Automated Assessment of Bone Age Using Deep Learning and Gaussian Process Regression.

Journal: Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
Published Date:

Abstract

Bone age is an essential measure of skeletal maturity in children with growth disorders. It is typically assessed by a trained physician using radiographs of the hand and a reference model. However, it has been described that the reference models leave room for interpretation leading to a large inter-observer and intra-observer variation. In this work, we explore a novel method for automated bone age assessment to assist physicians with their estimation. It consists of a powerful combination of deep learning and Gaussian process regression. Using this combination, sensitivity of the deep learning model to rotations and flips of the input images can be exploited to increase overall predictive performance compared to only using the deep learning network. We validate our approach retrospectively on a set of 12611 radiographs of patients between 0 and 19 years of age.

Authors

  • Tom Van Steenkiste
  • Joeri Ruyssinck
    Department of Information Technology (INTEC), Ghent University - iMinds, Gaston Crommenlaan 8, B-9050 Ghent, Belgium.
  • Olivier Janssens
  • Baptist Vandersmissen
  • Florian Vandecasteele
  • Pieter Devolder
  • Eric Achten
    Department of Radiology, Ghent University Hospital, De Pintelaan 185, Ghent, 9000, Belgium.
  • Sofie Van Hoecke
  • Dirk Deschrijver
  • Tom Dhaene
    Department of Information Technology (INTEC), Ghent University - iMinds, Gaston Crommenlaan 8, B-9050 Ghent, Belgium.