| Literature DB >> 28984191 |
Meltem Apaydin1, Liang Xu2, Bo Zeng2, Xiaoning Qian3.
Abstract
BACKGROUND: Flux Balance Analysis (FBA) based mathematical modeling enables in silico prediction of systems behavior for genome-scale metabolic networks. Computational methods have been derived in the FBA framework to solve bi-level optimization for deriving "optimal" mutant microbial strains with targeted biochemical overproduction. The common inherent assumption of these methods is that the surviving mutants will always cooperate with the engineering objective by overproducing the maximum desired biochemicals. However, it has been shown that this optimistic assumption may not be valid in practice.Entities:
Keywords: Pessimistic bi-level optimization; Stoichiometric models; Strain optimization
Mesh:
Substances:
Year: 2017 PMID: 28984191 PMCID: PMC5629566 DOI: 10.1186/s12864-017-4025-7
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1The pessimistic bi-level problem structure for knockout identification. The inner-most level problem defines the optimization of cell survival based on a specific cellular objective (e.g., maximization of biomass growth in P-OptKnock and minimization of flux changes in P-ROOM). The outer level maximizes the worst-case scenario for Succinate production
Fig. 2Pessimistic Models and Evaluation. The outer-level objective values of P-ROOM and P-OptKnock for a) K=3, b) K=4, and c) K=5 plotted with increasing ε for the core E. coli metabolic network. The evaluation Succinate rates of the optimistic models, ROOM and OptKnock, are also given as red and cyan solid lines, respectively. (Color-coded as Blue: P-OptKnock, Black: P-ROOM)
Knockout strains derived by pessimistic and optimistic models on the core E.coli metabolic network
|
| Knockouts | Succinate production | |
|---|---|---|---|
| P-ROOM | 3 | 6pg →ru5p + co2 + nadph, oac + accoa →cit, ac →ac(ext) | 76.97 |
| 4 | g6p →6pg + nadph, oac + accoa →cit, suc ⇔fum + fadh2, ac →ac(ext) | 82.36 | |
| 5 | g6p →6pg + nadph, mal →pyr + co2 + nadph, 3pg + glu →ser + akg + nadh, fadh2 + 0.5o2 →2atp, nadh ⇔nadph | 107.07 | |
| P-OptKnock | 3 | 6pg →ru5p + co2 + nadph, oac + accoa → cit, ac →ac(ext) | 76.97 |
| 4 | g6p →6pg + nadph, oac + accoa →cit, suc ⇔fum + fadh2, ac →ac(ext) | 82.36 | |
| 5 | g6p →6pg + nadph, mal →pyr + co2 + nadph, 3pg + glu →ser + akg + nadh, fadh2 + 0.5o2 →2atp, nadh ⇔nadph | 107.07 | |
| ROOM | 3 | dhap ⇔gap, g6p →6pg + nadph, fadh2 + 0.5o2 →2atp | 93.92 |
| 4 | dhap ⇔gap, g6p →6pg + nadph, fadh2 + 0.5o2 →2atp, glyc(ext) → | 108.22 | |
| 5 | g6p →6pg + nadph, mal →pyr + co2 + nadph, 3pg + glu →ser + akg + nadh, fadh2 + 0.5o2 →2atp, nadh ⇔nadph | 115.58 | |
| OptKnock | 3 | g6p →6pg + nadph, mal →pyr + co2 + nadph, nadh ⇔nadph | 110.179 |
| 4 | g6p →6pg + nadph, mal →pyr + co2 + nadph, 3pg + glu →ser + akg + nadh, nadh ⇔ nadph | 123.314 | |
| 5 | g6p →6pg + nadph, 3pg + glu →ser + akg + nadh, nadh ⇔nadph, glyc ⇔glyc(ext), ac(ext) → | 129.786 |
Fig. 3Pessimistic Models. The outer-level objective values of P-ROOM and P-OptKnock for K=3 plotted as solid lines with increasing ε for a large-scale iAF1260 E. coli metabolic network. (Color-coded as Blue: P-OptKnock, Black: P-ROOM)
Knockout strains derived by pessimistic and optimistic models on the iAF1260 E.coli metabolic network
| Knockouts | min vsuccinate | max vsuccinate | ||
|---|---|---|---|---|
| ROOM | - | 0 | 0 | |
| FBA | - | 0 | 0.372 | |
| P-ROOM | ∙ mlthf + nadp ⇔methf + nadph |
| 8.09 | 8.09 |
| ∙ coa + pyr →accoa + for |
| 5.69 | 40.08 | |
| ∙ q8 + succ →fum + q8h2 | ||||
| P-OptKnock | ∙ mlthf + nadp ⇔methf + nadph |
| 8.23 | 8.23 |
| ∙ coa + pyr →accoa + for |
| 4.78 | 80.52 | |
| ∙ q8 + succ →fum + q8h2 | ||||
| ROOM | ∙ g6p + nadp ⇔6pgl + h + nadph |
| 31.36 | 31.36 |
| ∙ h2o + pser-L →pi + ser-L |
| 0 | 76.143 | |
| ∙ q8 + succ →fum + q8h2 | ||||
| OptKnock | ∙ mlthf + nadp ⇔methf + nadph |
| 8.23 | 8.23 |
| ∙ coa + pyr →accoa + for |
| 4.78 | 80.52 | |
| ∙ q8 + succ →fum + q8h2 |