Discovery, design, and engineering of enzymes based on molecular retrobiosynthesis.

IF 4.5 Q1 MICROBIOLOGY
mLife Pub Date : 2025-03-28 eCollection Date: 2025-04-01 DOI:10.1002/mlf2.70009
Ancheng Chen, Xiangda Peng, Tao Shen, Liangzhen Zheng, Dong Wu, Sheng Wang
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引用次数: 0

Abstract

Biosynthesis-a process utilizing biological systems to synthesize chemical compounds-has emerged as a revolutionary solution to 21st-century challenges due to its environmental sustainability, scalability, and high stereoselectivity and regioselectivity. Recent advancements in artificial intelligence (AI) are accelerating biosynthesis by enabling intelligent design, construction, and optimization of enzymatic reactions and biological systems. We first introduce the molecular retrosynthesis route planning in biochemical pathway design, including single-step retrosynthesis algorithms and AI-based chemical retrosynthesis route design tools. We highlight the advantages and challenges of large language models in addressing the sparsity of chemical data. Furthermore, we review enzyme discovery methods based on sequence and structure alignment techniques. Breakthroughs in AI-based structural prediction methods are expected to significantly improve the accuracy of enzyme discovery. We also summarize methods for de novo enzyme generation for nonnatural or orphan reactions, focusing on AI-based enzyme functional annotation and enzyme discovery techniques based on reaction or small molecule similarity. Turning to enzyme engineering, we discuss strategies to improve enzyme thermostability, solubility, and activity, as well as the applications of AI in these fields. The shift from traditional experiment-driven models to data-driven and computationally driven intelligent models is already underway. Finally, we present potential challenges and provide a perspective on future research directions. We envision expanded applications of biocatalysis in drug development, green chemistry, and complex molecule synthesis.

基于分子逆转录生物合成的酶的发现、设计和工程。
生物合成-利用生物系统合成化合物的过程-由于其环境可持续性,可扩展性和高立体选择性和区域选择性,已成为21世纪挑战的革命性解决方案。人工智能(AI)的最新进展正在通过实现酶反应和生物系统的智能设计、构建和优化来加速生物合成。首先介绍了生化途径设计中的分子反合成路线规划,包括单步反合成算法和基于人工智能的化学反合成路线设计工具。我们强调了大型语言模型在处理化学数据稀疏性方面的优势和挑战。此外,我们回顾了基于序列和结构比对技术的酶发现方法。基于人工智能的结构预测方法的突破有望显著提高酶发现的准确性。我们还总结了非自然反应或孤儿反应的从头生成酶的方法,重点是基于人工智能的酶功能注释和基于反应或小分子相似性的酶发现技术。在酶工程方面,我们讨论了提高酶的热稳定性、溶解度和活性的策略,以及人工智能在这些领域的应用。从传统的实验驱动模型到数据驱动和计算驱动的智能模型的转变已经在进行中。最后,提出了潜在的挑战,并对未来的研究方向进行了展望。我们展望生物催化在药物开发、绿色化学和复杂分子合成方面的广泛应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.30
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0.00%
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