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  • [Phys Med Biol.] Computed tomography super-resolution using deep convolutional neural network.

    [Phys Med Biol.] Computed tomography super-resolution using deep convolutional neural network.

    서울의대 / 박준영, 이재성*

  • 출처
    Phys Med Biol.
  • 등재일
    2018 Jul 16
  • 저널이슈번호
    63(14):145011. doi: 10.1088/1361-6560/aacdd4.
  • 내용

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    Abstract
    The objective of this study is to develop a convolutional neural network (CNN) for computed tomography (CT) image super-resolution. The network learns an end-to-end mapping between low (thick-slice thickness) and high (thin-slice thickness) resolution images using the modified U-Net. To verify the proposed method, we train and test the CNN using axially averaged data of existing thin-slice CT images as input and their middle slice as the label. Fifty-two CT studies are used as the CNN training set, and 13 CT studies are used as the test set. We perform five-fold cross-validation to confirm the performance consistency. Because all input and output images are used in two-dimensional slice format, the total number of slices for training the CNN is 7670. We assess the performance of the proposed method with respect to the resolution and contrast, as well as the noise properties. The CNN generates output images that are virtually equivalent to the ground truth. The most remarkable image-recovery improvement by the CNN is deblurring of boundaries of bone structures and air cavities. The CNN output yields an approximately 10% higher peak signal-to-noise ratio and lower normalized root mean square error than the input (thicker slices). The CNN output noise level is lower than the ground truth and equivalent to the iterative image reconstruction result. The proposed deep learning method is useful for both super-resolution and de-noising.

     


    Author information

    Park J1, Hwang D, Kim KY, Kang SK, Kim YK, Lee JS.
    1
    Department of Biomedical Sciences, College of Medicine, Seoul National University, Seoul 03080, People's Republic of Korea. Department of Nuclear Medicine, College of Medicine, Seoul National University, Seoul 03080, People's Republic of Korea.

  • 연구소개
    최근 의료영상분야에서 많이 활용되는 딥러닝 기법을 활용한 CT 영상의 resolution을 향상 연구입니다. Low resolution (Think slice thickness)의 영상과 high resolution (Thin slice thickness)의 영상을 end-to-end mapping으로 학습시켜서 low resolution의 noise특성을 유지시키면서 (Noise reduction) resolution을 향상을 제안합니다. 다양한 의료영상 분야의 task에서 많이 활용되어온 U-Net을 효과적으로 수정 및 적용이 필요한 연구자들에게 도움이 될 수 있는 연구라고 생각합니다.
  • 편집위원

    최근 AI를 여러 분야에 응용하고 있는데 CNN을 이용하여 CT영상의 해상도를 높이려는 연구도 그 중 한 분야로 마찬가지로 많은 연구가 이루어지고 있다고 생각된다. 국내 연구자가 좋은 결과를 낸 것을 기쁘게 생각하고 앞으로도 더욱 발전되기를 희망함

    2018-08-24 16:03:30

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