3DReasonKnee: Advancing Grounded Reasoning in Medical Vision Language Models
Sraavya Sambara, Sung Eun Kim, Xiaoman Zhang, Luyang Luo, Shreya Johri, Mohammed Baharoon, Du Hyun Ro, Pranav Rajpurkar

TL;DR
3DReasonKnee introduces a comprehensive 3D grounded reasoning dataset for knee MRI analysis, enabling models to better localize and reason about anatomical structures for improved clinical decision-making.
Contribution
It is the first dataset supporting 3D grounded reasoning in medical images, with expert annotations and diagnostic reasoning steps, facilitating advancement of multimodal medical AI.
Findings
Benchmarking five state-of-the-art VLMs on the dataset.
Demonstrated the dataset's potential to improve localization and reasoning accuracy.
Provided baseline performance metrics for future research.
Abstract
Current Vision-Language Models (VLMs) struggle to ground anatomical regions in 3D medical images and reason about them in a step-by-step manner, a key requirement of real-world diagnostic assessment. This ability is essential for aligning model outputs with the diagnostic workflows clinicians use in practice, enabling trustworthy clinician-AI collaboration. Existing 3D datasets provide localization labels, but none support this "grounded reasoning" ability. To address this gap, we introduce 3DReasonKnee, the first 3D grounded reasoning dataset for medical images, which provides 494k high-quality quintuples derived from 7,970 3D knee MRI volumes. Each quintuple includes: (1) the 3D MRI volume, (2) a diagnostic question targeting a specific anatomical region (3) a 3D bounding box localizing the relevant anatomical structures, (4) clinician-generated diagnostic reasoning steps that…
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