发起人
大肠杆菌
报告基因
合理设计
绿色荧光蛋白
合成生物学
生物
重组DNA
计算生物学
基因表达
基因
生物技术
遗传学
作者
Kangjie Xu,Shangyang Yu,Kun Wang,Yameng Tan,Xinyi Zhao,Song Liu,Jingwen Zhou,Xinglong Wang
标识
DOI:10.1021/acssynbio.3c00578
摘要
Expanding sigma70 promoter libraries can support the engineering of metabolic pathways and enhance recombinant protein expression. Herein, we developed an artificial intelligence (AI) and knowledge-based method for the rational design of sigma70 promoters. Strong sigma70 promoters were identified by using high-throughput screening (HTS) with enhanced green fluorescent protein (eGFP) as a reporter gene. The features of these strong promoters were adopted to guide promoter design based on our previous reported deep learning model. In the following case study, the obtained strong promoters were used to express collagen and microbial transglutaminase (mTG), resulting in increased expression levels by 81.4% and 33.4%, respectively. Moreover, these constitutive promoters achieved soluble expression of mTG-activating protease and contributed to active mTG expression in Escherichia coli. The results suggested that the combined method may be effective for promoter engineering.
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