CVJun 12, 2025

MedSeg-R: Reasoning Segmentation in Medical Images with Multimodal Large Language Models

arXiv:2506.10465v15 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses the limitation of existing models that rely on explicit instructions and lack reasoning capabilities for medical diagnosis, though it is incremental as it builds on multimodal large language models.

The paper tackles the problem of medical image segmentation by introducing a novel task that generates segmentation masks based on complex clinical questions, using an end-to-end framework called MedSeg-R, which achieves high segmentation accuracy and interpretable textual analysis.

Medical image segmentation is crucial for clinical diagnosis, yet existing models are limited by their reliance on explicit human instructions and lack the active reasoning capabilities to understand complex clinical questions. While recent advancements in multimodal large language models (MLLMs) have improved medical question-answering (QA) tasks, most methods struggle to generate precise segmentation masks, limiting their application in automatic medical diagnosis. In this paper, we introduce medical image reasoning segmentation, a novel task that aims to generate segmentation masks based on complex and implicit medical instructions. To address this, we propose MedSeg-R, an end-to-end framework that leverages the reasoning abilities of MLLMs to interpret clinical questions while also capable of producing corresponding precise segmentation masks for medical images. It is built on two core components: 1) a global context understanding module that interprets images and comprehends complex medical instructions to generate multi-modal intermediate tokens, and 2) a pixel-level grounding module that decodes these tokens to produce precise segmentation masks and textual responses. Furthermore, we introduce MedSeg-QA, a large-scale dataset tailored for the medical image reasoning segmentation task. It includes over 10,000 image-mask pairs and multi-turn conversations, automatically annotated using large language models and refined through physician reviews. Experiments show MedSeg-R's superior performance across several benchmarks, achieving high segmentation accuracy and enabling interpretable textual analysis of medical images.

Foundations

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