
An Algorithm for Automatic Rib Fracture Recognition Combined with nnU-Net and DenseNet
Author(s) -
Junzhong Zhang,
Zhiwei Li,
Shixing Yan,
Hui Cao,
Jing Liu,
Dejian Wei
Publication year - 2022
Publication title -
evidence-based complementary and alternative medicine
Language(s) - English
Resource type - Journals
eISSN - 1741-4288
pISSN - 1741-427X
DOI - 10.1155/2022/5841451
Subject(s) - fracture (geology) , artificial intelligence , segmentation , stage (stratigraphy) , deep learning , rib cage , pattern recognition (psychology) , computer science , algorithm , medicine , geology , anatomy , geotechnical engineering , paleontology
Rib fracture is the most common thoracic clinical trauma. Most patients have multiple different types of rib fracture regions, so accurate and rapid identification of all trauma regions is crucial for the treatment of rib fracture patients. In this study, a two-stage rib fracture recognition model based on nnU-Net is proposed. First, a deep learning segmentation model is trained to generate candidate rib fracture regions, and then, a deep learning classification model is trained in the second stage to classify the segmented local fracture regions according to the candidate fracture regions generated in the first stage to determine whether they are fractures or not. The results show that the two-stage deep learning model proposed in this study improves the accuracy of rib fracture recognition and reduces the false-positive and false-negative rates of rib fracture detection, which can better assist doctors in fracture region recognition.
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