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Statistical versus neural network-embedded swarm intelligence optimization of a metallo-neutral-protease production: activity kinetics and food industry applications.

Maurice George EkpenyongSylvester Peter Antai
Published in: Preparative biochemistry & biotechnology (2024)
An integrated approach involving response surface methodology (RSM) and artificial neural network-ant-colony hybrid optimization (ANN-ACO) was adopted to develop a bioprocess medium to increase the yield of Bacillus cereus neutral protease under submerged fermentation conditions. The ANN-ACO model was comparatively superior (predicted r 2 = 98.5%, mean squared error [MSE] = 0.0353) to RSM model (predicted r 2 = 86.4%, MSE = 23.85) in predictive capability arising from its low performance error. The hybrid model recommended a medium containing (gL -1 ) molasses 45.00, urea 9.81, casein 25.45, Ca 2+ 1.23, Zn 2+ 0.021, Mn 2+ 0.020, and 4.45% (vv -1 ) inoculum, for a 6.75-fold increase in protease activity from a baseline of 76.63 UmL -1 . Yield was further increased in a 5-L bioreactor to a final volumetric productivity of 3.472 mg(Lh) -1 . The 10.0-fold purified 46.6-kDa-enzyme had maximum activity at pH 6.5, 45-55 °C, with K m of 6.92 mM, V max of 769.23 µmolmL -1 min -1 , k cat of 28.49 s -1 , and k cat /K m of 4.117 × 103 M -1 s -1 , at 45 °C, pH 6.5. The enzyme was stabilized by Ca 2+ , activated by Zn 2+ but inhibited by EDTA suggesting that it was a metallo-protease. The biomolecule significantly clarified orange and pineapple juices indicating its food industry application.
Keyphrases
  • neural network
  • heavy metals
  • wastewater treatment
  • climate change
  • risk assessment
  • human health
  • gram negative