Login / Signup

Deep Scale-Variant Network for Femur Trochanteric Fracture Classification with HP Loss.

Yuxiang KangZhipeng RenYinguang ZhangAiming ZhangWeizhe XuGuokai ZhangQiang Dong
Published in: Journal of healthcare engineering (2022)
Achieving automatic classification of femur trochanteric fracture from the edge computing device is of great importance and value for remote diagnosis and treatment. Nevertheless, designing a highly accurate classification model on 31A1/31A2/31A3 fractures from the X-ray is still limited due to the failure of capturing the scale-variant and contextual information. As a result, this paper proposes a deep scale-variant (DSV) network with a hybrid and progressive (HP) loss function to aggregate more influential representations of the fracture regions. More specifically, the DSV network is based on the ResNet and integrated with the designed scale-variant (SV) layer and HP loss, where the SV layer aims to enhance the representation ability to extract the scale-variant features, and HP loss is intended to force the network to condense more contextual clues. Furthermore, to evaluate the effect of the proposed DSV network, we carry out a series of experiments on the real X-ray images for comparison and evaluation, and the experimental results demonstrate that the proposed DSV network could outperform other classification methods on this classification task.
Keyphrases
  • deep learning
  • machine learning
  • high resolution
  • multiple sclerosis
  • healthcare
  • oxidative stress
  • network analysis
  • hip fracture
  • anti inflammatory
  • social media
  • health information
  • clinical evaluation