RadAgents: Multimodal Agentic Reasoning for Chest X-Ray Interpretation with Radiologist-like Workflows

Abstract

Agentic systems offer a potential path to solve complex clinical tasks through collaboration among specialized agents, augmented by tool use and external knowledge bases. Nevertheless, for chest X-ray (CXR) interpretation, prevailing methods remain limited: (i) reasoning is frequently neither clinically interpretable nor aligned with guidelines, reflecting mere aggregation of tool outputs; (ii) multimodal evidence is insufficiently fused, yielding text-only rationales that are not visually grounded; and (iii) systems rarely detect or resolve cross-tool inconsistencies and provide no principled verification mechanisms. To bridge the above gaps, we present RadAgents, a multi-agent framework that couples clinical priors with task-aware multimodal reasoning and encodes a radiologist-style workflow into a modular, auditable pipeline. In addition, we integrate grounding and multimodal retrieval-augmentation to verify and resolve context conflicts, resulting in outputs that are more reliable, transparent, and consistent with clinical practice.

Cite

Text

Zhang et al. "RadAgents: Multimodal Agentic Reasoning for Chest X-Ray Interpretation with Radiologist-like Workflows." Proceedings of The 9th International Conference on Medical Imaging with Deep Learning, 2026.

Markdown

[Zhang et al. "RadAgents: Multimodal Agentic Reasoning for Chest X-Ray Interpretation with Radiologist-like Workflows." Proceedings of The 9th International Conference on Medical Imaging with Deep Learning, 2026.](https://mlanthology.org/midl/2026/zhang2026midl-radagents/)

BibTeX

@inproceedings{zhang2026midl-radagents,
  title     = {{RadAgents: Multimodal Agentic Reasoning for Chest X-Ray Interpretation with Radiologist-like Workflows}},
  author    = {Zhang, Kai and Barrett, Corey D and Kim, Jangwon and Sun, Lichao and Taghavi, Tara and Kenthapadi, Krishnaram},
  booktitle = {Proceedings of The 9th International Conference on Medical Imaging with Deep Learning},
  year      = {2026},
  pages     = {3496-3519},
  volume    = {315},
  url       = {https://mlanthology.org/midl/2026/zhang2026midl-radagents/}
}