Applied Sciences (Jun 2020)

Surface Muscle Segmentation Using 3D U-Net Based on Selective Voxel Patch Generation in Whole-Body CT Images

  • Naoki Kamiya,
  • Ami Oshima,
  • Xiangrong Zhou,
  • Hiroki Kato,
  • Takeshi Hara,
  • Toshiharu Miyoshi,
  • Masayuki Matsuo,
  • Hiroshi Fujita

DOI
https://doi.org/10.3390/app10134477
Journal volume & issue
Vol. 10, no. 13
p. 4477

Abstract

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This study aimed to develop and validate an automated segmentation method for surface muscles using a three-dimensional (3D) U-Net based on selective voxel patches from whole-body computed tomography (CT) images. Our method defined a voxel patch (VP) as the input images, which consisted of 56 slices selected at equal intervals from the whole slices. In training, one VP was used for each case. In the test, multiple VPs were created according to the number of slices in the test case. Segmentation was then performed for each VP and the results of each VP merged. The proposed method achieved a segmentation accuracy mean dice coefficient of 0.900 for 8 cases. Although challenges remain in muscles adjacent to visceral organs and in small muscle areas, VP is useful for surface muscle segmentation using whole-body CT images with limited annotation data. The limitation of our study is that it is limited to cases of muscular disease with atrophy. Future studies should address whether the proposed method is effective for other modalities or using data with different imaging ranges.

Keywords