PLoS ONE (Jan 2022)

Automatic multi-anatomical skull structure segmentation of cone-beam computed tomography scans using 3D UNETR

  • Maxime Gillot,
  • Baptiste Baquero,
  • Celia Le,
  • Romain Deleat-Besson,
  • Jonas Bianchi,
  • Antonio Ruellas,
  • Marcela Gurgel,
  • Marilia Yatabe,
  • Najla Al Turkestani,
  • Kayvan Najarian,
  • Reza Soroushmehr,
  • Steve Pieper,
  • Ron Kikinis,
  • Beatriz Paniagua,
  • Jonathan Gryak,
  • Marcos Ioshida,
  • Camila Massaro,
  • Liliane Gomes,
  • Heesoo Oh,
  • Karine Evangelista,
  • Cauby Maia Chaves Junior,
  • Daniela Garib,
  • Fábio Costa,
  • Erika Benavides,
  • Fabiana Soki,
  • Jean-Christophe Fillion-Robin,
  • Hina Joshi,
  • Lucia Cevidanes,
  • Juan Carlos Prieto

Journal volume & issue
Vol. 17, no. 10

Abstract

Read online

The segmentation of medical and dental images is a fundamental step in automated clinical decision support systems. It supports the entire clinical workflow from diagnosis, therapy planning, intervention, and follow-up. In this paper, we propose a novel tool to accurately process a full-face segmentation in about 5 minutes that would otherwise require an average of 7h of manual work by experienced clinicians. This work focuses on the integration of the state-of-the-art UNEt TRansformers (UNETR) of the Medical Open Network for Artificial Intelligence (MONAI) framework. We trained and tested our models using 618 de-identified Cone-Beam Computed Tomography (CBCT) volumetric images of the head acquired with several parameters from different centers for a generalized clinical application. Our results on a 5-fold cross-validation showed high accuracy and robustness with a Dice score up to 0.962±0.02. Our code is available on our public GitHub repository.