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arxiv:2603.13800

Beyond Medical Diagnostics: How Medical Multimodal Large Language Models Think in Space

Published on Mar 14
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Abstract

A novel agentic pipeline generates 3D spatial VQA data through multi-agent collaboration and expert validation, introducing SpatialMed as the first benchmark for assessing 3D spatial intelligence in medical multimodal large language models.

AI-generated summary

Visual spatial intelligence is critical for medical image interpretation, yet remains largely unexplored in Multimodal Large Language Models (MLLMs) for 3D imaging. This gap persists due to a systemic lack of datasets featuring structured 3D spatial annotations beyond basic labels. In this study, we introduce an agentic pipeline that autonomously synthesizes spatial visual question-answering (VQA) data by orchestrating computational tools such as volume and distance calculators with multi-agent collaboration and expert radiologist validation. We present SpatialMed, the first comprehensive benchmark for evaluating 3D spatial intelligence in medical MLLMs, comprising nearly 10K question-answer pairs across multiple organs and tumor types. Our evaluations on 14 state-of-the-art MLLMs and extensive analyses reveal that current models lack robust spatial reasoning capabilities for medical imaging.

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