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利用响应面法和人工神经网络-遗传算法对甲基芽孢杆菌zju323生产吡咯喹啉醌(PQQ)的培养基进行优化。

Medium optimization for pyrroloquinoline quinone (PQQ) production by Methylobacillus sp. zju323 using response surface methodology and artificial neural network-genetic algorithm.

作者信息

Wei Peilian, Si Zhenjun, Lu Yao, Yu Qingfei, Huang Lei, Xu Zhinan

机构信息

a School of Biological and Chemical Engineering, Zhejiang University of Science & Technology , Hangzhou , P. R. China.

b Key Laboratory of Biomass Chemical Engineering (Ministry of Education), College of Chemical and Biological Engineering, Zhejiang University , Hangzhou , P. R. China.

出版信息

Prep Biochem Biotechnol. 2017 Aug 9;47(7):709-719. doi: 10.1080/10826068.2017.1315596. Epub 2017 Apr 27.

Abstract

Methylobacillus sp. zju323 was adopted to improve the biosynthesis of pyrroloquinoline quinone (PQQ) by systematic optimization of the fermentation medium. The Plackett-Burman design was implemented to screen for the key medium components for the PQQ production. CoCl · 6HO, ρ-amino benzoic acid, and MgSO · 7HO were found capable of enhancing the PQQ production most significantly. A five-level three-factor central composite design was used to investigate the direct and interactive effects of these variables. Both response surface methodology (RSM) and artificial neural network-genetic algorithm (ANN-GA) were used to predict the PQQ production and to optimize the medium composition. The results showed that the medium optimized by ANN-GA was better than that by RSM in maximizing PQQ production and the experimental PQQ concentration in the ANN-GA-optimized medium was improved by 44.3% compared with that in the unoptimized medium. Further study showed that this ANN-GA-optimized medium was also effective in improving PQQ production by fed-batch mode, reaching the highest PQQ accumulation of 232.0 mg/L, which was about 47.6% increase relative to that in the original medium. The present work provided an optimized medium and developed a fed-batch strategy which might be potentially applicable in industrial PQQ production.

摘要

采用甲基芽孢杆菌属的zju323菌株,通过对发酵培养基进行系统优化来提高吡咯喹啉醌(PQQ)的生物合成。运用Plackett-Burman设计筛选PQQ生产的关键培养基成分。发现CoCl₂·6H₂O、对氨基苯甲酸和MgSO₄·7H₂O能最显著地提高PQQ产量。采用五水平三因素中心复合设计研究这些变量的直接和交互作用。响应面法(RSM)和人工神经网络-遗传算法(ANN-GA)均用于预测PQQ产量并优化培养基组成。结果表明,在使PQQ产量最大化方面,ANN-GA优化的培养基优于RSM优化的培养基,与未优化培养基相比,ANN-GA优化培养基中的实验PQQ浓度提高了44.3%。进一步研究表明,这种ANN-GA优化的培养基在补料分批培养模式下提高PQQ产量方面也有效,PQQ积累量最高达到232.0 mg/L,相对于原始培养基提高了约47.6%。本研究提供了一种优化的培养基并制定了补料分批培养策略,可能在PQQ的工业化生产中具有潜在应用价值。

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