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Lightweight Deep Learning Framework for Accurate Detection of Sports-Related Bone Fractures
12
Zitationen
7
Autoren
2025
Jahr
Abstract
The proposed lightweight framework offers a scalable, accurate, and efficient solution for fracture detection, addressing critical challenges in sports medicine. By enabling rapid and reliable diagnostics, it has the potential to improve clinical workflows and outcomes for athletes. Future work will focus on expanding the model applications to other imaging modalities and fracture types.
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