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Disentangled deep learning method for interior tomographic reconstruction of low-dose X-ray CT.

Authors

Chen C,Zhang L,Gao H,Wang Z,Xing Y,Chen Z

Affiliations (5)

  • Department of Engineering Physics, Tsinghua University, Room 602, Liuqing Building, Tsinghua University, Beijing, Beijing, 100084, CHINA.
  • Department of Engineering Physics, Tsinghua University, Room 510, liuqing Building, Beijing 100084, beijing, 100084, CHINA.
  • Department of Engineering Physics, Tsinghua University, Liuqing Building, Haidian District, Beijing, China, Beijing, 100084, CHINA.
  • Department of Engineering Physics, Tsinghua University, Room 814A, ZiJing Building 15#, Beijing 100084, Beijing, 100084, CHINA.
  • Engineering Physics, Tsinghua University, Liuqing Building, Haidian District, Beijing, China, Beijing, Beijing, 100084, CHINA.

Abstract

Objective
Low-dose interior tomography integrates low-dose CT (LDCT) with region-of-interest (ROI) imaging which finds wide application in radiation dose reduction and high-resolution imaging. However, the combined effects of noise and data truncation pose great challenges for accurate tomographic reconstruction. This study aims to develop a novel reconstruction framework that achieves high-quality ROI reconstruction and efficient extension of recoverable region to provide innovative solutions to address coupled ill-posed problems.
Approach
We conducted a comprehensive analysis of projection data composition and angular sampling patterns in low-dose interior tomography. Based on this analysis, we proposed two novel deep learning-based reconstruction pipelines: (1) Deep Projection Extraction-based Reconstruction (DPER) that focuses on ROI reconstruction by disentangling and extracting noise and background projection contributions using a dual-domain deep neural network; and (2) DPER with Progressive extension (DPER-Pro) that enhances DPER by a progressive "coarse-to-fine" strategy for missing data compensation, enabling simultaneous ROI reconstruction and extension of recoverable regions. The proposed methods were rigorously evaluated through extensive experiments on simulated torso datasets and real CT scans of a torso phantom.
Main Results
The experimental results demonstrated that DPER effectively handles the coupled ill-posed problem and achieves high-quality ROI reconstructions by accurately extracting noise and background projections. DPER-Pro extends the recoverable region while preserving ROI image quality by leveraging disentangled projection components and angular sampling patterns. Both methods outperform competing approaches in reconstructing reliable structures, enhancing generalization, and mitigating noise and truncation artifacts.
Significance
This work presents a novel decoupled deep learning framework for low-dose interior tomography that provides a robust and effective solution to the challenges posed by noise and truncated projections. The proposed methods significantly improve ROI reconstruction quality while efficiently recovering structural information in exterior regions, offering a promising pathway for advancing low-dose ROI imaging across a wide range of applications.&#xD.

Topics

Journal Article

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