Deep Sinogram Completion with Image Prior for Metal Artifact Reduction in CT Images
About
Computed tomography (CT) has been widely used for medical diagnosis, assessment, and therapy planning and guidance. In reality, CT images may be affected adversely in the presence of metallic objects, which could lead to severe metal artifacts and influence clinical diagnosis or dose calculation in radiation therapy. In this paper, we propose a generalizable framework for metal artifact reduction (MAR) by simultaneously leveraging the advantages of image domain and sinogram domain-based MAR techniques. We formulate our framework as a sinogram completion problem and train a neural network (SinoNet) to restore the metal-affected projections. To improve the continuity of the completed projections at the boundary of metal trace and thus alleviate new artifacts in the reconstructed CT images, we train another neural network (PriorNet) to generate a good prior image to guide sinogram learning, and further design a novel residual sinogram learning strategy to effectively utilize the prior image information for better sinogram completion. The two networks are jointly trained in an end-to-end fashion with a differentiable forward projection (FP) operation so that the prior image generation and deep sinogram completion procedures can benefit from each other. Finally, the artifact-reduced CT images are reconstructed using the filtered backward projection (FBP) from the completed sinogram. Extensive experiments on simulated and real artifacts data demonstrate that our method produces superior artifact-reduced results while preserving the anatomical structures and outperforms other MAR methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Metal Artifact Reduction | Synthesized Data Large Metal | PSNR33.37 | 25 | |
| Metal Artifact Reduction | Synthesized Data Small Metal | PSNR32.77 | 25 | |
| Metal Artifact Reduction | DeepLesion synthesized (Medium Metal) | PSNR (dB)33.37 | 19 | |
| Metal Artifact Reduction | DeepLesion synthesized | PSNR (dB)33.21 | 9 | |
| Metal Artifact Reduction | Synthesized Data Input | PSNR34.04 | 8 | |
| Metal Artifact Reduction | Synthesized Data Average | PSNR33.21 | 8 | |
| Pelvic bone segmentation | CLINIC metal | Sacrum Segmentation Score92.52 | 8 | |
| Metal Artifact Reduction | DeepLesion simulated (test) | PSNR (Image Domain)30.06 | 8 |