Bioinformatics Advance Access originally published online on March 1, 2007
Bioinformatics 2007 23(9):1115-1123; doi:10.1093/bioinformatics/btm050
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Improving metabolic flux estimation via evolutionary optimization for convex solution space
1Department of Computer Science and Technology, 2School of Life Science and 3Department of Systems Biology, University of Science and Technology of China, Hefei, China
*To whom correspondence should be addressed.
| Abstract |
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Motivation: Flux estimation by using 13 C-labeling pattern information of metabolites is currently the only method that can give accurate, detailed quantification of all intracellular fluxes in the central metabolism of a microorganism. In essence, it corresponds to a constrained optimization problem which minimizes a weighted distance between measured and simulated results. Characteristics, such as existence of multiple local minima, non-linear and non-differentiable make this problem a special difficulty.
Results: In the present work, we propose an evolutionary-based global optimization algorithm taking advantage of the convex feature of the problem's solution space. Based on the characteristics of convex spaces, specialized initial population and evolutionary operators are designed to solve 13C-based metabolic flux estimation problem robustly and efficiently. The algorithm was applied to estimate the central metabolic fluxes in Escherichia coli and compared with conventional optimization technique. Experimental results illustrated that our algorithm is capable of achieving fast convergence to good near-optima and maintaining the robust nature of evolutionary algorithms at the same time.
Availability: Available from the authors upon request.
Contact: hrzheng{at}ustc.edu.cn
Supplementary information: Colour versions of the figure are available online as a part of the Supplementary data.
Received on September 10, 2006; revised on January 6, 2007; accepted on February 8, 2007