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Lee, Jimin
Radiation & Medical Intelligence Lab.
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Deep Learning-Based Metal Artifact Reduction With Masked Mean Squared Error Loss Function in Simulation CT for Radiation Therapy for Head and Neck Cancer

Author(s)
Ki, JuhyeongLee, WonjinKim, BitbyeolKim, DukjuJung, SeongmoonLee, Jimin
Issued Date
2025-06
DOI
10.1109/ACCESS.2025.3583191
URI
https://scholarworks.unist.ac.kr/handle/201301/87700
Citation
IEEE ACCESS, v.13, pp.113634 - 113647
Abstract
Deep learning-based approaches to metal artifact reduction have recently been proposed, yet these methods still struggle to effectively remove metal artifacts in head and neck computed tomography (CT) images, which have a complex structure and can contain strong artifacts due to the insertion of dental fillings and implants. These strong metal artifacts cause treatment uncertainty in radiation therapy. In this study, we propose a masked criterion function that weighs each region for CT numbers using masks extracted by supervised contrastive learning to better remove metal artifacts in head and neck CT images. Applying the criterion function, a convolutional neural network-based metal artifact reduction model was trained on a synthetic dataset. We adopted a new data synthesis method to prevent tissue information loss by sinogram handling. For the synthetic data, our method outperformed previous models (e.g., linear interpolation, UNet, IndudoNet, FusionNet, Uformer) in terms of image quality and quantitative evaluations, showing the lowest average value of calculated artifact index, 26.57311, compared to the others. In addition, we recalculated the dose on artifact-reduced CT images and found that artifacts clearly degraded the plan quality for patients whose target is close to metal. The results of this study demonstrate that the proposed criterion function helps separate artifacts and tissues using masks extracted through supervised contrastive learning, and that the proposed model can reduce even strong artifacts using this criterion function. Our code can be found here: github.com/wonjin0403/MAR.git
Publisher
IEEE
ISSN
2169-3536
Keyword (Author)
Computed tomographycontrastive learninghead and neckmasked mean squared errormetal artifact reductionradiation therapy
Keyword
IMAGE QUALITYTOMOGRAPHYNETWORK

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