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Optimization of actinomycin V production by Streptomyces triostinicus using artificial neural network and genetic algorithm

IR@CDRI: CSIR-Central Drug Research Institute, Lucknow

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Field Value
 
Creator Singh, Vineeta
Khan, Mahvish
Khan, Saif
Tripathi, C K M
 
Date 2010-12-11T07:25:29Z
2010-12-11T07:25:29Z
2009
 
Identifier Applied Microbiology and Biotechnology 82, 2, 379-385
http://hdl.handle.net/123456789/637
 
Description Artificial neural network (ANN) and genetic algorithm (GA) were applied to optimize the medium components for the production of actinomycinV from a newly isolated strain of Streptomyces triostinicus which is not reported to produce this class of antibiotics. Experiments were conducted using the central composite design (CCD), and the data generated was used to build an artificial neural network model. The concentrations of five medium components (MgSO4, NaCl, glucose, soybean meal and CaCO3) served as inputs to the neural network model, and the antibiotic yield served as outputs of the model. Using the genetic algorithm, the input space of the neural network model was optimized to find out the optimum values for maximum antibiotic yield. Maximum antibiotic yield of 452.0 mg l−1 was obtained at the GA-optimized concentrations of medium components (MgSO4 3.657; NaCl 1.9012; glucose 8.836; soybean meal 20.1976 and CaCO3 13.0842 gl−1). The antibiotic yield obtained by the ANN/GA was 36.7% higher than the yield obtained with the response surface methodology (RSM).
 
Format 216348 bytes
application/pdf
 
Language en
 
Subject Actinomycin V
Streptomyces
Central composite design
Neural network
Genetic algorithm
 
Title Optimization of actinomycin V production by Streptomyces triostinicus using artificial neural network and genetic algorithm
 
Type Article