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Multidimensional heuristic process for high-yield production of astaxanthin and fragrance molecules in Escherichia coli.


ABSTRACT: Optimization of metabolic pathways consisting of large number of genes is challenging. Multivariate modular methods (MMMs) are currently available solutions, in which reduced regulatory complexities are achieved by grouping multiple genes into modules. However, these methods work well for balancing the inter-modules but not intra-modules. In addition, application of MMMs to the 15-step heterologous route of astaxanthin biosynthesis has met with limited success. Here, we expand the solution space of MMMs and develop a multidimensional heuristic process (MHP). MHP can simultaneously balance different modules by varying promoter strength and coordinating intra-module activities by using ribosome binding sites (RBSs) and enzyme variants. Consequently, MHP increases enantiopure 3S,3'S-astaxanthin production to 184?mg?l-1 day-1 or 320?mg?l-1. Similarly, MHP improves the yields of nerolidol and linalool. MHP may be useful for optimizing other complex biochemical pathways.

SUBMITTER: Zhang C 

PROVIDER: S-EPMC5948211 | biostudies-literature | 2018 May

REPOSITORIES: biostudies-literature

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Multidimensional heuristic process for high-yield production of astaxanthin and fragrance molecules in Escherichia coli.

Zhang Congqiang C   Seow Vui Yin VY   Chen Xixian X   Too Heng-Phon HP  

Nature communications 20180511 1


Optimization of metabolic pathways consisting of large number of genes is challenging. Multivariate modular methods (MMMs) are currently available solutions, in which reduced regulatory complexities are achieved by grouping multiple genes into modules. However, these methods work well for balancing the inter-modules but not intra-modules. In addition, application of MMMs to the 15-step heterologous route of astaxanthin biosynthesis has met with limited success. Here, we expand the solution space  ...[more]

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