Artificial Neural Network: Optimization and Characterization of α-Amylase Production from Bacillus velezensis Species.

IF 2.7 4区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Sasidhar Bhimana, Saravanan Ravindran
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引用次数: 0

Abstract

This article delves into the application of design of experiments methodologies for the integration of a second-order definitive screening design (DSD) and artificial neural network (ANN) to comprehensively assess and predict nine operational variables aimed at increasing the yield of α-amylase from Bacillus velezensis species. By utilizing environmentally friendly and cost-effective agro-solid substrates such as moong husk and soya bean cake, the physical and chemical parameters influencing α-amylase biosynthesis from B. velezensis species were optimized, gathering early data from experiments conducted in shake flasks through the standard one-factor-at-a-time (OFAT) technique. In the realm of response surface methodology (RSM) utilizing the DSD model, nine process variables were taken into account, including pH, temperature, carbon source, nitrogen source, K2PO4, MgSO4, NaCl, fructose, and NaNO3. Furthermore, optimization based on ANN modeling was employed to enhance the enzyme yield further. Experiments were then executed under the optimal conditions as defined by RSM and ANN to corroborate the predicted optimized enzyme activity. As a result, B. velezensis species exhibited enzyme activity of 1092.49 U/mL under the optimal process variables identified by both RSM and ANN optimization methods, which included pH 5.48, temperature (34.28°C), carbon source (4.09%), nitrogen source (2.02%), K2PO4 (0.34%), MgSO4 (0.14%), NaCl (0.23%), fructose (1.54%), and NaNO3 (0.53%). To encapsulate, compared to the OFAT technique, where the enzyme activity was 418.25 U/mL, a 2.6-fold increase in enzyme activity was achieved by integrating DSD and ANN optimization, considering only nine significant process parameters for the proliferation of B. velezensis species and the maximization of α-amylase activity. The α-amylase enzyme from the B. velezensis species was further purified and characterized. The purification process achieved a 71.77-fold increase in specific activity, with the purified enzyme exhibiting optimal activity at pH 5.5 and 55°C. The enzyme displayed high thermal stability, with minimal activity loss up to 4°C. Kinetic analysis revealed a KM of 0.85 mg/mL and a Vmax of 250 U/mg/min. The enzyme was found to be metal-independent, with inhibition observed for certain metal ions.

人工神经网络:velezensis芽孢杆菌α-淀粉酶生产的优化与表征。
本文探讨了将二阶确定性筛选设计(DSD)和人工神经网络(ANN)相结合的实验设计方法,对旨在提高velezensis芽孢杆菌α-淀粉酶产量的9个操作变量进行综合评估和预测。利用环境友好、经济高效的农业固体基质(如月皮和豆饼),通过标准的单因素单次(OFAT)技术,在摇瓶中收集早期实验数据,优化了影响velezensis物种α-淀粉酶生物合成的物理和化学参数。在利用DSD模型的响应面法(RSM)领域,考虑了9个过程变量,包括pH、温度、碳源、氮源、K2PO4、MgSO4、NaCl、果糖和NaNO3。在此基础上,采用基于人工神经网络建模的优化方法进一步提高酶产率。然后在RSM和ANN确定的最优条件下进行实验,以验证预测的最优酶活性。结果表明,在pH 5.48、温度(34.28°C)、碳源(4.09%)、氮源(2.02%)、K2PO4(0.34%)、MgSO4(0.14%)、NaCl(0.23%)、果糖(1.54%)和NaNO3(0.53%)的优化工艺条件下,velezensis的酶活为1092.49 U/mL。综上所示,与酶活性为418.25 U/mL的OFAT技术相比,仅考虑9个重要的工艺参数和α-淀粉酶活性最大化,通过整合DSD和ANN优化,酶活性提高了2.6倍。进一步纯化并鉴定了白僵菌α-淀粉酶。纯化过程使比活性提高了71.77倍,纯化后的酶在pH 5.5和55°C下表现出最佳活性。该酶表现出很高的热稳定性,在4°C时活性损失最小。动力学分析显示KM为0.85 mg/mL, Vmax为250 U/mg/min。发现该酶不依赖于金属,对某些金属离子有抑制作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biotechnology and applied biochemistry
Biotechnology and applied biochemistry 工程技术-生化与分子生物学
CiteScore
6.00
自引率
7.10%
发文量
117
审稿时长
3 months
期刊介绍: Published since 1979, Biotechnology and Applied Biochemistry is dedicated to the rapid publication of high quality, significant research at the interface between life sciences and their technological exploitation. The Editors will consider papers for publication based on their novelty and impact as well as their contribution to the advancement of medical biotechnology and industrial biotechnology, covering cutting-edge research in synthetic biology, systems biology, metabolic engineering, bioengineering, biomaterials, biosensing, and nano-biotechnology.
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