Deep learning for automated skeletal bone age assessment in X-ray images.

Journal: Medical image analysis
Published Date:

Abstract

Skeletal bone age assessment is a common clinical practice to investigate endocrinology, genetic and growth disorders in children. It is generally performed by radiological examination of the left hand by using either the Greulich and Pyle (G&P) method or the Tanner-Whitehouse (TW) one. However, both clinical procedures show several limitations, from the examination effort of radiologists to (most importantly) significant intra- and inter-operator variability. To address these problems, several automated approaches (especially relying on the TW method) have been proposed; nevertheless, none of them has been proved able to generalize to different races, age ranges and genders. In this paper, we propose and test several deep learning approaches to assess skeletal bone age automatically; the results showed an average discrepancy between manual and automatic evaluation of about 0.8 years, which is state-of-the-art performance. Furthermore, this is the first automated skeletal bone age assessment work tested on a public dataset and for all age ranges, races and genders, for which the source code is available, thus representing an exhaustive baseline for future research in the field. Beside the specific application scenario, this paper aims at providing answers to more general questions about deep learning on medical images: from the comparison between deep-learned features and manually-crafted ones, to the usage of deep-learning methods trained on general imagery for medical problems, to how to train a CNN with few images.

Authors

  • C Spampinato
    Pattern Recognition and Computer Vision (PeRCeiVe) Lab, Department of Electrical, Electronics and Computer Engineering, University of Catania, Viale Andrea Doria, 6 - 95125 - Catania, Italy. Electronic address: cspampin@dieei.unict.it.
  • S Palazzo
    Pattern Recognition and Computer Vision (PeRCeiVe) Lab, Department of Electrical, Electronics and Computer Engineering, University of Catania, Viale Andrea Doria, 6 - 95125 - Catania, Italy. Electronic address: simone.palazzo@dieei.unict.it.
  • D Giordano
    Pattern Recognition and Computer Vision (PeRCeiVe) Lab, Department of Electrical, Electronics and Computer Engineering, University of Catania, Viale Andrea Doria, 6 - 95125 - Catania, Italy. Electronic address: dgiordan@dieei.unict.it.
  • M Aldinucci
    Computer Science Department, University of Torino, Corso Svizzera, 185 - 10149 - Torino, Italy. Electronic address: aldinuc@di.unito.it.
  • R Leonardi
    Department of Orthodontics, University of Catania, Via Santa Sofia, 78 - 95125 - Catania, Italy. Electronic address: rleonardi@unict.it.