| Literature DB >> 32093622 |
Ricardo Andrade1,2,3, Mahdi Doostmohammadi4,5, João L Santos6, Marie-France Sagot1,2, Nuno P Mira7, Susana Vinga8,9.
Abstract
BACKGROUND: In this paper, we explore the concept of multi-objective optimization in the field of metabolic engineering when both continuous and integer decision variables are involved in the model. In particular, we propose a multi-objective model that may be used to suggest reaction deletions that maximize and/or minimize several functions simultaneously. The applications may include, among others, the concurrent maximization of a bioproduct and of biomass, or maximization of a bioproduct while minimizing the formation of a given by-product, two common requirements in microbial metabolic engineering.Entities:
Keywords: Metabolic Engineering; Optimization; Systems Biology
Mesh:
Substances:
Year: 2020 PMID: 32093622 PMCID: PMC7041195 DOI: 10.1186/s12859-020-3377-1
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1An example of a Pareto-efficient frontier with two objectives, v1 and v2. The red dots A, B, C, D, and E are examples of optimal choices while the points F, G, and H represent non-optimal solutions since we can improve one of the objectives without worsening the other
Fig. 2a Pareto-optimal points obtained upon simulation of yeast alcoholic fermentation maximizing biomass and ethanol production. The fluxes obtained for ethanol and biomass production on the A-G points of the Pareto frontier are as follows: A(8.8;0.43); B(11.8;0.41);C(15.3;0.27);D(17.2;0.19);E(17.4;0.18); F(17.5;0.17); G(19.8;0.0). b Heatmap illustrating the difference of the fluxes between the wild-type and mutants corresponding to each Pareto point. Considering reactions related to glycerol production, glycolysis, TCA cycle, and ethanol production and utilization
Sub-set of the deletions identified by MOMO for each point of the Pareto frontier shown in Fig 2
The complete list of reactions identified by Momo is provided in Additional file 2: Table S2. The reaction number, the corresponding function and the associated S. cerevisae genes are indicated. The flux of biomass and ethanol predicted for each point of the Pareto frontier is indicated in brackets. A selected set of 10 deletions tested in vivo are highlighted in gray and those deletions leading to improved production are further highlighted in bold
The mean wall-clock time (from 3 runs) that MOMO took to run the FBA (step 1), BOP (step 3) with two objectives and the enumeration procedure for K=1,2,3 for the point G of the Pareto front of Fig. 2 just to illustrate the difficulty of the problems
| Problem | Time (s) |
|---|---|
| FBA | 25.2 |
| BOP | 47.3 |
| Enumeration K= 1 | 470.3 |
| Enumeration K= 2 | 1712.6 |
| Enumeration K= 3 | >604800.0 |
For K=3 the program did not finish before the time-out of one weeK (604800s)