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Evaluation of commercial AI algorithms for the detection of fractures, effusions, and dislocations on real-world clinical data: A prospective registry study
3
Zitationen
14
Autoren
2025
Jahr
Abstract
Current tools should be used as adjuncts rather than replacements for radiologists and reporting radiographers. Multicenter validation and more diverse training data are necessary to improve generalizability and robustness.
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