BACKGROUND The incidence of Osteonecrosis of the Femoral Head (ONFH) is increasing gradually, rapid and accurate grading of ONFH is critical. The existing Steinberg staging criteria grades ONFH according to… Click to show full abstract
BACKGROUND The incidence of Osteonecrosis of the Femoral Head (ONFH) is increasing gradually, rapid and accurate grading of ONFH is critical. The existing Steinberg staging criteria grades ONFH according to the proportion of necrosis area to femoral head area. PURPOSE In the clinical practice, the necrosis region and femoral head region are mainly estimated by the observation and experience of doctor. This paper proposes a two-stage segmentation and grading framework, which can be used to segment the femoral head and necrosis, as well as to diagnosis. METHODS The core of the proposed two-stage framework is the multi-scale geometric embedded convolutional neural network, which integrates geometric information into the training process and accurately segments the femoral head region. Then, the necrosis regions are segmented by the adaptive threshold method taking femoral head as the background. The area and proportion of the two are calculated to determine the grade. RESULTS The accuracy of the proposed MsgeCNN for femoral head segmentation is 97.73%, sensitivity is 91.17%, specificity is 99.40%, dice score is 93.34%. And the segmentation performance is better than the existing five segmentation algorithms. The diagnostic accuracy of the overall framework is 90.80%. CONCLUSIONS The proposed framework can accurately segment the femoral head region and the necrosis region. The area, proportion and other pathological information of the framework output provide auxiliary strategies for subsequent clinical treatment. This article is protected by copyright. All rights reserved.
               
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