End-to-End Deep Learning for Interior Tomography with Low-Dose X-ray CT
Yoseob Han, Dufan Wu, Kyungsang Kim, and Quanzheng Li

TL;DR
This paper introduces an end-to-end deep learning approach using dual-domain CNNs to improve interior tomography with low-dose X-ray CT, effectively reducing artifacts and noise by decoupling and solving two sub-problems.
Contribution
The paper proposes a novel end-to-end dual-domain CNN framework that decouples and addresses coupled artifacts in low-dose interior CT, outperforming existing image-domain methods.
Findings
Projection-domain CNN outperforms image-domain CNNs
The method effectively reduces cupping artifacts and noise
End-to-end learning improves reconstruction quality
Abstract
Objective: There exist several X-ray computed tomography (CT) scanning strategies to reduce a radiation dose, such as (1) sparse-view CT, (2) low-dose CT, and (3) region-of-interest (ROI) CT (called interior tomography). To further reduce the dose, the sparse-view and/or low-dose CT settings can be applied together with interior tomography. Interior tomography has various advantages in terms of reducing the number of detectors and decreasing the X-ray radiation dose. However, a large patient or small field-of-view (FOV) detector can cause truncated projections, and then the reconstructed images suffer from severe cupping artifacts. In addition, although the low-dose CT can reduce the radiation exposure dose, analytic reconstruction algorithms produce image noise. Recently, many researchers have utilized image-domain deep learning (DL) approaches to remove each artifact and demonstrated…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Seismic Imaging and Inversion Techniques
