Application of the novel manta-ray foraging algorithm to optimize acidic peptidase production in solid-state fermentation using binary agro-industrial waste.
Maurice George EkpenyongAtim AsitokUbong BenAndrew N AmenaghawonHeri Septya KusumaAnthony AkpanSylvester AntaiPublished in: Preparative biochemistry & biotechnology (2023)
Peptidases, which constitute about 20% of the global enzyme market, have found applications in detergent, food and pharmaceutical industries, and could be produced on a large scale using low-cost agro-industrial waste. An acidophilic Bacillus cereus strain produced acidic peptidase on binary-agro-industrial waste comprising yam peels and fish processing waste at pH 4.5 with high catalytic activity. A five-variable central composite rotatable design of a response surface methodology was used to model bioprocess conditions for improved peptidase production in solid-state fermentation. Data generated was leveraged as the basis for applying the novel Manta-ray foraging optimization-linked feed-forward artificial neural network to predict bioprocess conditions optimally. Results obtained from the optimization experiments revealed a significant coefficient of determination of 0.9885 with low-performance error. The bioprocess predicted a peptidase activity of 1035.32 U/mL under optimized conditions set as 54.8 g/100 g yam peels, 23.85 g/100 g fish waste, 0.31 g/100 g CaCl 2 , 47.54% (v/w) moisture content, and pH 2. Peptidase activity was improved 5-fold, and was stable for 240 min between pH 2.5 and 3.5. Michaelis-Menten kinetics revealed a Km of 0.119 mM and a catalytic efficiency of 45462.19 mM -1 min -1 . The bioprocess holds promise for sustainable enzyme-driven applications.
Keyphrases
- heavy metals
- solid state
- sewage sludge
- neural network
- municipal solid waste
- low cost
- risk assessment
- ionic liquid
- wastewater treatment
- life cycle
- machine learning
- big data
- single cell
- computed tomography
- magnetic resonance
- deep learning
- human health
- high resolution
- saccharomyces cerevisiae
- crystal structure
- liquid chromatography