Image augmentation and automated measurement of endotracheal-tube-to-carina distance on chest radiographs in intensive care unit using a deep learning model with external validation.

Journal: Critical care (London, England)
PMID:

Abstract

BACKGROUND: Chest radiographs are routinely performed in intensive care unit (ICU) to confirm the correct position of an endotracheal tube (ETT) relative to the carina. However, their interpretation is often challenging and requires substantial time and expertise. The aim of this study was to propose an externally validated deep learning model with uncertainty quantification and image segmentation for the automated assessment of ETT placement on ICU chest radiographs.

Authors

  • Matthieu Oliver
    Methodological Support Unit, Reunion University Hospital, Saint-Denis, France. matthieu.oliver@chu-reunion.fr.
  • Amélie Renou
    Intensive care unit.
  • Nicolas Allou
    Réanimation Polyvalente, Centre Hospitalier Universitaire Félix Guyon, Saint-Denis, France.
  • Lucas Moscatelli
    Radiology, Reunion University Hospital, Saint-Denis, France.
  • Cyril Ferdynus
    Unité de Soutien Méthodologique, CHU de La Réunion, Saint-Denis, France.
  • Jérôme Allyn
    Réanimation Polyvalente, Centre Hospitalier Universitaire Félix Guyon, Saint-Denis, France.