Quad-Net: Quad-domain Network for CT Metal Artifact Reduction
Zilong Li, Qi Gao, Yaping Wu, Chuang Niu, Junping Zhang, Meiyun Wang,, Ge Wang, Hongming Shan

TL;DR
Quad-Net introduces a novel quad-domain deep learning approach for CT metal artifact reduction, integrating sinogram, image, and Fourier domain features to enhance artifact removal without needing precise metal masks.
Contribution
The paper proposes Quad-Net, a quad-domain deep network that synergizes features across multiple domains for improved metal artifact reduction in CT images, with minimal additional computational cost.
Findings
Outperforms state-of-the-art MAR methods quantitatively and visually
Does not require precise metal masks, simplifying clinical application
Effective in clinical datasets with complex artifacts
Abstract
Metal implants and other high-density objects in patients introduce severe streaking artifacts in CT images, compromising image quality and diagnostic performance. Although various methods were developed for CT metal artifact reduction over the past decades, including the latest dual-domain deep networks, remaining metal artifacts are still clinically challenging in many cases. Here we extend the state-of-the-art dual-domain deep network approach into a quad-domain counterpart so that all the features in the sinogram, image, and their corresponding Fourier domains are synergized to eliminate metal artifacts optimally without compromising structural subtleties. Our proposed quad-domain network for MAR, referred to as Quad-Net, takes little additional computational cost since the Fourier transform is highly efficient, and works across the four receptive fields to learn both global and…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Medical Imaging Techniques and Applications · Radiation Dose and Imaging
MethodsConvolution
