Parsing chemical reaction diagrams from scientific literature is challenging due to heterogeneous layouts, intertwined visual elements, and the difficulty of integrating recognition and reasoning. Existing vision-language models advance multimodal understanding but still fail on complex diagrams, struggling to maintain spatial coherence and to integrate multidimensional information during reasoning. To address these issues, we propose MACReD, a hierarchical multi-agent framework that coordinates specialized agents for molecular perception, arrow understanding, text extraction, and reaction reconstruction within a unified VLM-guided architecture. The planning and perception layers use flexible, fine-grained detection to handle visual complexity, while the reasoning layer uses a multigraph fusion mechanism to integrate heterogeneous cues and enforce chemically consistent global reasoning. Experiments on the RxnScribe benchmark show that MACReD achieves state-of-the-art performance, with F1 scores of 75.2% and 84.6% under hard and soft match criteria, outperforming the RxnScribe baseline, which obtains 69.1% and 80.0%, respectively. These results demonstrate the robustness of MACReD across diverse diagram layouts, including multi-step and tree-structured reactions.
@article{arxiv.2605.28077,
title = {MACReD: A Multi-Agent Collaborative Reasoning Framework for Reaction Diagram Parsing},
author = {Chuang Tang and Chenhao Lin and Yin Xu and Hao Wang and Jinrui Zhou and Xin Li and Mingjun Xiao and Enhong Chen},
journal= {arXiv preprint arXiv:2605.28077},
year = {2026}
}
Comments
Preprint. Code is available at https://github.com/TC9905/MACReD