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Artificial intelligence diagnostic model for multi-site fracture X-ray images of extremities based on deep convolutional neural networks
16
Zitationen
7
Autoren
2024
Jahr
Abstract
The faster R-CNN training algorithm exhibits excellent performance in simultaneously identifying fractures in the hands, feet, wrists, ankles, radius and ulna, and tibia and fibula on X-ray images. It demonstrates high accuracy, low false-negative rates, and controllable false-positive rates. It can serve as a valuable screening tool.
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