Litcius/Paper detail

Response surface methodology and artificial neural network based media optimization for pullulan production in Aureobasidium pullulans

Nageswar Sahu, Biswanath Mahanty, Dibyajyoti Haldar

2024International Journal of Biological Macromolecules12 citationsDOIOpen Access PDF

Abstract

The selection and optimization of carbon and nitrogen sources are essential for enhancing pullulan production in Aureobasidium pullulans . In this study, combinations of carbon (sucrose, fructose, glucose) and nitrogen sources ((NH 4 ) 2 SO 4 , urea, NaNO 3 ) were screened, where sucrose and NaNO 3 offered the highest pullulan yield (9.33 g L −1 ). Plackett–Burman design of experiment identified KH 2 PO 4 , NaCl, and sucrose as significant factors, which were further optimized using a central composite design. A hyperparameter-optimized artificial neural network (ANN) model with a 3-6-2-1 architecture demonstrated superior predictive accuracy (R 2 : 0.96) and generalizability (R 2 CV : 0.74) over a reduced quadratic model (R 2 : 0.82). The predicted pullulan yield (31.9 g L −1 ) under ANN model optimized conditions (sucrose: 79.9 g L −1 , KH 2 PO 4 : 0.25 g L −1 , NaCl: 4.3 g L −1 ) closely matched with the observed yield (30.17 g L −1 ), while quadratic model showed a significant deviation (39.7 g L −1 vs. 21.0 g L −1 ), highlighting the reliability of the ANN model.

Topics & Concepts

Aureobasidium pullulansPullulanResponse surface methodologyBiological systemArtificial neural networkChemistryFood scienceComputer scienceBiologyArtificial intelligenceChromatographyBiochemistryPolysaccharideFermentationPolysaccharides Composition and ApplicationsAgricultural Engineering and MechanizationPlant Surface Properties and Treatments