合成生物学
工作流程
生产(经济)
计算机科学
系统生物学
代谢工程
生物
人工智能
生化工程
生物技术
数据科学
机器学习
计算生物学
工程类
宏观经济学
经济
生物化学
数据库
酶
作者
Xinyu Gong,Jianli Zhang,Qi Gan,Yuxi Teng,Jixin Hou,Yanjun Lyu,Zhengliang Liu,Zihao Wu,Runpeng Dai,Yusong Zou,Xianqiao Wang,Dajiang Zhu,Hongtu Zhu,Tianming Liu,Yajun Yan
标识
DOI:10.1016/j.biotechadv.2024.108399
摘要
Microbial cell factories (MCFs) have been leveraged to construct sustainable platforms for value-added compound production. To optimize metabolism and reach optimal productivity, synthetic biology has developed various genetic devices to engineer microbial systems by gene editing, high-throughput protein engineering, and dynamic regulation. However, current synthetic biology methodologies still rely heavily on manual design, laborious testing, and exhaustive analysis. The emerging interdisciplinary field of artificial intelligence (AI) and biology has become pivotal in addressing the remaining challenges. AI-aided microbial production harnesses the power of processing, learning, and predicting vast amounts of biological data within seconds, providing outputs with high probability. With well-trained AI models, the conventional Design-Build-Test (DBT) cycle has been transformed into a multidimensional Design-Build-Test-Learn-Predict (DBTLP) workflow, leading to significantly improved operational efficiency and reduced labor consumption. Here, we comprehensively review the main components and recent advances in AI-aided microbial production, focusing on genome annotation, AI-aided protein engineering, artificial functional protein design, and AI-enabled pathway prediction. Finally, we discuss the challenges of integrating novel AI techniques into biology and propose the potential of large language models (LLMs) in advancing microbial production.
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