Smart Orthopedic Diagnosis: YOLO-Based Fracture Detection for Remote Healthcare Systems
DOI:
https://doi.org/10.48047/7k63zt74Keywords:
—Bone Fracture Detection, YOLO Algorithm, Deep Learning, Medical Imaging, X-ray Analysis, Artificial Intelligence, ObjectDetection,Intelligence, Object Detection, Telemedicine, Orthopedic Diagnosis. orthopedic Diagnosis.Abstract
Bone fractures require timely and precise diagnosis to ensure effective treatment and prevent long-term complications. Manual analysis of X-ray images by radiologists can be time-consuming and prone to error, especially under heavy workloads or in emergency settings. This research proposes an automated bone fracture detection
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Published
20.03.2025
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How to Cite
Smart Orthopedic Diagnosis: YOLO-Based Fracture Detection for Remote Healthcare Systems. (2025). International Journal of Information and Electronics Engineering, 15(3), 48-54. https://doi.org/10.48047/7k63zt74