School of Chemical, Materials, and Biomedical Engineering, College of Engineering, The University of Georgia, Athens, GA 30602, USA.
School of ECAM, College of Engineering, University of Georgia, Athens, GA 30602, USA.
Biotechnol Adv. 2024 Sep;74:108399. doi: 10.1016/j.biotechadv.2024.108399. Epub 2024 Jun 24.
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.
微生物细胞工厂 (MCF) 被用于构建可持续的增值化合物生产平台。为了优化代谢并达到最佳生产力,合成生物学已经开发了各种遗传工具,通过基因编辑、高通量蛋白质工程和动态调控来工程化微生物系统。然而,当前的合成生物学方法仍然严重依赖于手动设计、繁琐的测试和详尽的分析。人工智能 (AI) 和生物学这一新兴的交叉学科领域已成为解决剩余挑战的关键。人工智能辅助微生物生产利用了在几秒钟内处理、学习和预测大量生物数据的能力,提供高概率的输出。通过训练有素的 AI 模型,传统的设计-构建-测试 (DBT) 周期已经转变为多维的设计-构建-测试-学习-预测 (DBTLP) 工作流程,从而显著提高了操作效率并减少了劳动力消耗。在这里,我们全面回顾了人工智能辅助微生物生产的主要组成部分和最新进展,重点介绍了基因组注释、人工智能辅助蛋白质工程、人工功能蛋白设计和人工智能辅助途径预测。最后,我们讨论了将新的 AI 技术整合到生物学中的挑战,并提出了大型语言模型 (LLM) 在推进微生物生产方面的潜力。