EMILiO: a fast algorithm for genome-scale strain design

Metab Eng. 2011 May;13(3):272-81. doi: 10.1016/j.ymben.2011.03.002. Epub 2011 Mar 21.

Abstract

Systems-level design of cell metabolism is becoming increasingly important for renewable production of fuels, chemicals, and drugs. Computational models are improving in the accuracy and scope of predictions, but are also growing in complexity. Consequently, efficient and scalable algorithms are increasingly important for strain design. Previous algorithms helped to consolidate the utility of computational modeling in this field. To meet intensifying demands for high-performance strains, both the number and variety of genetic manipulations involved in strain construction are increasing. Existing algorithms have experienced combinatorial increases in computational complexity when applied toward the design of such complex strains. Here, we present EMILiO, a new algorithm that increases the scope of strain design to include reactions with individually optimized fluxes. Unlike existing approaches that would experience an explosion in complexity to solve this problem, we efficiently generated numerous alternate strain designs producing succinate, l-glutamate and l-serine. This was enabled by successive linear programming, a technique new to the area of computational strain design.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms*
  • Escherichia coli / physiology*
  • Genetic Engineering / methods*
  • Genome, Bacterial / physiology*
  • Genome-Wide Association Study
  • Glutamic Acid / genetics
  • Glutamic Acid / metabolism
  • Serine / genetics
  • Serine / metabolism
  • Succinic Acid / metabolism

Substances

  • Glutamic Acid
  • Serine
  • Succinic Acid