Automatic segmentation of inner ear on CT-scan using auto-context convolutional neural network

Affiliation auteurs!!!! Error affiliation !!!!
TitreAutomatic segmentation of inner ear on CT-scan using auto-context convolutional neural network
Type de publicationJournal Article
Year of Publication2021
AuteursHussain R, Lalande A, Girum KBerihu, Guigou C, Grayeli ABozorg
JournalSCIENTIFIC REPORTS
Volume11
Pagination4406
Date PublishedFEB 23
Type of ArticleArticle
ISSN2045-2322
Résumé

Temporal bone CT-scan is a prerequisite in most surgical procedures concerning the ear such as cochlear implants. The 3D vision of inner ear structures is crucial for diagnostic and surgical preplanning purposes. Since clinical CT-scans are acquired at relatively low resolutions, improved performance can be achieved by registering patient-specific CT images to a high-resolution inner ear model built from accurate 3D segmentations based on micro-CT of human temporal bone specimens. This paper presents a framework based on convolutional neural network for human inner ear segmentation from micro-CT images which can be used to build such a model from an extensive database. The proposed approach employs an auto-context based cascaded 2D U-net architecture with 3D connected component refinement to segment the cochlear scalae, semicircular canals, and the vestibule. The system was formulated on a data set composed of 17 micro-CT from public Hear-EU dataset. A Dice coefficient of 0.90 and Hausdorff distance of 0.74 mm were obtained. The system yielded precise and fast automatic inner-ear segmentations.

DOI10.1038/s41598-021-83955-x