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Related Experiment Video

Updated: Jan 11, 2026

Protocol for the Evaluation of MRI Artifacts Caused by Metal Implants to Assess the Suitability of Implants and the Vulnerability of Pulse Sequences
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UPGRADE-Net: Unsupervised Sinogram-domain Data-Consistent Network for Metal Artifact Reduction.

Zhan Wu, Yikun Zhang, Yongjie Guo

    IEEE Transactions on Medical Imaging
    |November 10, 2025
    PubMed
    Summary
    This summary is machine-generated.

    This study introduces UPGRADE-Net, an unsupervised method for reducing metal artifacts in CT scans. It improves image quality without needing artifact-free data, outperforming existing techniques.

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    Area of Science:

    • Medical Imaging
    • Computer Vision
    • Artificial Intelligence

    Background:

    • Computed tomography (CT) is crucial for clinical diagnosis but suffers from metal artifacts caused by implants.
    • Existing supervised deep learning methods for metal artifact reduction (MAR) struggle with generalization due to the need for paired artifact-affected and artifact-free data.
    • Current MAR methods lack sinogram-domain data consistency for accurate metal trace inpainting.

    Purpose of the Study:

    • To develop an unsupervised deep learning framework for metal artifact reduction (MAR) in CT imaging.
    • To address the limitations of supervised methods by eliminating the need for artifact-free ground truth data.
    • To ensure sinogram-domain data consistency for precise metal trace restoration.

    Main Methods:

    • Proposed UPGRADE-Net, an unsupervised sinogram-domain data-consistent network for MAR.
    • Utilized a generative conditional diffusion model guided by prior knowledge for metal trace inpainting.
    • Developed a deep unsupervised MAR framework in the reverse process to learn background data distribution.
    • Incorporated physics-based conjugate-ray and accumulation-ray consistency loss functions for sinogram-domain data consistency.

    Main Results:

    • UPGRADE-Net effectively reduces metal artifacts in CT scans.
    • The method demonstrates strong performance on both public and clinical datasets.
    • Experimental results show superiority over state-of-the-art MAR techniques.
    • Achieved accurate metal trace restoration in the sinogram domain.

    Conclusions:

    • UPGRADE-Net offers a robust unsupervised solution for metal artifact reduction in CT.
    • The proposed method overcomes the data acquisition challenges of supervised approaches.
    • UPGRADE-Net enhances clinical diagnosis by improving CT image quality in the presence of metallic implants.