arXiv Open Access 2026

A generalizable large-scale foundation model for musculoskeletal radiographs

Shinn Kim Soobin Lee Kyoungseob Shin Han-Soo Kim Yongsung Kim +7 lainnya
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Abstrak

Artificial intelligence (AI) has shown promise in detecting and characterizing musculoskeletal diseases from radiographs. However, most existing models remain task-specific, annotation-dependent, and limited in generalizability across diseases and anatomical regions. Although a generalizable foundation model trained on large-scale musculoskeletal radiographs is clinically needed, publicly available datasets remain limited in size and lack sufficient diversity to enable training across a wide range of musculoskeletal conditions and anatomical sites. Here, we present SKELEX, a large-scale foundation model for musculoskeletal radiographs, trained using self-supervised learning on 1.2 million diverse, condition-rich images. The model was evaluated on 12 downstream diagnostic tasks and generally outperformed baselines in fracture detection, osteoarthritis grading, and bone tumor classification. Furthermore, SKELEX demonstrated zero-shot abnormality localization, producing error maps that identified pathologic regions without task-specific training. Building on this capability, we developed an interpretable, region-guided model for predicting bone tumors, which maintained robust performance on independent external datasets and was deployed as a publicly accessible web application. Overall, SKELEX provides a scalable, label-efficient, and generalizable AI framework for musculoskeletal imaging, establishing a foundation for both clinical translation and data-efficient research in musculoskeletal radiology.

Topik & Kata Kunci

Penulis (12)

S

Shinn Kim

S

Soobin Lee

K

Kyoungseob Shin

H

Han-Soo Kim

Y

Yongsung Kim

M

Minsu Kim

J

Juhong Nam

S

Somang Ko

D

Daeheon Kwon

W

Wook Huh

I

Ilkyu Han

S

Sunghoon Kwon

Format Sitasi

Kim, S., Lee, S., Shin, K., Kim, H., Kim, Y., Kim, M. et al. (2026). A generalizable large-scale foundation model for musculoskeletal radiographs. https://arxiv.org/abs/2602.03076

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Tahun Terbit
2026
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en
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arXiv
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Open Access ✓