Automatic Segmentation of Mandibular Ramus and Condyles.

Journal: Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
Published Date:

Abstract

In order to diagnose TMJ pathologies, we developed and tested a novel algorithm, MandSeg, that combines image processing and machine learning approaches for automatically segmenting the mandibular condyles and ramus. A deep neural network based on the U-Net architecture was trained for this task, using 109 cone-beam computed tomography (CBCT) scans. The ground truth label maps were manually segmented by clinicians. The U-Net takes 2D slices extracted from the 3D volumetric images. All the 3D scans were cropped depending on their size in order to keep only the mandibular region of interest. The same anatomic cropping region was used for every scan in the dataset. The scans were acquired at different centers with different resolutions. Therefore, we resized all scans to 512×512 in the pre-processing step where we also performed contrast adjustment as the original scans had low contrast. After the pre-processing, around 350 slices were extracted from each scan, and used to train the U-Net model. For the cross-validation, the dataset was divided into 10 folds. The training was performed with 60 epochs, a batch size of 8 and a learning rate of 2×10. The average performance of the models on the test set presented 0.95 ± 0.05 AUC, 0.93 ± 0.06 sensitivity, 0.9998 ± 0.0001 specificity, 0.9996 ± 0.0003 accuracy, and 0.91 ± 0.03 F1 score. This study findings suggest that fast and efficient CBCT image segmentation of the mandibular condyles and ramus from different clinical data sets and centers can be analyzed effectively. Future studies can now extract radiomic and imaging features as potentially relevant objective diagnostic criteria for TMJ pathologies, such as osteoarthritis (OA). The proposed segmentation will allow large datasets to be analyzed more efficiently for disease classification.

Authors

  • Celia Le
    University of Michigan, Ann Arbor, MI 48109, USA.
  • Romain Deleat-Besson
    University of Michigan, Ann Arbor, MI 48109, USA.
  • Juan Prieto
    University of North Carolina, Chapel Hill, NC, USA.
  • Serge Brosset
  • Maxime Dumont
  • Winston Zhang
    Department of Computational Medicine and Bioinformatics, University of Michigan, 100 Washtenaw Avenue, Ann Arbor, MI 48109, USA.
  • Lucia Cevidanes
    University of Michigan, Ann Arbor, MI, USA.
  • Jonas Bianchi
    University of Michigan, Ann Arbor, MI, USA.
  • Antonio Ruellas
    Federal University of Rio de Janeiro, Rio de Janeiro, Brazil.
  • Liliane Gomes
    Department for Orthodontics and Pediatric Dentistry, University of Michigan, Ann Arbor, MI, USA.
  • Marcela Gurgel
    University of Michigan, Ann Arbor, MI, USA.
  • Camila Massaro
  • Aron Aliaga-Del Castillo
  • Marilia Yatabe
    University of Michigan, Ann Arbor, MI, USA.
  • Erika Benavides
    University of Michigan, Department of Periodontics and Oral Medicine, School of Dentistry, Ann Arbor, MI, 48109, USA.
  • Fabiana Soki
    University of Michigan, Department of Periodontics and Oral Medicine, School of Dentistry, Ann Arbor, MI, 48109, USA.
  • Najla Al Turkestani
    University of Michigan, Ann Arbor, MI, USA.
  • Karine Evangelista
  • Joao Goncalves
  • Jose Valladares-Neto
  • Maria Alves Garcia Silva
  • Cauby Chaves
  • Fabio Costa
  • Daniela Garib
  • Heesoo Oh
  • Jonathan Gryak
  • Martin Styner
    Department of Psychiatry, University of North Carolina at Chapel Hill, NC, USA.
  • Jean-Christophe Fillion-Robin
  • Beatriz Paniagua
    Kitware Inc., Carrboro, NC, USA.
  • Kayvan Najarian
  • Reza Soroushmehr
    Department of Computational Medicine and Bioinformatics, University of Michigan, 100 Washtenaw Avenue, Ann Arbor, MI 48109, USA.