利用响应面法和机器学习模型优化Microbulbifer sp.的琼脂酶生产。

IF 2.2 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Lubhan Cherwoo, Ritika Dhaneshwar, Parminder Kaur, Ranjana Bhatia, Hema Setia
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引用次数: 0

摘要

琼脂酶在食品、化妆品和医药等行业中起着至关重要的作用,它们在DNA恢复、食品凝胶化、化妆品配方和废物处理中发挥着关键作用。然而,目前的琼脂酶来源往往面临着与低产量、不稳定的活性和高生产成本相关的限制。因此,有必要为工业规模的琼脂糖生产识别和优化更有效的微生物来源。本研究是对微生物源胞外琼脂酶优化生产的详尽调查。通过定性定量分析,优化了微球菌的生长条件,以提高琼脂酶的产量。采用响应面法考察关键参数的交互作用,得到了琼脂浓度为0.3%、pH值为7、温度为25℃、孵育时间为36 h的最佳条件,验证实验结果表明,琼脂酶活性为317.97 μmol min-1 (f值为44.75,r²为0.9827)。研究还探索了各种机器学习算法,其中径向基函数神经网络表现最好,r平方值为0.989,均方误差为0.44,表明了预测琼脂酶活性的可靠性和稳健性,具有较高的准确性和泛化性。优化的生产条件和机器学习预测显著提高了琼脂酶生产的可扩展性和效率,其中孵育时间和温度对琼脂酶生产的影响最大。这些发现将有助于扩大生产规模,并在工业装置的生物反应器操作过程中进行实时调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing agarase production from Microbulbifer sp. using response surface methodology and machine learning models.

Agarase enzymes are critical in industries like food, cosmetics, and medicine where they play a critical role in DNA recovery, food gelling, cosmetic formulations, and waste treatment. However, current agarase sources often face limitations related to low yields, inconsistent activity, and high production costs. Therefore, there is a need to identify and optimize more efficient microbial sources for industrial-scale agarose production. This study is an exhaustive investigation into the optimized production of extracellular agarase from a microbial source. Through qualitative-quantitative analysis, the study optimizes the growth conditions of Microbulbifer sp. for enhanced agarase production. Response surface methodology is used to investigate the interactive effects of key parameters to get the optimized conditions as 0.3% agar, pH 7, 25°C temperature, and 36-hour incubation time, confirmed by a verification experiment yielding 317.97 μmol min-1 agarase activity (F-value of 44.75 and an R-squared of 0.9827). The study also explores various machine learning algorithms where radial basis function neural network performed best with R-squared values of 0.989 and low mean squared error of 0.44, indicating the reliability and robustness of predicting agarase activity with high accuracy and generalization. The optimized production conditions and machine learning predictions offer significant improvements in the scalability and efficiency of agarase production with incubation time and temperature having the most dominating effect on agarase production. These findings would help in scaling up production and real-time adjustments during bioreactor operations in an industrial setup.

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来源期刊
Environmental Technology
Environmental Technology 环境科学-环境科学
CiteScore
6.50
自引率
3.60%
发文量
0
审稿时长
4 months
期刊介绍: Environmental Technology is a leading journal for the rapid publication of science and technology papers on a wide range of topics in applied environmental studies, from environmental engineering to environmental biotechnology, the circular economy, municipal and industrial wastewater management, drinking-water treatment, air- and water-pollution control, solid-waste management, industrial hygiene and associated technologies. Environmental Technology is intended to provide rapid publication of new developments in environmental technology. The journal has an international readership with a broad scientific base. Contributions will be accepted from scientists and engineers in industry, government and universities. Accepted manuscripts are generally published within four months. Please note that Environmental Technology does not publish any review papers unless for a specified special issue which is decided by the Editor. Please do submit your review papers to our sister journal Environmental Technology Reviews at http://www.tandfonline.com/toc/tetr20/current
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