Automatic segmentation of inconstant fractured fragments for tibia/fibula from CT images using deep learning

被引:0
作者
Hyeonjoo Kim
Young Dae Jeon
Ki Bong Park
Hayeong Cha
Moo-Sub Kim
Juyeon You
Se-Won Lee
Seung-Han Shin
Yang-Guk Chung
Sung Bin Kang
Won Seuk Jang
Do-Kun Yoon
机构
[1] Yonsei University,Department of Medical Device Engineering and Management, College of Medicine
[2] University of Ulsan,Department of Orthopedic Surgery
[3] College of Medicine,Industrial R&D Center
[4] Ulsan University Hospital,Department of Orthopedic Surgery, Yeouido St. Mary’s Hospital,, College of Medicine
[5] KAVILAB Co. Ltd.,Department of Orthopedic Surgery, Seoul St. Mary’s Hospital, College of Medicine
[6] The Catholic University of Korea,undefined
[7] The Catholic University of Korea,undefined
来源
Scientific Reports | / 13卷
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摘要
Orthopaedic surgeons need to correctly identify bone fragments using 2D/3D CT images before trauma surgery. Advances in deep learning technology provide good insights into trauma surgery over manual diagnosis. This study demonstrates the application of the DeepLab v3+ -based deep learning model for the automatic segmentation of fragments of the fractured tibia and fibula from CT images and the results of the evaluation of the performance of the automatic segmentation. The deep learning model, which was trained using over 11 million images, showed good performance with a global accuracy of 98.92%, a weighted intersection over the union of 0.9841, and a mean boundary F1 score of 0.8921. Moreover, deep learning performed 5–8 times faster than the experts’ recognition performed manually, which is comparatively inefficient, with almost the same significance. This study will play an important role in preoperative surgical planning for trauma surgery with convenience and speed.
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