Segmentation of dental cone‐beam CT scans affected by metal artifacts using a mixed‐scale dense convolutional neural network
Medical Physics2019Vol. 46(11), pp. 5027–5035
Citations Over TimeTop 10% of 2019 papers
Jordi Minnema, Maureen van Eijnatten, Allard A. Hendriksen, Niels Liberton, Daniël M. Pelt, Kees Joost Batenburg, Tymour Forouzanfar, Jan Wolff
Abstract
The MS-D network was able to accurately segment bony structures in CBCT scans affected by metal artifacts.
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