DX2CT: Diffusion Model for 3D CT Reconstruction from Bi or Mono-planar 2D X-ray(s)
Computational tomography (CT) provides high-resolution medical imaging, but it can expose patients to high radiation. X-ray scanners have low radiation exposure, but their resolutions are low. This paper proposes a new conditional diffusion model, DX2CT, that reconstructs three-dimensional (3D) CT v...
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Zusammenfassung: | Computational tomography (CT) provides high-resolution medical imaging, but
it can expose patients to high radiation. X-ray scanners have low radiation
exposure, but their resolutions are low. This paper proposes a new conditional
diffusion model, DX2CT, that reconstructs three-dimensional (3D) CT volumes
from bi or mono-planar X-ray image(s). Proposed DX2CT consists of two key
components: 1) modulating feature maps extracted from two-dimensional (2D)
X-ray(s) with 3D positions of CT volume using a new transformer and 2)
effectively using the modulated 3D position-aware feature maps as conditions of
DX2CT. In particular, the proposed transformer can provide conditions with rich
information of a target CT slice to the conditional diffusion model, enabling
high-quality CT reconstruction. Our experiments with the bi or mono-planar
X-ray(s) benchmark datasets show that proposed DX2CT outperforms several
state-of-the-art methods. Our codes and model will be available at:
https://www.github.com/intyeger/DX2CT. |
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DOI: | 10.48550/arxiv.2409.08850 |