Synthetic Biology Journal ›› 2020, Vol. 1 ›› Issue (6): 656-673.DOI: 10.12211/2096-8208.2020-050
• Invited Review • Previous Articles Next Articles
Yaomeng YUAN1, Xinhui XING1,2, Chong ZHANG1
Received:
2020-04-16
Revised:
2020-09-26
Online:
2021-01-15
Published:
2020-12-31
Contact:
Chong ZHANG
袁姚梦1, 邢新会1,2, 张翀1
通讯作者:
张翀
作者简介:
袁姚梦(1997—),女,博士研究生。主要研究方向为合成生物学、代谢工程。E-mail:基金资助:
CLC Number:
Yaomeng YUAN, Xinhui XING, Chong ZHANG. Progress and prospective of engineering microbial cell factories: from random mutagenesis to customized design in genome scale[J]. Synthetic Biology Journal, 2020, 1(6): 656-673.
袁姚梦, 邢新会, 张翀. 微生物细胞工厂的设计构建:从诱变育种到全基因组定制化创制[J]. 合成生物学, 2020, 1(6): 656-673.
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