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Deep learning diagnosis of adult tibial plateau fractures: multicenter study with external validation
1
Zitationen
13
Autoren
2025
Jahr
Abstract
The MobileNetV3-YOLOv8 model accurately detected both obvious and occult TPFs, substantially improving diagnostic sensitivity, interreader agreement, and efficiency. These findings suggest that AI assistance can enhance diagnostic performance and reduce interpretation time, offering considerable benefits for emergency departments where rapid and accurate fracture detection is paramount.
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