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Main Authors: Han, Wencheng, Guo, Dongqian, Chen, Xiao, Lyu, Pang, Jin, Yi, Shen, Jianbing
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.21259
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author Han, Wencheng
Guo, Dongqian
Chen, Xiao
Lyu, Pang
Jin, Yi
Shen, Jianbing
author_facet Han, Wencheng
Guo, Dongqian
Chen, Xiao
Lyu, Pang
Jin, Yi
Shen, Jianbing
contents Metal artifacts in CT slices have long posed challenges in medical diagnostics. These artifacts degrade image quality, resulting in suboptimal visualization and complicating the accurate interpretation of tissues adjacent to metal implants. To address these issues, we introduce the Latent Gemstone Spectral Imaging (GSI) Alignment Framework, which effectively reduces metal artifacts while avoiding the introduction of noise information. Our work is based on a key finding that even artifact-affected ordinary CT sequences contain sufficient information to discern detailed structures. The challenge lies in the inability to clearly represent this information. To address this issue, we developed an Alignment Framework that adjusts the representation of ordinary CT images to match GSI CT sequences. GSI is an advanced imaging technique using multiple energy levels to mitigate artifacts caused by metal implants. By aligning the representation to GSI data, we can effectively suppress metal artifacts while clearly revealing detailed structure, without introducing extraneous information into CT sequences. To facilitate the application, we propose a new dataset, Artifacts-GSI, captured from real patients with metal implants, and establish a new benchmark based on this dataset. Experimental results show that our method significantly reduces metal artifacts and greatly enhances the readability of CT slices. All our code and data are available at: https://um-lab.github.io/GSI-MAR/
format Preprint
id arxiv_https___arxiv_org_abs_2503_21259
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reducing CT Metal Artifacts by Learning Latent Space Alignment with Gemstone Spectral Imaging Data
Han, Wencheng
Guo, Dongqian
Chen, Xiao
Lyu, Pang
Jin, Yi
Shen, Jianbing
Computer Vision and Pattern Recognition
Metal artifacts in CT slices have long posed challenges in medical diagnostics. These artifacts degrade image quality, resulting in suboptimal visualization and complicating the accurate interpretation of tissues adjacent to metal implants. To address these issues, we introduce the Latent Gemstone Spectral Imaging (GSI) Alignment Framework, which effectively reduces metal artifacts while avoiding the introduction of noise information. Our work is based on a key finding that even artifact-affected ordinary CT sequences contain sufficient information to discern detailed structures. The challenge lies in the inability to clearly represent this information. To address this issue, we developed an Alignment Framework that adjusts the representation of ordinary CT images to match GSI CT sequences. GSI is an advanced imaging technique using multiple energy levels to mitigate artifacts caused by metal implants. By aligning the representation to GSI data, we can effectively suppress metal artifacts while clearly revealing detailed structure, without introducing extraneous information into CT sequences. To facilitate the application, we propose a new dataset, Artifacts-GSI, captured from real patients with metal implants, and establish a new benchmark based on this dataset. Experimental results show that our method significantly reduces metal artifacts and greatly enhances the readability of CT slices. All our code and data are available at: https://um-lab.github.io/GSI-MAR/
title Reducing CT Metal Artifacts by Learning Latent Space Alignment with Gemstone Spectral Imaging Data
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.21259