Deep learning to overcome Zernike phase-contrast nanoCT artifacts for automated micro-nano porosity segmentation in bone.

Sensor3D model U-Net model X-ray nanotomography Zernike phase contrast computer-aided image segmentation deep learning lacuna-canalicular network

Journal

Journal of synchrotron radiation
ISSN: 1600-5775
Titre abrégé: J Synchrotron Radiat
Pays: United States
ID NLM: 9888878

Informations de publication

Date de publication:
01 Jan 2024
Historique:
medline: 14 12 2023
pubmed: 14 12 2023
entrez: 14 12 2023
Statut: aheadofprint

Résumé

Bone material contains a hierarchical network of micro- and nano-cavities and channels, known as the lacuna-canalicular network (LCN), that is thought to play an important role in mechanobiology and turnover. The LCN comprises micrometer-sized lacunae, voids that house osteocytes, and submicrometer-sized canaliculi that connect bone cells. Characterization of this network in three dimensions is crucial for many bone studies. To quantify X-ray Zernike phase-contrast nanotomography data, deep learning is used to isolate and assess porosity in artifact-laden tomographies of zebrafish bones. A technical solution is proposed to overcome the halo and shade-off domains in order to reliably obtain the distribution and morphology of the LCN in the tomographic data. Convolutional neural network (CNN) models are utilized with increasing numbers of images, repeatedly validated by `error loss' and `accuracy' metrics. U-Net and Sensor3D CNN models were trained on data obtained from two different synchrotron Zernike phase-contrast transmission X-ray microscopes, the ANATOMIX beamline at SOLEIL (Paris, France) and the P05 beamline at PETRA III (Hamburg, Germany). The Sensor3D CNN model with a smaller batch size of 32 and a training data size of 70 images showed the best performance (accuracy 0.983 and error loss 0.032). The analysis procedures, validated by comparison with human-identified ground-truth images, correctly identified the voids within the bone matrix. This proposed approach may have further application to classify structures in volumetric images that contain non-linear artifacts that degrade image quality and hinder feature identification.

Identifiants

pubmed: 38095668
pii: S1600577523009852
doi: 10.1107/S1600577523009852
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Subventions

Organisme : Deutsche Forschungsgemeinschaft
ID : DFG/ZA557/5
Organisme : Deutsche Forschungsgemeinschaft
ID : DFG/ SFB 986

Informations de copyright

open access.

Auteurs

Andreia Silveira (A)

Department for Restorative, Preventive and Pediatric Dentistry, Charité-Universitaetsmedizin, Berlin, Germany.

Imke Greving (I)

Institute of Materials Physics, Helmholtz-Zentrum Hereon, Geesthacht, Germany.

Elena Longo (E)

Elettra - Sincrotrone Trieste SCpA, Basovizza, Trieste, Italy.

Mario Scheel (M)

Synchrotron Soleil, Saint-Aubin, France.

Timm Weitkamp (T)

Synchrotron Soleil, Saint-Aubin, France.

Claudia Fleck (C)

Fachgebiet Werkstofftechnik / Chair of Materials Science and Engineering, Institute of Materials Science and Technology, Faculty III Process Sciences, Technische Universität Berlin, Berlin, Germany.

Ron Shahar (R)

Koret School of Veterinary Medicine, The Robert H. Smith Faculty of Agriculture, Food and Environmental Sciences, Hebrew University of Jerusalem, Rehovot, Israel.

Paul Zaslansky (P)

Department for Restorative, Preventive and Pediatric Dentistry, Charité-Universitaetsmedizin, Berlin, Germany.

Classifications MeSH