TY - JOUR
T1 - Precise proximal femur fracture classification for interactive training and surgical planning
AU - Jiménez Sánchez, Amelia
AU - Kazi, Anees
AU - Albarqouni, Shadi
AU - Kirchhoff, Chlodwig
AU - Biberthaler, Peter
AU - Navab, Nassir
AU - Kirchhoff, Sonja
AU - Mateus, Diana
N1 - Presented at The International Conference on Information Processing in Computer-Assisted Interventions (IPCAI)
PY - 2020/4/25
Y1 - 2020/4/25
N2 - We demonstrate the feasibility of a fully automatic computer-aided diagnosis (CAD) tool, based on deep learning, that localizes and classifies proximal femur fractures on X-ray images according to the AO classification. The proposed framework aims to improve patient treatment planning and provide support for the training of trauma surgeon residents. A database of 1347 clinical radiographic studies was collected. Radiologists and trauma surgeons annotated all fractures with bounding boxes, and provided a classification according to the AO standard. The proposed CAD tool for the classification of radiographs into types "A", "B" and "not-fractured", reaches a F1-score of 87% and AUC of 0.95, when classifying fractures versus not-fractured cases it improves up to 94% and 0.98. Prior localization of the fracture results in an improvement with respect to full image classification. 100% of the predicted centers of the region of interest are contained in the manually provided bounding boxes. The system retrieves on average 9 relevant images (from the same class) out of 10 cases. Our CAD scheme localizes, detects and further classifies proximal femur fractures achieving results comparable to expert-level and state-of-the-art performance. Our auxiliary localization model was highly accurate predicting the region of interest in the radiograph. We further investigated several strategies of verification for its adoption into the daily clinical routine. A sensitivity analysis of the size of the ROI and image retrieval as a clinical use case were presented.
AB - We demonstrate the feasibility of a fully automatic computer-aided diagnosis (CAD) tool, based on deep learning, that localizes and classifies proximal femur fractures on X-ray images according to the AO classification. The proposed framework aims to improve patient treatment planning and provide support for the training of trauma surgeon residents. A database of 1347 clinical radiographic studies was collected. Radiologists and trauma surgeons annotated all fractures with bounding boxes, and provided a classification according to the AO standard. The proposed CAD tool for the classification of radiographs into types "A", "B" and "not-fractured", reaches a F1-score of 87% and AUC of 0.95, when classifying fractures versus not-fractured cases it improves up to 94% and 0.98. Prior localization of the fracture results in an improvement with respect to full image classification. 100% of the predicted centers of the region of interest are contained in the manually provided bounding boxes. The system retrieves on average 9 relevant images (from the same class) out of 10 cases. Our CAD scheme localizes, detects and further classifies proximal femur fractures achieving results comparable to expert-level and state-of-the-art performance. Our auxiliary localization model was highly accurate predicting the region of interest in the radiograph. We further investigated several strategies of verification for its adoption into the daily clinical routine. A sensitivity analysis of the size of the ROI and image retrieval as a clinical use case were presented.
KW - Radiology
KW - Interactive Training
KW - Surgical Planning
KW - Bone Fracture
KW - Computer Aided Diagnosis
KW - Deep Learning
KW - Radiology
KW - Interactive Training
KW - Surgical Planning
KW - Bone Fracture
KW - Computer Aided Diagnosis
KW - Deep Learning
UR - https://arxiv.org/pdf/1902.01338.pdf
UR - https://arxiv.org/abs/1902.01338
U2 - 10.1007/s11548-020-02150-x
DO - 10.1007/s11548-020-02150-x
M3 - Journal article
JO - International Journal of Computer Assisted Radiology and Surgery volume
JF - International Journal of Computer Assisted Radiology and Surgery volume
ER -