Publication details

Cross-Center Validation of Deep Learning Model for Musculoskeletal Fracture Detection in Radiographic Imaging: A Feasibility Study

Authors

HRUBÝ Robert KVAK Daniel DANDÁR Jakub ATAKHANOVA Anora MISAŘ Matěj DUFEK Daniel

Year of publication 2024
Type Article in Periodical (without peer review)
Citation
Description Fractures, often resulting from trauma, overuse, or osteoporosis, pose diagnostic challenges due to their variable clinical manifestations. To address this, we propose a deep learning-based decision support system to enhance the efficacy of fracture detection in radiographic imaging. For the purpose of our study, we utilized 720 annotated musculoskeletal (MSK) X-rays from the MURA dataset, augmented by bounding box-level annotation, for training the YOLO (You Only Look Once) model. The model's performance was subsequently tested on two datasets, sampled FracAtlas dataset (Dataset 1, 840 images, n_NORMAL=696, n_FRACTURE=144) and our own internal dataset (Dataset 2, 124 images, n_NORMAL=50, n_FRACTURE=74), encompassing a diverse range of MSK radiographs. The results showed a Sensitivity (Se) of 0.910 (95% CI: 0.852-0.946) and Specificity (Sp) of 0.557 (95% CI: 0.520-0.594) on Dataset 1, and a Se of 0.622 (95% CI: 0.508-0.724) and Sp of 0.740 (95% CI: 0.604-0.841) on Dataset 2. This study underscores the promising role of AI in medical imaging, providing a solid foundation for future research and advancements in the field of radiographic diagnostics.

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