Segmentation of nanotomographic cortical bone images for quantitative characterization of the osteoctyte lacuno-canalicular network
Author(s) -
Antonia Ciani,
Manuel GuizarSicairos,
Ana Díaz,
Mirko Holler,
Stéphane Pallu,
Zahra Achiou,
Rachid Jennane,
Hechmi Toumi,
Éric Lespessailles,
Cameron M. Kewish
Publication year - 2016
Publication title -
aip conference proceedings
Language(s) - English
Resource type - Conference proceedings
eISSN - 1551-7616
pISSN - 0094-243X
DOI - 10.1063/1.4937534
Subject(s) - cortical bone , osteocyte , computer science , segmentation , focus (optics) , characterization (materials science) , biomedical engineering , materials science , computer vision , anatomy , optics , physics , nanotechnology , biology , osteoblast , engineering , biochemistry , in vitro
A newly developed data processing method able to characterize the osteocytes lacuno-canalicular network (LCN) is presented. Osteocytes are the most abundant cells in the bone, living in spaces called lacunae embedded inside the bone matrix and connected to each other with an extensive network of canals that allows for the exchange of nutrients and for mechanotransduction functions. The geometrical three-dimensional (3D) architecture is increasingly thought to be related to the macroscopic strength or failure of the bone and it is becoming the focus for investigating widely spread diseases such as osteoporosis. To obtain 3D LCN images non-destructively has been out of reach until recently, since tens-of-nanometers scale resolution is required. Ptychographic tomography was validated for bone imaging in [1], showing clearly the LCN. The method presented here was applied to 3D ptychographic tomographic images in order to extract morphological and geometrical parameters of the lacuno-canalicular structures.
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