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  • Optimization of Culture Medium for Maximal Production of Spinosad Using an Artificial Neural Network - Genetic Algorithm Modeling.

Optimization of Culture Medium for Maximal Production of Spinosad Using an Artificial Neural Network - Genetic Algorithm Modeling.

Journal of molecular microbiology and biotechnology (2015-07-04)
Zhou Lan, Chen Zhao, Weiqun Guo, Xiong Guan, Xiaolin Zhang
ABSTRACT

Spinosyns, products of secondary metabolic pathway of Saccharopolyspora spinosa, show high insecticidal activity, but difficulty in enhancing the spinosad yield affects wide application. The fermentation process is a key factor in this case. The response surface methodology (RMS) and artificial neural network (ANN) modeling were applied to optimize medium components for spinosad production using S. spinosa strain CGMCC4.1365. Experiments were performed using a rotatable central composite design, and the data obtained were used to construct an ANN model and an RSM model. Using a genetic algorithm (GA), the input space of the ANN model was optimized to obtain optimal values of medium component concentrations. The regression coefficients (R(2)) for the ANN and RSM models were 0.9866 and 0.9458, respectively, indicating that the fitness of the ANN model was higher. The maximal spinosad yield (401.26 mg/l) was obtained using ANN/GA-optimized concentrations. The hybrid ANN/GA approach provides a viable alternative to the conventional RSM approach for the modeling and optimization of fermentation processes.

MATERIALS
Product Number
Brand
Product Description

Sigma-Aldrich
Ammonium acetate, 99.999% trace metals basis
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Sigma-Aldrich
Ammonium acetate, reagent grade, ≥98%
Sigma-Aldrich
Ammonium acetate, Molecular Biology, ≥98%
Sigma-Aldrich
Ammonium acetate, Vetec, reagent grade, 97%