Chinese Journal of Chemical Engineering ›› 2022, Vol. 41 ›› Issue (1): 6-21.DOI: 10.1016/j.cjche.2021.08.017
• Review • Previous Articles Next Articles
Ziheng Cui, Shiding Zhang, Shengyu Zhang, Biqiang Chen, Yushan Zhu, Tianwei Tan
Received:
2021-07-06
Revised:
2021-08-15
Online:
2022-02-25
Published:
2022-01-28
Contact:
Yushan Zhu,E-mail address:zhuys@mail.buct.edu.cn;Tianwei Tan,E-mail address:twtan@mail.buct.edu.cn
Supported by:
Ziheng Cui, Shiding Zhang, Shengyu Zhang, Biqiang Chen, Yushan Zhu, Tianwei Tan
通讯作者:
Yushan Zhu,E-mail address:zhuys@mail.buct.edu.cn;Tianwei Tan,E-mail address:twtan@mail.buct.edu.cn
基金资助:
Ziheng Cui, Shiding Zhang, Shengyu Zhang, Biqiang Chen, Yushan Zhu, Tianwei Tan. Green biomanufacturing promoted by automatic retrobiosynthesis planning and computational enzyme design[J]. Chinese Journal of Chemical Engineering, 2022, 41(1): 6-21.
Ziheng Cui, Shiding Zhang, Shengyu Zhang, Biqiang Chen, Yushan Zhu, Tianwei Tan. Green biomanufacturing promoted by automatic retrobiosynthesis planning and computational enzyme design[J]. 中国化学工程学报, 2022, 41(1): 6-21.
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URL: https://cjche.cip.com.cn/EN/10.1016/j.cjche.2021.08.017
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