Title :
Pareto Optimal Design for Synthetic Biology
Author :
Patane, Andrea ; Santoro, Andrea ; Costanza, Jole ; Carapezza, Giovanni ; Nicosia, Giuseppe
Author_Institution :
Dept. of Math. & Comput. Sci., Univ. of Catania, Catania, Italy
Abstract :
Recent advances in synthetic biology call for robust, flexible and efficient in silico optimization methodologies. We present a Pareto design approach for the bi-level optimization problem associated to the overproduction of specific metabolites in Escherichia coli. Our method efficiently explores the high dimensional genetic manipulation space, finding a number of trade-offs between synthetic and biological objectives, hence furnishing a deeper biological insight to the addressed problem and important results for industrial purposes. We demonstrate the computational capabilities of our Pareto-oriented approach comparing it with state-of-the-art heuristics in the overproduction problems of i) 1,4-butanediol, ii) myristoyl-CoA, i ii) malonyl-CoA , iv) acetate and v) succinate. We show that our algorithms are able to gracefully adapt and scale to more complex models and more biologically-relevant simulations of the genetic manipulations allowed. The Results obtained for 1,4-butanediol overproduction significantly outperform results previously obtained, in terms of 1,4-butanediol to biomass formation ratio and knock-out costs. In particular overproduction percentage is of +662.7%, from 1.425 mmolh-1gDW-1 (wild type) to 10.869 mmolh-1gDW-1, with a knockout cost of 6. Whereas, Pareto-optimal designs we have found in fatty acid optimizations strictly dominate the ones obtained by the other methodologies, e.g., biomass and myristoyl-CoA exportation improvement of +21.43% (0.17 h-1) and +5.19% (1.62 mmolh-1gDW-1), respectively. Furthermore CPU time required by our heuristic approach is more than halved. Finally we implement pathway oriented sensitivity analysis, epsilon-dominance analysis and robustness analysis to enhance our biological understanding of the problem and to improve the optimization algorithm capabilities.
Keywords :
Pareto analysis; genetics; genomics; microorganisms; optimisation; sensitivity analysis; 1,4-butanediol-biomass formation ratio; Escherichia coli; Pareto-optimal designs; Pareto-oriented approach; bilevel optimization problem; epsilon-dominance analysis; fatty acid optimizations; genetic manipulations; high dimensional genetic manipulation space; in silico optimization methodologies; malonyl-CoA; myristoyl-CoA; pathway oriented sensitivity analysis; succinate; synthetic biology; Biochemistry; Biological system modeling; Genetics; Linear programming; Optimization; Production; 1,4-butanediol; Pareto epsilon-optimality; Pareto front; Pareto optimality; enzymes up- and down-regulation; fatty acids; flux balance analysis; multi-objective optimization; pathway oriented sensitivity analysis;
Journal_Title :
Biomedical Circuits and Systems, IEEE Transactions on
DOI :
10.1109/TBCAS.2015.2467214