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  • British Editorial Society of Bone & Joint Surgery  (1)
  • Ding, Y.  (1)
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  • British Editorial Society of Bone & Joint Surgery  (1)
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    Online Resource
    Online Resource
    British Editorial Society of Bone & Joint Surgery ; 2023
    In:  Orthopaedic Proceedings Vol. 105-B, No. SUPP_7 ( 2023-4-4), p. 106-106
    In: Orthopaedic Proceedings, British Editorial Society of Bone & Joint Surgery, Vol. 105-B, No. SUPP_7 ( 2023-4-4), p. 106-106
    Abstract: Quantitative ultrasound (QUS) is a promising tool to estimate bone structure characteristics and predict fragile fracture. The aim of this pilot cross-sectional study was to evaluate the performance of a multi-channel residual network (MResNet) based on ultrasonic radiofrequency (RF) signal to discriminate fragile fractures retrospectively in postmenopausal women. Methods RF signal and speed of sound (SOS) were obtained using an axial transmission QUS at one‐third distal radius for 246 postmenopausal women. Based on the involved RF signal, we conducted a MResNet, which combines multi-channel training with original ResNet, to classify the high risk of fragility fractures patients from all subjects. The bone mineral density (BMD) at lumber, hip and femoral neck acquired with DXA was recorded on the same day. The fracture history of all subjects in adulthood were collected. To assess the ability of the different methods in the discrimination of fragile fracture, the odds ratios (OR) calculated using binomial logistic regression analysis and the area under the receiver operator characteristic curves (AUC) were analyzed. Results Among the 246 postmenopausal women, 170 belonged to the non-fracture group, 50 to the vertebral group, and 26 to the non-vertebral fracture group. MResNet was discriminant for all fragile fractures (OR = 2.64; AUC = 0.74), for Vertebral fracture (OR = 3.02; AUC = 0.77), for non-vertebral fracture (OR = 2.01; AUC = 0.69). MResNet showed comparable performance to that of BMD of hip and lumbar with all types of fractures, and significantly better performance than SOS all types of fractures. Conclusions the MResNet model based on the ultrasonic RF signal can significantly improve the ability of QUS device to recognize previous fragile fractures. Moreover, the performance of the proposed model modified by age, weight, and height is further optimized. These results open perspectives to evaluate the risk of fragile fracture applying a deep learning model to analyze ultrasonic RF signal.
    Type of Medium: Online Resource
    ISSN: 1358-992X , 2049-4416
    Language: English
    Publisher: British Editorial Society of Bone & Joint Surgery
    Publication Date: 2023
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