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Optimization of Ultrasonic-Assisted Extraction Conditions for Bioactive Components and Antioxidant Activity of Poria cocos (Schw.) Wolf by an RSM-ANN-GA Hybrid Approach.

Shiqi ChenHuixia ZhangLiu YangShuai ZhangHaiyang Jiang
Published in: Foods (Basel, Switzerland) (2023)
In this study, a response surface methodology and an artificial neural network coupled with a genetic algorithm (RSM-ANN-GA) was used to predict and estimate the optimized ultrasonic-assisted extraction conditions of Poria cocos . The ingredient yield and antioxidant potential were determined with different independent variables of ethanol concentration (X 1 ; 25-75%), extraction time (X 2 ; 30-50 min), and extraction solution volume (mL) (X 3 ; 20-60 mL). The optimal conditions were predicted by the RSM-ANN-GA model to be 55.53% ethanol concentration for 48.64 min in 60.00 mL solvent for four triterpenoid acids, and 40.49% ethanol concentration for 30.25 min in 20.00 mL solvent for antioxidant activity and total polysaccharide and phenolic contents. The evaluation of the two modeling strategies showed that RSM-ANN-GA provided better predictability and greater accuracy than the response surface methodology for ultrasonic-assisted extraction of P. cocos . These findings provided guidance on efficient extraction of P. cocos and a feasible analysis/modeling optimization process for the extraction of natural products.
Keyphrases
  • neural network
  • pet ct
  • machine learning
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  • genome wide
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