Author
Listed:
- Zechen Wang
(Shandong University)
- Dongqi Xie
(Shanghai Zelixir Biotech Co. Ltd)
- Dong Wu
(Shanghai Zelixir Biotech Co. Ltd)
- Xiaozhou Luo
(Chinese Academy of Sciences
Chinese Academy of Sciences
Chinese Academy of Sciences)
- Sheng Wang
(Shanghai Zelixir Biotech Co. Ltd)
- Yangyang Li
(Shandong University)
- Yanmei Yang
(Shandong Normal University)
- Weifeng Li
(Shandong University)
- Liangzhen Zheng
(Shanghai Zelixir Biotech Co. Ltd
Shenzhen Zelixir Biotech Co. Ltd)
Abstract
Accurate prediction of enzyme kinetic parameters is crucial for enzyme exploration and modification. Existing models face the problem of either low accuracy or poor generalization ability due to overfitting. In this work, we first developed unbiased datasets to evaluate the actual performance of these methods and proposed a deep learning model, CataPro, based on pre-trained models and molecular fingerprints to predict turnover number (kcat), Michaelis constant (Km), and catalytic efficiency (kcat/Km). Compared with previous baseline models, CataPro demonstrates clearly enhanced accuracy and generalization ability on the unbiased datasets. In a representational enzyme mining project, by combining CataPro with traditional methods, we identified an enzyme (SsCSO) with 19.53 times increased activity compared to the initial enzyme (CSO2) and then successfully engineered it to improve its activity by 3.34 times. This reveals the high potential of CataPro as an effective tool for future enzyme discovery and modification.
Suggested Citation
Zechen Wang & Dongqi Xie & Dong Wu & Xiaozhou Luo & Sheng Wang & Yangyang Li & Yanmei Yang & Weifeng Li & Liangzhen Zheng, 2025.
"Robust enzyme discovery and engineering with deep learning using CataPro,"
Nature Communications, Nature, vol. 16(1), pages 1-16, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58038-4
DOI: 10.1038/s41467-025-58038-4
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