Deep Learning-Based Segmentation of Post-Mortem Human's Olfactory Bulb Structures in X-ray Phase-Contrast Tomography.

Journal: Tomography (Ann Arbor, Mich.)
Published Date:

Abstract

The human olfactory bulb (OB) has a laminar structure. The segregation of cell populations in the OB image poses a significant challenge because of indistinct boundaries of the layers. Standard 3D visualization tools usually have a low resolution and cannot provide the high accuracy required for morphometric analysis. X-ray phase contrast tomography (XPCT) offers sufficient resolution and contrast to identify single cells in large volumes of the brain. The numerous microanatomical structures detectable in XPCT image of the OB, however, greatly complicate the manual delineation of OB neuronal cell layers. To address the challenging problem of fully automated segmentation of XPCT images of human OB morphological layers, we propose a new pipeline for tomographic data processing. Convolutional neural networks (CNN) were used to segment XPCT image of native unstained human OB. Virtual segmentation of the whole OB and an accurate delineation of each layer in a healthy non-demented OB is mandatory as the first step for assessing OB morphological changes in smell impairment research. In this framework, we proposed an effective tool that could help to shed light on OB layer-specific degeneration in patients with olfactory disorder.

Authors

  • Alexandr Meshkov
    The Moscow Institute of Physics and Technology, 9 Institutskiy per., 141701 Moscow, Russia.
  • Anvar Khafizov
    FSRC «Crystallography and Photonics» RAS, Leninskiy pr. 59, 119333 Moscow, Russia.
  • Alexey Buzmakov
    FSRC «Crystallography and Photonics» RAS, Leninskiy pr. 59, 119333 Moscow, Russia.
  • Inna Bukreeva
    Institute of Nanotechnology-CNR, c/o Department of Physics, La Sapienza University, Piazzale Aldo Moro 5, 00185 Rome, Italy.
  • Olga Junemann
    FSSI Research Institute of Human Morphology, Tsyurupy Str. 3, 117418 Moscow, Russia.
  • Michela Fratini
    Institute of Nanotechnology-CNR, c/o Department of Physics, La Sapienza University, Piazzale Aldo Moro 5, 00185 Rome, Italy.
  • Alessia Cedola
    Institute of Nanotechnology-CNR, c/o Department of Physics, La Sapienza University, Piazzale Aldo Moro 5, 00185 Rome, Italy.
  • Marina Chukalina
    FSRC «Crystallography and Photonics» RAS, Leninskiy pr. 59, 119333 Moscow, Russia.
  • Andrei Yamaev
    Smart Engines Service LLC, 60-Letiya Oktyabrya pr. 9, 117312 Moscow, Russia.
  • Giuseppe Gigli
    Institute of Nanotechnology-CNR, c/o Campus Ecotekne-Universita del Salento, Via Monteroni, 73100 Lecce, Italy.
  • Fabian Wilde
    Institute of Materials Research, Helmholtz-Zentrum Hereon, Max-Planck-Str. 1, 21502 Geesthacht, Germany.
  • Elena Longo
    Elettra-Sincrotrone Trieste S.C.p.A., 34149 Trieste, Italy.
  • Victor Asadchikov
    FSRC «Crystallography and Photonics» RAS, Leninskiy pr. 59, 119333 Moscow, Russia.
  • Sergey Saveliev
    FSSI Research Institute of Human Morphology, Tsyurupy Str. 3, 117418 Moscow, Russia.
  • Dmitry Nikolaev
    Smart Engines Service LLC, 60-Letiya Oktyabrya pr. 9, 117312 Moscow, Russia.