Nonlinear ill-posed problem in low-dose dental cone-beam computed
tomography
- URL: http://arxiv.org/abs/2303.01678v1
- Date: Fri, 3 Mar 2023 02:46:15 GMT
- Title: Nonlinear ill-posed problem in low-dose dental cone-beam computed
tomography
- Authors: Hyoung Suk Park and Chang Min Hyun and Jin Keun Seo
- Abstract summary: This paper explains the underlying reasons why dental CBCT is more ill-posed than standard computed tomography.
Despite this severe ill-posedness, the demand for dental CBCT systems is rapidly growing because of their cost competitiveness and low radiation dose.
- Score: 1.039109674772348
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper describes the mathematical structure of the ill-posed nonlinear
inverse problem of low-dose dental cone-beam computed tomography (CBCT) and
explains the advantages of a deep learning-based approach to the reconstruction
of computed tomography images over conventional regularization methods. This
paper explains the underlying reasons why dental CBCT is more ill-posed than
standard computed tomography. Despite this severe ill-posedness, the demand for
dental CBCT systems is rapidly growing because of their cost competitiveness
and low radiation dose. We then describe the limitations of existing methods in
the accurate restoration of the morphological structures of teeth using dental
CBCT data severely damaged by metal implants. We further discuss the usefulness
of panoramic images generated from CBCT data for accurate tooth segmentation.
We also discuss the possibility of utilizing radiation-free intra-oral scan
data as prior information in CBCT image reconstruction to compensate for the
damage to data caused by metal implants.
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