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  • 2021년 05월호
    [Clin Nucl Med.] PET/CT for Brain Amyloid: A Feasibility Study for Scan Time Reduction by Deep Learning

    서강대, 연세의대 / 이상원, 최용*, 윤미진*

  • 출처
    Clin Nucl Med.
  • 등재일
    2021 Mar 1
  • 저널이슈번호
    46(3):e133-e140. doi: 10.1097/RLU.0000000000003471.
  • 내용

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    Abstract
    Purpose: This study was to develop a convolutional neural network (CNN) model with a residual learning framework to predict the full-time 18F-florbetaben (18F-FBB) PET/CT images from corresponding short-time scans.

    Methods: In this retrospective study, we enrolled 22 cognitively normal subjects, 20 patients with mild cognitive impairment, and 42 patients with Alzheimer disease. Twenty minutes of list-mode PET/CT data were acquired and reconstructed as the ground-truth images. The short-time scans were made in either 1, 2, 3, 4, or 5 minutes. The CNN with a residual learning framework was implemented to predict the ground-truth images of 18F-FBB PET/CT using short-time scans with either a single-slice or a 3-slice input layer. Model performance was evaluated by quantitative and qualitative analyses. Additionally, we quantified the amyloid load in the ground-truth and predicted images using the SUV ratio.

    Results: On quantitative analyses, with increasing scan time, the normalized root-mean-squared error and the SUV ratio differences between predicted and ground-truth images gradually decreased, and the peak signal-to-noise ratio increased. On qualitative analysis, the predicted images from the 3-slice CNN model showed better image quality than those from the single-slice model. The 3-slice CNN model with a short-time scan of at least 2 minutes achieved comparable, quantitative prediction of full-time 18F-FBB PET/CT images, with adequate to excellent image quality.

    Conclusions: The 3-slice CNN model with a residual learning framework is promising for the prediction of full-time 18F-FBB PET/CT images from short-time scans.

     

     

    Affiliations

    Sangwon Lee  1 , Jin Ho Jung  2 , Dongwoo Kim  1 , Hyun Keong Lim  2 , Mi-Ae Park  3 , Garam Kim  2 , Minjae So  4 , Sun Kook Yoo  5 , Byoung Seok Ye  6 , Yong Choi  2 , Mijin Yun  1
    1 From the Department of Nuclear Medicine, Yonsei University College of Medicine.
    2 Department of Electronic Engineering, Sogang University, Seoul, Korea.
    3 Department of Radiology, Brigham and Women's Hospital & Harvard Medical School, Boston, MA.
    4 Yonsei University College of Medicine.
    5 Departments of Medical Engineering.
    6 Neurology, Yonsei University College of Medicine, Seoul, Korea.

  • 편집위원

    Amyloid PET 영상에 인공지능 기술을 도입하여 영상획득 시간을 단축하고도 영상의 질을 유지하는 기법에 대한 연구임. 인공지능을 이용한 핵의학 영상 개선에 대한 연구내용으로 핵의학 영상의 인공적용 적용을 연구하는 연구자 및 신경 핵의학 임상가에게 관심을 끌 연구로 생각됨.

    덧글달기2021-05-06 15:24:22

  • 편집위원

    Amyloid PET 영상에 인공지능 기술을 도입하여 영상획득 시간을 단축하고도 영상의 질을 유지하는 기법에 대한 연구임. 인공지능을 이용한 핵의학 영상 개선에 대한 연구내용으로 핵의학 영상의 인공적용 적용을 연구하는 연구자 및 신경 핵의학 임상가에게 관심을 끌 연구로 생각됨.

    덧글달기2021-05-06 15:25:34

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