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Pilot validation study for a large image database of proximal femur fracture anteroposterior radiographs: Searching for the ground truth
0
Zitationen
9
Autoren
2026
Jahr
Abstract
The observed interrater reliability between the LC-EG and AO-EG supports the credibility of the reference annotations, establishing a validated ground truth for proximal femur fractures. This evidence justifies using the radiographic image database as a benchmark for future studies and as a foundation for transparent, reproducible AI development and evaluation, thereby facilitating safer integration of decision support tools into orthopedic trauma workflows.
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