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  • [Phys Med Biol.] End-to-end deep learning for interior tomography with low-dose x-ray CT

    [Phys Med Biol.] End-to-end deep learning for interior tomography with low-dose x-ray CT

    Harvard Medical School and Massachusetts General Hospital / 한요섭, 김경상*

  • 출처
    Phys Med Biol.
  • 등재일
    2022 May 16
  • 저널이슈번호
    67(11). doi: 10.1088/1361-6560/ac6560.
  • 내용

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    Abstract
    Objective.There are several x-ray computed tomography (CT) scanning strategies used to reduce 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, 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 a small field-of-view (FOV) detector can cause truncated projections, and then the reconstructed images suffer from severe cupping artifacts. In addition, although 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 impressive performances, and the theory of deep convolutional framelets supports the reason for the performance improvement.Approach.In this paper, we found that it is difficult to solve coupled artifacts using an image-domain convolutional neural network (CNN) based on deep convolutional framelets.Significance.To address the coupled problem, we decouple it into two sub-problems: (i) image-domain noise reduction inside the truncated projection to solve low-dose CT problem and (ii) extrapolation of the projection outside the truncated projection to solve the ROI CT problem. The decoupled sub-problems are solved directly with a novel proposed end-to-end learning method using dual-domain CNNs.Main results.We demonstrate that the proposed method outperforms the conventional image-domain DL methods, and a projection-domain CNN shows better performance than the image-domain CNNs commonly used by many researchers.

     

     

     

    Affiliation

    Yoseob Han  1 , Dufan Wu  1 , Kyungsang Kim  1 , Quanzheng Li  1
    1 Department of Radiology, Center for Advanced Medical Computing and Analysis (CAMCA), Harvard Medical School and Massachusetts General Hospital, Boston, MA, United States of America.

  • 키워드
    ROI CT; deep learning; end-to-end learning; low-dose CT.
  • 연구소개
    저선량 CT 에선 노이즈가 심한 영상이 생성되지만, 내부 단층 촬영 CT 에선 컵형 잡음이 심한 영상이 생성됩니다. 각각의 CT 시스템은 서로 다른 영상 열화가 발생하기 때문에 단일 인공지능 모델로 두개의 시스템이 결합된 초저선량 CT 의 영상을 복원하기엔 어려움이 있습니다. 본 논문에선 초저선량 CT 에서 획득된 영상을 복원하기 위해 image-domain 에서 결합된 저선량 CT 의 노이즈 잡음과 내부 단층 촬영 CT 의 컵형 잡음이 projection-domain 에서 분리될 수 있음을 보였고, projection-domain 에서 분리된 영상 열화는 단일 인공지능 모델에 의해 효율적으로 개선될 수 있음을 수학적 증명과 실험적 결과를 통해 확인하였습니다. 본 논문을 통해 다양한 CT 시스템에서 발생할 수 있는 영상 열화의 이유를 확인하고 이를 개선하기 위한 적합한 인공지능 모델 연구에 도움을 줄 수 있는 의미있는 논문이라고 생각합니다.
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