Anatomical Region-Guided Contrastive Decoding: A Plug-and-Play Strategy for Mitigating Hallucinations in Medical VLMs (original) (raw)
Authors
- Xiao Liang Xidian University
- Chenxi Liu Xidian University
- Zhi Ma Xidian University
- Di Wang Xidian University
- Bin Jing Capital Medical University
- Quan Wang Xidian University
- Yuanyuan Shi The Ninth Medical Center of the Chinese PLA General Hospital
DOI:
https://doi.org/10.1609/aaai.v40i9.37620
Abstract
Medical Vision-Language Models (MedVLMs) show immense promise in clinical applicability. However, their reliability is hindered by hallucinations, where models often fail to derive answers from visual evidence, instead relying on learned textual priors. Existing mitigation strategies for MedVLMs have distinct limitations: training-based methods rely on costly expert annotations, limiting scalability, while training-free interventions like contrastive decoding, though data-efficient, apply a global, untargeted correction whose effects in complex real-world clinical settings can be unreliable. To address these challenges, we introduce Anatomical Region-Guided Contrastive Decoding (ARCD), a plug-and-play strategy that mitigates hallucinations by providing targeted, region-specific guidance. Our module leverages an anatomical mask to direct a three-tiered contrastive decoding process. By dynamically re-weighting at the token, attention, and logits levels, it verifiably steers the model's focus onto specified regions, reinforcing anatomical understanding and suppressing factually incorrect outputs. Extensive experiments across diverse datasets, including chest X-ray, CT, brain MRI, and ocular ultrasound, demonstrate our method's effectiveness in improving regional understanding, reducing hallucinations, and enhancing overall diagnostic accuracy.
How to Cite
Liang, X., Liu, C., Ma, Z., Wang, D., Jing, B., Wang, Q., & Shi, Y. (2026). Anatomical Region-Guided Contrastive Decoding: A Plug-and-Play Strategy for Mitigating Hallucinations in Medical VLMs. Proceedings of the AAAI Conference on Artificial Intelligence, 40(9), 6871-6879. https://doi.org/10.1609/aaai.v40i9.37620
Issue
Section
AAAI Technical Track on Computer Vision VI