4.6 Article

Integration of Parallel 13C-labeling Experiments and In Silico Pathway Analysis for Enhanced Production of Ascomycin

Journal

BIOTECHNOLOGY AND BIOENGINEERING
Volume 114, Issue 5, Pages 1036-1044

Publisher

WILEY
DOI: 10.1002/bit.26223

Keywords

ascomycin; C-13-labeling experiments; metabolic network model; elementary flux modes analysis; Streptomyces hygroscopicus var; ascomyceticus

Funding

  1. National 973 Project of China [2013CB733600]
  2. Key Program of National Natural Science Foundation of China [21236005]
  3. National Natural Science Foundation of China [21606165, 21376171, 21676189]
  4. R & D program of Tianjin [16YFZCSY00780]

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Herein, the hyper-producing strain for ascomycin was engineered based on C-13-labeling experiments and elementary flux modes analysis (EFMA). First, the metabolism of non-model organism Streptomyces hygroscopicus var. ascomyceticus SA68 was investigated and an updated network model was reconstructed using C-13-metabolic flux analysis. Based on the precise model, EFMA was further employed to predict genetic targets for higher ascomycin production. Chorismatase (FkbO) and pyruvate carboxylase (Pyc) were predicted as the promising overexpression and deletion targets, respectively. The corresponding mutant TD-FkbO and TD-DPyc exhibited the consistency effects between model prediction and experimental results. Finally, the combined genetic manipulations were performed, achieving a high-yield ascomycin engineering strain TD-DPyc-FkbO with production up to 610 mg/L, 84.8% improvement compared with the parent strain SA68. These results manifested that the integration of 13C-labeling experiments and in silico pathway analysis could serve as a promising concept to enhance ascomycin production, as well as other valuable products. (C) 2016 Wiley Periodicals, Inc.

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