Under one constraint, exclusive usage of the high-yield pathway is optimal. Adding the second constraint leads to the optimality of a combination of the two pathways
Fig. 2FBA models and self-fabrication models lead to a similar mathematical problem. In the top figures we illustrate two of the reviewed approaches. FBA models consider steady-state fluxes through networks of metabolic reactions with constraints on the reaction rates. A virtual biomass reaction is added as a proxy for the growth rate. Self-fabricator models make the synthesis of enzymes and the ribosome explicit, and can therefore model the growth rate as the volume increase due to the production of components. The enzyme concentrations can now be viewed as the optimization variables, so that protein concentration constraints can also be included. In the bottom figures we show a highly simplified illustration of the solution space of both approaches. In the linear approaches, FBA and proteome-constrained models, all quantities depend linearly on the growth rate, while there are nonlinear dependencies in the self-fabricator models. However, we showed that in both cases, overflow metabolism is caused by two growth-limiting constraints
An overview of the models that try to explain overflow metabolism, including which constraints were used in addition to the steady-state assumptions
| Paper | Type | Constraint 1 | Constraint 2 |
|---|---|---|---|
| Majewski et al. [ | FBA | Glucose uptake rate | Electron transfer capacity |
| Varma et al. [ | FBA | Glucose uptake rate | Oxygen uptake rate |
| Carlson et al. [ | FBA | Glucose uptake rate | Oxygen uptake rate |
| Niebel et al. [ | tFBA | Glucose uptake rate | Free energy dissipation |
| Basan et al. [ | Resource | Glucose uptake rate | Total proteome |
| Mori et al. [ | Resource | Total proteome | |
| Vazquez et al. [ | Resource | Glucose uptake rate | Macromolecular density |
| Van Hoek et al. [ | Resource | Glucose uptake rate | Macromolecular density |
| Zhuang et al. [ | Resource | Glucose uptake rate | Membrane occupancy |
| Szenk et al. [ | Resource | Glucose uptake rate | Membrane occupancy |
| Shlomi et al. [ | Resource | Glucose uptake rate | Total proteome |
| Molenaar et al. [ | Self-fabr | Macromolecular density | |
| Goelzer et al. [ | Self-fabr | Membrane density | Macromolecular density |
| O’Brien et al. [ | Self-fabr | Glucose uptake rate | Macromolecular density |