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AI-Driven Enzyme Engineering: Emerging Models and Next-Generation Biotechnological Applications
Author(s)
Date Issued
2025-12-22
Date Available
2026-01-15T11:13:28Z
Abstract
Enzyme engineering drives innovation in biotechnology, medicine, and industry, yet conventional approaches remain limited by labour-intensive workflows, high costs, and narrow sequence diversity. Artificial intelligence (AI) is revolutionising this field by enabling rapid, precise, and data-driven enzyme design. Machine learning and deep learning models such as AlphaFold2, RoseTTAFold, ProGen, and ESM-2 accurately predict enzyme structure, stability, and catalytic function, facilitating rational mutagenesis and optimisation. Generative models, including ProteinGAN and variational autoencoders, enable de novo sequence creation with customised activity, while reinforcement learning enhances mutation selection and functional prediction. Hybrid AI–experimental workflows combine predictive modelling with high-throughput screening, accelerating discovery and reducing experimental demand. These strategies have led to the development of synthetic “synzymes” capable of catalysing non-natural reactions, broadening applications in pharmaceuticals, biofuels, and environmental remediation. The integration of AI-based retrosynthesis and pathway modelling further advances metabolic and process optimisation. Together, these innovations signify a shift from empirical, trial-and-error methods to predictive, computationally guided design. The novelty of this work lies in presenting a unified synthesis of emerging AI methodologies that collectively define the next generation of enzyme engineering, enabling the creation of sustainable, efficient, and functionally versatile biocatalysts.
Type of Material
Journal Article
Publisher
MDPI
Journal
Molecules
Volume
31
Issue
1
Copyright (Published Version)
2025 the Authors
Language
English
Status of Item
Peer reviewed
ISSN
1431-5157
This item is made available under a Creative Commons License
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Name
Khan and Khan 2025 Molecules.pdf
Size
7.22 MB
Format
Adobe PDF
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