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Construction of a Robust Cofactor Self-Sufficient Bienzyme Biocatalytic System for Dye Decolorization and its Mathematical Modeling

机译:鲁棒辅因子自足双酶生物催化染料脱色系统的构建及其数学模型

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摘要

A triphenylmethane reductase derived from sp. KCTC 18061P was coupled with a glucose 1-dehydrogenase from sp. ZJ to construct a cofactor self-sufficient bienzyme biocatalytic system for dye decolorization. Fed-batch experiments showed that the system is robust to maintain its activity after 15 cycles without the addition of any expensive exogenous NADH. Subsequently, three different machine learning approaches, including multiple linear regression (MLR), random forest (RF), and artificial neural network (ANN), were employed to explore the response of decolorization efficiency to the variables of the bienzyme system. Statistical parameters of these models suggested that a three-layered ANN model with six hidden neurons was capable of predicting the dye decolorization efficiency with the best accuracy, compared with the models constructed by MLR and RF. Weights analysis of the ANN model showed that the ratio between two enzymes appeared to be the most influential factor, with a relative importance of 54.99% during the decolorization process. The modeling results confirmed that the neural networks could effectively reproduce experimental data and predict the behavior of the decolorization process, especially for complex systems containing multienzymes.
机译:衍生自sp。的三苯基甲烷还原酶。 KCTC 18061P与来自sp。的葡萄糖1-脱氢酶偶联。 ZJ构建辅因子自足的双酶生物催化体系,用于染料脱色。补料分批实验表明,该系统在15个循环后仍能保持活性,而无需添加任何昂贵的外源NADH。随后,采用了三种不同的机器学习方法,包括多元线性回归(MLR),随机森林(RF)和人工神经网络(ANN),以探讨脱色效率对双酶系统变量的响应。这些模型的统计参数表明,与由MLR和RF构造的模型相比,具有六个隐藏神经元的三层ANN模型能够最准确地预测染料的脱色效率。 ANN模型的权重分析表明,两种酶之间的比例似乎是影响最大的因素,在脱色过程中相对重要性为54.99%。建模结果证实,神经网络可以有效地复制实验数据并预测脱色过程的行为,特别是对于包含多酶的复杂系统而言。

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