可扩展性
代谢工程
计算机科学
生物
计算生物学
稳健性(进化)
生化工程
酶
生物化学
工程类
数据库
基因
作者
Zhixia Ye,Shuai Li,Jennifer N. Hennigan,Juliana Lebeau,Eirik A. Moreb,Jacob Wolf,Michael Lynch
标识
DOI:10.1016/j.ymben.2021.09.009
摘要
We report that two-stage dynamic control improves bioprocess robustness as a result of the dynamic deregulation of central metabolism. Dynamic control is implemented during stationary phase using combinations of CRISPR interference and controlled proteolysis to reduce levels of central metabolic enzymes. Reducing the levels of key enzymes alters metabolite pools resulting in deregulation of the metabolic network. Deregulated networks are less sensitive to environmental conditions improving process robustness. Process robustness in turn leads to predictable scalability, minimizing the need for traditional process optimization. We validate process robustness and scalability of strains and bioprocesses synthesizing the important industrial chemicals alanine, citramalate and xylitol. Predictive high throughput approaches that translate to larger scales are critical for metabolic engineering programs to truly take advantage of the rapidly increasing throughput and decreasing costs of synthetic biology.
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