Bioengineering (Feb 2024)

Concurrent Learning Approach for Estimation of Pelvic Tilt from Anterior–Posterior Radiograph

  • Ata Jodeiri,
  • Hadi Seyedarabi,
  • Sebelan Danishvar,
  • Seyyed Hossein Shafiei,
  • Jafar Ganjpour Sales,
  • Moein Khoori,
  • Shakiba Rahimi,
  • Seyed Mohammad Javad Mortazavi

DOI
https://doi.org/10.3390/bioengineering11020194
Journal volume & issue
Vol. 11, no. 2
p. 194

Abstract

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Accurate and reliable estimation of the pelvic tilt is one of the essential pre-planning factors for total hip arthroplasty to prevent common post-operative complications such as implant impingement and dislocation. Inspired by the latest advances in deep learning-based systems, our focus in this paper has been to present an innovative and accurate method for estimating the functional pelvic tilt (PT) from a standing anterior–posterior (AP) radiography image. We introduce an encoder–decoder-style network based on a concurrent learning approach called VGG-UNET (VGG embedded in U-NET), where a deep fully convolutional network known as VGG is embedded at the encoder part of an image segmentation network, i.e., U-NET. In the bottleneck of the VGG-UNET, in addition to the decoder path, we use another path utilizing light-weight convolutional and fully connected layers to combine all extracted feature maps from the final convolution layer of VGG and thus regress PT. In the test phase, we exclude the decoder path and consider only a single target task i.e., PT estimation. The absolute errors obtained using VGG-UNET, VGG, and Mask R-CNN are 3.04 ± 2.49, 3.92 ± 2.92, and 4.97 ± 3.87, respectively. It is observed that the VGG-UNET leads to a more accurate prediction with a lower standard deviation (STD). Our experimental results demonstrate that the proposed multi-task network leads to a significantly improved performance compared to the best-reported results based on cascaded networks.

Keywords