生物催化
生化工程
计算机科学
预测值
机器学习
人工智能
化学
工程类
催化作用
医学
生物化学
反应机理
内科学
作者
Neha Tripathi,Joan Hérisson,Jean‐Loup Faulon
标识
DOI:10.1016/j.biotechadv.2025.108698
摘要
In recent years, machine learning has significantly advanced predictive biocatalysis, enabling innovative approaches to enzyme function prediction, biocatalyst discovery, reaction modeling, and metabolic pathway optimization. This review provides a comparative analysis of current methodologies, highlighting the intersection between computational tools and biochemical data for predictive biocatalysis applications. Key aspects covered include enzyme classification, reaction annotation, enzyme-substrate specificity, reaction outcomes, and kinetic parameter prediction. We discuss various machine learning approaches, such as neural networks with increased depth, convolutional networks, graph-based architectures, and transformer models, highlighting their respective strengths and limitations. The integration of large-scale data, representation and featurization techniques, and robust validation methods has accelerated enzyme discovery and the development of eco-friendly, sustainable biocatalytic processes. In the future, machine learning is anticipated to play a central role in connecting computational insights with practical enzyme engineering efforts, advancing applications in synthetic biology, metabolic engineering, and green biocatalysis.
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