| Literature DB >> 17897440 |
Alberto Marin-Sanguino1, Eberhard O Voit, Carlos Gonzalez-Alcon, Nestor V Torres.
Abstract
BACKGROUND: In the past, tasks of model based yield optimization in metabolic engineering were either approached with stoichiometric models or with structured nonlinear models such as S-systems or linear-logarithmic representations. These models stand out among most others, because they allow the optimization task to be converted into a linear program, for which efficient solution methods are widely available. For pathway models not in one of these formats, an Indirect Optimization Method (IOM) was developed where the original model is sequentially represented as an S-system model, optimized in this format with linear programming methods, reinterpreted in the initial model form, and further optimized as necessary.Entities:
Mesh:
Year: 2007 PMID: 17897440 PMCID: PMC2231360 DOI: 10.1186/1742-4682-4-38
Source DB: PubMed Journal: Theor Biol Med Model ISSN: 1742-4682 Impact factor: 2.432
Figure 1Feasible area of the first example. The lines show the nullclines of each of the two equations of the system. They intersect at two (unconnected) points, which constitute the only feasible solutions. The feasible area of the relaxed problem in the penalty treatment is marked in grey.
Figure 2Anaerobic fermentation in S. cerevisiae.
Figure 3Tradeoff curve for the anaerobic fermentation pathway if the total substrate pools are kept fixed. No upper limit for total enzyme was used in this case.
Optimization results for the GMA glycolitic model in S. cerevisiae. Constraint violations are shown in boldface. GP column stands for both methods
| variable | basal | IOM | GP & SQP |
| (times basal) | |||
| 0.03456 | 2.1946 | 2.0000 | |
| 1.0110 | 1.5801 | 2.0000 | |
| 9.1876 | 1.5294 | 2.0000 | |
| 0.009532 | 1.1936 | 2.0000 | |
| 1.1278 | 0.5000 | ||
| 19.7 | 7.4873 | 7.3343 | |
| 68.5 | 3.8583 | 3.7794 | |
| 31.7 | 2.9176 | 2.8577 | |
| 49.9 | 6.4799 | 4.7179 | |
| 3440 | 5.7195 | 4.1642 | |
| 14.31 | 0.0100 | 0.0100 | |
| 203 | 0.0100 | 0.0100 | |
| 25.1 | 27.0452 | 14.0396 | |
| 0.042 | 1.0000 | 1.0000 | |
| Flux | 30.2231 | 214.6250 | 198.8542 |
Figure 4A model of the tryptophan operon. Adapted from [32].
Figure 5Effect of the error constraints in the optimization algorithm. Results of optimizing the model of the tryptophan operon using fixed step and fixed tolerance.
Comparison of results obtained for the tryptophan model with different methods. All the results that violate the lower bound for X3 were reproduced with GP by relaxing such bound. Constraint violations are shown in boldface.
| iterative | Modified | |||||
| basal | IOM | IOM | IOM | GP | SQP | |
| 0.18465 | 1.198 | | 1.198 | | 1.198 | | 1.199 | | 1.2 | | |
| 7.9868 | 1.071 | | 1.095 | | 1.055 | | 1.148 | | 1.180 | | |
| 1418 | 0.8 | | 0.825 | | ||||
| 0.00312 | 0.0058 | 0.0053 | 0.062 | 0.00414 | 0.0035 | |
| 5 | 4 | 4 | 4 | 4 | 4 | |
| 2283 | 5000 | 5000 | 5000 | 5000 | 2384 | |
| 430 | 1000 | 1000 | 1000 | 1000 | 1000 | |
| 1.310 | 4.26 | | 3.884 | | 4.54 | | 3.062 | | 2.61 | |
Figure 6Tradeoff analysis for tryptophan model showing flux against lower bound for tryptophan.
A.1 Anaerobic fermentation by error controlled method
| min | ||
| Subject to: | ||
| Steady state | ||
| Error tolerances | ||
A.2 Anaerobic fermentation by penalty treatment
| min | |
| Subject to: | |
| Steady state | |
A.3 Tryptophan by error controlled method
| min | ||
| Subject to: | ||
| Steady state | ||
| Ancilliary variables | ||
| Error tolerances | ||
A.4 Tryptophan penalty approach
| min | ||
| Subject to: | ||
| Steady state | ||
| Ancilliary variables | ||