代谢工程
合成生物学
生物制品
代谢途径
蛋白质工程
计算机科学
生化工程
计算生物学
人工智能
酶
生物化学
生物
生物技术
工程类
生物燃料
作者
Woo Dae Jang,Gi Bae Kim,Yeji Kim,Sang Yup Lee
标识
DOI:10.1016/j.copbio.2021.07.024
摘要
Metabolic engineering for developing industrial strains capable of overproducing bioproducts requires good understanding of cellular metabolism, including metabolic reactions and enzymes. However, metabolic pathways and enzymes involved are still unknown for many products of interest, which presents a key challenge in their biological production. This challenge can be partly overcome by constructing novel biosynthetic pathways through enzyme and pathway design approaches. With the increase in bio-big data, data-driven approaches using artificial intelligence (AI) techniques are allowing more advanced protein and pathway design. In this paper, we review recent studies on AI-aided protein engineering and design, focusing on directed evolution that uses AI approaches to efficiently construct mutant libraries. Also, recent works of AI-aided pathway design strategies, including template-based and template-free approaches, are discussed.
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