Artifact suppression for breast specimen imaging in micro CBCT using deep learning
Sorapong Aootaphao,
Puttisak Puttawibul,
Pairash Thajchayapong
et al.
Abstract:Background
Cone-beam computed tomography (CBCT) has been introduced for breast-specimen imaging to identify a free resection margin of abnormal tissues in breast conservation. As well-known, typical micro CT consumes long acquisition and computation times. One simple solution to reduce the acquisition scan time is to decrease of the number of projections, but this method generates streak artifacts on breast specimen images. Furthermore, the presence of a metallic-needle marker on a breast speci… Show more
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