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The artificial neural network approach based on uniform design to optimize the fed-batch fermentation condition: application to the production of iturin A

机译:基于均匀设计的人工神经网络方法优化分批补料发酵条件:在生产Iturin A中的应用

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摘要

Background: Iturin A is a potential lipopeptide antibiotic produced by Bacillus subtilis. Optimization of iturin A yield by adding various concentrations of asparagine (Asn), glutamic acid (Glu) and proline (Pro) during the fed-batch fermentation process was studied using an artificial neural network-genetic algorithm (ANN-GA) and uniform design (UD). Here, ANN-GA based on the UD data was used for the first time to analyze the fed-batch fermentation process. The ANN-GA and UD methodologies were compared based on their fitting ability, prediction and generalization capacity and sensitivity analysis. Results: The ANN model based on the UD data performed well on minimal statistical designed experimental number and the optimum iturin A yield was 13364.5 +/- 271.3 U/mL compared with a yield of 9929.0 +/- 280.9 U/mL for the control (batch fermentation without adding the amino acids). The root-mean-square-error for the ANN model with the training set and test set was 4.84 and 273.58 respectively, which was more than two times better than that for the UD model (32.21 and 483.12). The correlation coefficient for the ANN model with training and test sets was 100% and 92.62%, respectively (compared with 99.86% and 78.58% for UD). The error% for ANN with the training and test sets was 0.093 and 2.19 respectively (compared with 0.26 and 4.15 for UD). The sensitivity analysis of both methods showed the comparable results. The predictive error of the optimal iturin A yield for ANN-GA and UD was 0.8% and 2.17%, respectively. Conclusions: The satisfactory fitting and predicting accuracy of ANN indicated that ANN worked well with the UD data. Through ANN-GA, the iturin A yield was significantly increased by 34.6%. The fitness, prediction, and generalization capacities of the ANN model were better than those of the UD model. Further, although UD could get the insight information between variables directly, ANN was also demonstrated to be efficient in the sensitivity analysis. The results of these comparisons indicated that ANN could be a better alternative way for fermentation optimization with limited number of experiments.
机译:背景:Iturin A是枯草芽孢杆菌产生的一种潜在的脂肽抗生素。使用人工神经网络遗传算法(ANN-GA)和均匀设计研究了在分批补料发酵过程中添加不同浓度的天冬酰胺(Asn),谷氨酸(Glu)和脯氨酸(Pro)来优化iturin A产量的方法(UD)。在这里,首次使用基于UD数据的ANN-GA来分析分批补料发酵过程。根据ANN-GA和UD方法的拟合能力,预测和泛化能力以及敏感性分析,对它们进行了比较。结果:基于UD数据的ANN模型在最小的统计设计实验数量上表现良好,最佳的iturin A产量为13364.5 +/- 271.3 U / mL,而对照的最佳产量为9929.0 +/- 280.9 U / mL(分批发酵而无需添加氨基酸)。具有训练集和测试集的ANN模型的均方根误差分别为4.84和273.58,比UD模型(32.21和483.12)好两倍以上。具有训练集和测试集的ANN模型的相关系数分别为100%和92.62%(而UD的相关系数为99.86%和78.58%)。带有训练集和测试集的ANN的误差%分别为0.093和2.19(而UD的误差率为0.26和4.15)。两种方法的灵敏度分析均显示出可比的结果。 ANN-GA和UD的最佳iturin A产量的预测误差分别为0.8%和2.17%。结论:ANN的满意拟合和预测准确性表明ANN与UD数据配合良好。通过ANN-GA,iturin A的收率显着提高了34.6%。 ANN模型的适应性,预测和泛化能力均优于UD模型。此外,尽管UD可以直接获取变量之间的洞察信息,但ANN在敏感性分析中也被证明是有效的。这些比较的结果表明,在有限数量的实验中,人工神经网络可能是一种更好的发酵优化替代方法。

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