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Automatic landmark identification in cone-beam computed tomography
Authors:Maxime Gillot  Felicia Miranda  Baptiste Baquero  Antonio Ruellas  Marcela Gurgel  Najla Al Turkestani  Luc Anchling  Nathan Hutin  Elizabeth Biggs  Marilia Yatabe  Beatriz Paniagua  Jean-Christophe Fillion-Robin  David Allemang  Jonas Bianchi  Lucia Cevidanes  Juan Carlos Prieto
Institution:1. Department of Orthodontics and Pediatric Dentistry, University of Michigan School of Dentistry, MI, Ann Arbor, USA

CPE Lyon, Lyon, France;2. Department of Orthodontics and Pediatric Dentistry, University of Michigan School of Dentistry, MI, Ann Arbor, USA;3. Department of Orthodontics and Pediatric Dentistry, School of Dentistry, Federal University of Rio de Janeiro, Rio de Janeiro, Brazil;4. Kitware Inc., Chapel Hill, NC, USA;5. Department of Orthodontics, University of the Pacific, San Francisco, CA, USA;6. Department of Psychiatry, University of North Carolina, Chapel Hill, NC, USA

Abstract:

Objective

To present and validate an open-source fully automated landmark placement (ALICBCT) tool for cone-beam computed tomography scans.

Materials and Methods

One hundred and forty-three large and medium field of view cone-beam computed tomography (CBCT) were used to train and test a novel approach, called ALICBCT that reformulates landmark detection as a classification problem through a virtual agent placed inside volumetric images. The landmark agents were trained to navigate in a multi-scale volumetric space to reach the estimated landmark position. The agent movements decision relies on a combination of DenseNet feature network and fully connected layers. For each CBCT, 32 ground truth landmark positions were identified by 2 clinician experts. After validation of the 32 landmarks, new models were trained to identify a total of 119 landmarks that are commonly used in clinical studies for the quantification of changes in bone morphology and tooth position.

Results

Our method achieved a high accuracy with an average of 1.54 ± 0.87 mm error for the 32 landmark positions with rare failures, taking an average of 4.2 second computation time to identify each landmark in one large 3D-CBCT scan using a conventional GPU.

Conclusion

The ALICBCT algorithm is a robust automatic identification tool that has been deployed for clinical and research use as an extension in the 3D Slicer platform allowing continuous updates for increased precision.
Keywords:anatomic landmarks  fiducial markers  machine learning
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