Automatic detection of landmarks for the analysis of a reduction of supracondylar fractures of the humerus

Med Image Anal. 2020 Aug:64:101729. doi: 10.1016/j.media.2020.101729. Epub 2020 May 23.

Abstract

An accurate identification of bone features is required by modern orthopedics to improve patient recovery. The analysis of landmarks enables the planning of a fracture reduction surgery, designing prostheses or fixation devices, and showing deformities accurately. The recognition of these features was previously performed manually. However, this long and tedious process provided insufficient accuracy. In this paper, we propose a geometrically-based algorithm that automatically detects the most significant landmarks of a humerus. By employing contralateral images of the upper limb, a side-to-side study of the landmarks is also conducted to analyze the goodness of supracondylar fracture reductions. We conclude that a reduction can be classified by only considering the detected landmarks. In addition, our technique does not require a prior training, thus becoming a reliable alternative to treat this kind of fractures.

Keywords: Computer-assisted orthopedic (CAOS); Contralateral images; Geometrical approach; Humerus landmark detection.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Fracture Fixation
  • Humans
  • Humeral Fractures* / diagnostic imaging
  • Humeral Fractures* / surgery
  • Humerus
  • Orthopedics*