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  • [Phys Med Biol .] Strategy to implement a convolutional neural network based ideal model observer via transfer learning for multi-slice simulated breast CT images

    [Phys Med Biol .] Strategy to implement a convolutional neural network based ideal model observer via transfer learning for multi-slice simulated breast CT images
    다중 슬라이스 유방 CT 이미지 시뮬레이션을 위한 전이 학습을 통한 컨볼루션 신경망 기반 이상적인 모델 관찰자 구현 전략

    연세대 / 김기훈, 백종덕*

  • 출처
    Phys Med Biol .
  • 등재일
    2023 May 30
  • 저널이슈번호
    68(11). doi: 10.1088/1361-6560/acd222.
  • 내용

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    Abstract
    Objective.In this work, we propose a convolutional neural network (CNN)-based multi-slice ideal model observer using transfer learning (TL-CNN) to reduce the required number of training samples.Approach.To train model observers, we generate simulated breast CT image volumes that are reconstructed using the FeldkampDavisKress algorithm with a ramp and Hanning-weighted ramp filter. The observer performance is evaluated on the background-known-statistically (BKS)/signal-known-exactly task with a spherical signal, and the BKS/signal-known-statistically task with random signal generated by the stochastic grown method. We compare the detectability of the CNN-based model observer with that of conventional linear model observers for multi-slice images (i.e. a multi-slice channelized Hotelling observer (CHO) and volumetric CHO). We also analyze the detectability of the TL-CNN for different numbers of training samples to examine its performance robustness to a limited number of training samples. To further analyze the effectiveness of transfer learning, we calculate the correlation coefficients of filter weights in the CNN-based multi-slice model observer.Main results.When using transfer learning for the CNN-based multi-slice ideal model observer, the TL-CNN provides the same performance with a 91.7% reduction in the number of training samples compared to that when transfer learning is not used. Moreover, compared to the conventional linear model observer, the proposed CNN-based multi-slice model observers achieve 45% higher detectability in the signal-known-statistically detection tasks and 13% higher detectability in the SKE detection tasks. In correlation coefficient analysis, it is observed that the filters in most of the layers are highly correlated, demonstrating the effectiveness of the transfer learning for multi-slice model observer training.Significance.Deep learning-based model observers require large numbers of training samples, and the required number of training samples increases as the dimensions of the image (i.e. the number of slices) increase. With applying transfer learning, the required number of training samples is significantly reduced without performance drop.

     

     

    Affiliations

    Gihun Kim 1, Minah Han 2 3, Jongduk Baek 2 3
    1School of Integrated Technology, Yonsei University, Republic of Korea.
    2Department of Artificial Intelligence, Yonsei University, Republic of Korea.
    3Baruenex Imaging, Republic of Korea.

  • 키워드
    CNN; breast CT; deep-learning; model observer; transfer learning.
  • 연구소개
    해당 연구는 기존 연구로 진행된 CNN 으로 model observer 를 구현하는 연구의 후속 연구입니다. 최근 영상 기기가 발전함에 따라서 단층촬영이 아닌, 복층 촬영이 대세가 되어가고 있는데, 그러한 multi-slice CT image 들을 위한 model observer 를 CNN 으로 구현할 경우 좀더 효과적인 방법을 제안한 논문입니다.
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