A deep learning oriented method for automated 3D reconstruction of carotid arterial trees from MR imaging.

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

Abstract

The scope of this paper is to present a new carotid vessel segmentation algorithm implementing the U-net based convolutional neural network architecture. With carotid atherosclerosis being the major cause of stroke in Europe, new methods that can provide more accurate image segmentation of the carotid arterial tree and plaque tissue can help improve early diagnosis, prevention and treatment of carotid disease. Herein, we present a novel methodology combining the U-net model and morphological active contours in an iterative framework that accurately segments the carotid lumen and outer wall. The method automatically produces a 3D meshed model of the carotid bifurcation and smaller branches, using multispectral MR image series obtained from two clinical centres of the TAXINOMISIS study. As indicated by a validation study, the algorithm succeeds high accuracy (99.1% for lumen area and 92.6% for the perimeter) for lumen segmentation. The proposed algorithm will be used in the TAXINOMISIS study to obtain more accurate 3D vessel models for improved computational fluid dynamics simulations and the development of models of atherosclerotic plaque progression.

Authors

  • Vassilis D Tsakanikas
  • Panagiotis K Siogkas
  • Michalis D Mantzaris
  • Vassiliki T Potsika
  • Vassiliki I Kigka
  • Themis P Exarchos
    Institute of Communication and Computer Systems, National Technical University of Athens, Athens, Greece, Themis.exarchos@gmail.com.
  • Igor B Koncar
  • Marija Jovanović
    Department of Pharmacokinetics and Clinical Pharmacy, University of Belgrade - Faculty of Pharmacy, Belgrade, Serbia...
  • Aleksandra Vujcic
  • Stefan Ducic
  • Jaroslav Pelisek
  • Dimitrios I Fotiadis
    Biomedical Research Institute, Foundation for Research and Technology Hellas, Greece; Unit of Medical Technology and Intelligent Information Systems, Department of Materials Science and Engineering, University of Ioannina, Greece.