通过深度学习辅助培养基设计和后续喂养策略,实现谷氨酸棒状杆菌的高细胞密度培养。

IF 2.3 4区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Journal of bioscience and bioengineering Pub Date : 2024-03-02 DOI:10.1016/j.jbiosc.2024.01.018
Masaaki Konishi
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引用次数: 0

摘要

为了提高谷氨酸棒杆菌的细胞生产率,利用贝叶斯优化(BO)和遗传算法(GA)的深度神经网络(DNN)辅助设计,通过改良培养基来提高其初始比生长率。为获得 DNN 的训练数据,使用化学定义的基础培养基(GC XII)建立了正交阵列实验设计。根据训练数据的培养结果,观察到特定生长率在 0.04 至 0.3/h 之间。由此产生的 DNN 模型对测试数据进行了高精度估算(R2test ≥ 0.98)。根据验证培养,DNN-BO 和 DNN-GA 估算的最佳培养基成分的特定生长率从 0.242 增至 0.355/h。使用最佳培养基(UCB_3),在批量培养中对特定生长率和其他参数进行了评估。从 3 到 12 小时,比生长率达到 0.371/小时,22.5 小时时干细胞重量为 28.0 克/升。根据培养结果,计算了细胞对葡萄糖、铵离子、磷酸根离子、硫酸根离子、钾离子和镁离子的产量。根据细胞产量的计算结果估算出每种成分的需要量,发现镁限制了细胞的生长。然而,在后续的分批喂养培养中,需要添加葡萄糖和镁才能实现较高的初始比生长率,而在培养过程中适当喂养葡萄糖和镁可维持较高的比生长率,并获得 80 克/升的细胞产量。
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High cell density cultivation of Corynebacterium glutamicum by deep learning-assisted medium design and the subsequent feeding strategy

To improve the cell productivity of Corynebacterium glutamicum, its initial specific growth rate was improved by medium improvement using deep neural network (DNN)-assisted design with Bayesian optimization (BO) and a genetic algorithm (GA). To obtain training data for the DNN, experimental design with an orthogonal array was set up using a chemically defined basal medium (GC XII). Based on the cultivation results for the training data, specific growth rates were observed between 0.04 and 0.3/h. The resulting DNN model estimated the test data with high accuracy (R2test ≥ 0.98). According to the validation cultivation, specific growth rates in the optimal media components estimated by DNN-BO and DNN-GA increased from 0.242 to 0.355/h. Using the optimal media (UCB_3), the specific growth rate, along with other parameters, was evaluated in batch culture. The specific growth rate reached 0.371/h from 3 to 12 h, and the dry cell weight was 28.0 g/L at 22.5 h. From the cultivation, the cell yields against glucose, ammonium ion, phosphate ion, sulfate ion, potassium ion, and magnesium ion were calculated. The cell yield calculation was used to estimate the required amounts of each component, and magnesium was found to limit the cell growth. However, in the follow-up fed-batch cultivation, glucose and magnesium addition was required to achieve the high initial specific growth rate, while appropriate feeding of glucose and magnesium during cultivation resulted in maintaining the high specific growth rate, and obtaining a cell yield of 80 g/Lini.

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来源期刊
Journal of bioscience and bioengineering
Journal of bioscience and bioengineering 生物-生物工程与应用微生物
CiteScore
5.90
自引率
3.60%
发文量
144
审稿时长
51 days
期刊介绍: The Journal of Bioscience and Bioengineering is a research journal publishing original full-length research papers, reviews, and Letters to the Editor. The Journal is devoted to the advancement and dissemination of knowledge concerning fermentation technology, biochemical engineering, food technology and microbiology.
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