注释
计算机科学
主动学习(机器学习)
药物发现
精确性和召回率
人工智能
编码器
深度学习
活动站点
机器学习
数据挖掘
酶
生物信息学
生物
生物化学
操作系统
作者
Xiaorui Wang,Xiaodan Yin,Dejun Jiang,Huifeng Zhao,Zhenxing Wu,Odin Zhang,Jike Wang,Yuquan Li,Yafeng Deng,Huanxiang Liu,Pei Luo,Yuqiang Han,Tingjun Hou,Xiaojun Yao,Chang‐Yu Hsieh
标识
DOI:10.1038/s41467-024-51511-6
摘要
Annotating active sites in enzymes is crucial for advancing multiple fields including drug discovery, disease research, enzyme engineering, and synthetic biology. Despite the development of numerous automated annotation algorithms, a significant trade-off between speed and accuracy limits their large-scale practical applications. We introduce EasIFA, an enzyme active site annotation algorithm that fuses latent enzyme representations from the Protein Language Model and 3D structural encoder, and then aligns protein-level information with the knowledge of enzymatic reactions using a multi-modal cross-attention framework. EasIFA outperforms BLASTp with a 10-fold speed increase and improved recall, precision, f1 score, and MCC by 7.57%, 13.08%, 9.68%, and 0.1012, respectively. It also surpasses empirical-rule-based algorithm and other state-of-the-art deep learning annotation method based on PSSM features, achieving a speed increase ranging from 650 to 1400 times while enhancing annotation quality. This makes EasIFA a suitable replacement for conventional tools in both industrial and academic settings. EasIFA can also effectively transfer knowledge gained from coarsely annotated enzyme databases to smaller, high-precision datasets, highlighting its ability to model sparse and high-quality databases. Additionally, EasIFA shows potential as a catalytic site monitoring tool for designing enzymes with desired functions beyond their natural distribution. Wang et al. propose EasIFA, an efficient enzyme active site annotation algorithm, to advance various fields including drug discovery, disease research, enzyme engineering, and synthetic biology.
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