Automated CT bone segmentation using statistical shape modelling and local template matching.
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BORIS DOI
Publisher DOI
PubMed ID
31482715
Description
Accurate CT bone segmentation is essential to develop chair-side manufacturing of implants based on additive manufacturing. We herewith present an automated method able to accurately segment challenging bone regions, while simultaneously providing anatomical correspondences. The method was evaluated on demanding regions: normal and osteoarthritic scapulae, healthy and atrophied mandibles, and orbital bones. On average, results were accurate with surface distances of approximately 0.5 mm and average Dice coefficients >90%. Since anatomical correspondences are propagated during the segmentation process, this approach can directly yield anatomical measurements, provide design parameters for personalized surgical instruments, or determine the bone geometry to manufacture patient-specific implants.
Date of Publication
2019-12
Publication Type
Article
Keyword(s)
Bone segmentation computed tomography correction statistical shape model template matching
Language(s)
en
Contributor(s)
Terrier, Alexandre | |
Becce, Fabio | |
Farron, Alain |
Series
Computer methods in biomechanics and biomedical engineering
Publisher
Taylor & Francis
ISSN
1025-5842
Access(Rights)
restricted