Deep learning for the radiographic diagnosis of proximal femur fractures: Limitations and programming issues.

Journal: Orthopaedics & traumatology, surgery & research : OTSR
Published Date:

Abstract

INTRODUCTION: Radiology is one of the domains where artificial intelligence (AI) yields encouraging results, with diagnostic accuracy that approaches that of experienced radiologists and physicians. Diagnostic errors in traumatology are rare but can have serious functional consequences. Using AI as a radiological diagnostic aid may be beneficial in the emergency room. Thus, an effective, low-cost software that helps with making radiographic diagnoses would be a relevant tool for current clinical practice, although this concept has rarely been evaluated in orthopedics for proximal femur fractures (PFF). This led us to conduct a prospective study with the goals of: 1) programming deep learning software to help make the diagnosis of PFF on radiographs and 2) to evaluate its performance.

Authors

  • Sylvain Guy
    Institut du Mouvement et de l'appareil Locomoteur, 270, boulevard de Sainte Marguerite, 13009 Marseille, France. Electronic address: sylvain.guy.vidal@gmail.com.
  • Christophe Jacquet
    Institut du Mouvement et de l'appareil Locomoteur, 270, boulevard de Sainte Marguerite, 13009 Marseille, France.
  • Damien Tsenkoff
    Institut du Mouvement et de l'appareil Locomoteur, 270, boulevard de Sainte Marguerite, 13009 Marseille, France.
  • Jean-Noël Argenson
    Institut du Mouvement et de l'appareil Locomoteur, 270, boulevard de Sainte Marguerite, 13009 Marseille, France.
  • Matthieu Ollivier
    Institut du Mouvement et de l'appareil Locomoteur, 270, boulevard de Sainte Marguerite, 13009 Marseille, France.