zERExtractor:An Automated Platform for Enzyme-Catalyzed Reaction Data Extraction from Scientific Literature
Rui Zhou, Haohui Ma, Tianle Xin, Lixin Zou, Qiuyue Hu, Hongxi Cheng, Mingzhi Lin, Jingjing Guo, Sheng Wang, Guoqing Zhang, Yanjie Wei, Liangzhen Zheng

TL;DR
zERExtractor is an automated, modular platform that extracts enzyme reaction data from scientific literature, significantly enhancing data curation for AI-driven enzyme research.
Contribution
It introduces a flexible, plug-and-play system combining AI, OCR, and expert validation for comprehensive enzyme data extraction from diverse document formats.
Findings
Outperforms existing methods in table recognition accuracy (89.9%)
Achieves up to 99.1% accuracy in molecular image interpretation
Demonstrates 94.2% accuracy in relation extraction
Abstract
The rapid expansion of enzyme kinetics literature has outpaced the curation capabilities of major biochemical databases, creating a substantial barrier to AI-driven modeling and knowledge discovery. We present zERExtractor, an automated and extensible platform for comprehensive extraction of enzyme-catalyzed reaction and activity data from scientific literature. zERExtractor features a unified, modular architecture that supports plug-and-play integration of state-of-the-art models, including large language models (LLMs), as interchangeable components, enabling continuous system evolution alongside advances in AI. Our pipeline combines domain-adapted deep learning, advanced OCR, semantic entity recognition, and prompt-driven LLM modules, together with human expert corrections, to extract kinetic parameters (e.g., kcat, Km), enzyme sequences, substrate SMILES, experimental conditions, and…
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