作者
Mohamed AA Hegazy, Myung Hye Cho, Min Hyoung Cho, Soo Yeol Lee
发表日期
2019/8/1
期刊
Biomedical engineering letters
卷号
9
页码范围
375-385
出版商
The Korean Society of Medical and Biological Engineering
简介
Unlike medical computed tomography (CT), dental CT often suffers from severe metal artifacts stemming from high-density materials employed for dental prostheses. Despite the many metal artifact reduction (MAR) methods available for medical CT, those methods do not sufficiently reduce metal artifacts in dental CT images because MAR performance is often compromised by the enamel layer of teeth, whose X-ray attenuation coefficient is not so different from that of prosthetic materials. We propose a deep learning-based metal segmentation method on the projection domain to improve MAR performance in dental CT. We adopted a simplified U-net for metal segmentation on the projection domain without using any information from the metal-artifacts-corrupted CT images. After training the network with the projection data of five patients, we segmented the metal objects on the projection data of other …
引用总数
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