Scientific Reports (Jul 2022)

Three-dimensional conditional generative adversarial network-based virtual thin-slice technique for the morphological evaluation of the spine

  • Atsushi Nakamoto,
  • Masatoshi Hori,
  • Hiromitsu Onishi,
  • Takashi Ota,
  • Hideyuki Fukui,
  • Kazuya Ogawa,
  • Jun Masumoto,
  • Akira Kudo,
  • Yoshiro Kitamura,
  • Shoji Kido,
  • Noriyuki Tomiyama

DOI
https://doi.org/10.1038/s41598-022-16637-x
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 8

Abstract

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Abstract Virtual thin-slice (VTS) technique is a generative adversarial network-based algorithm that can generate virtual 1-mm-thick CT images from images of 3–10-mm thickness. We evaluated the performance of VTS technique for assessment of the spine. VTS was applied to 4-mm-thick CT images of 73 patients, and the visibility of intervertebral spaces was evaluated on the 4-mm-thick and VTS images. The heights of vertebrae measured on sagittal images reconstructed from the 4-mm-thick images and VTS images were compared with those measured on images reconstructed from 1-mm-thick images. Diagnostic performance for the detection of compression fractures was also compared. The intervertebral spaces were significantly more visible on the VTS images than on the 4-mm-thick images (P < 0.001). The absolute value of the measured difference in mean vertebral height between the VTS and 1-mm-thick images was smaller than that between the 4-mm-thick and 1-mm-thick images (P < 0.01–0.54). The diagnostic performance of the VTS images for detecting compression fracture was significantly lower than that of the 4-mm-thick images for one reader (P = 0.02). VTS technique enabled the identification of each vertebral body, and enabled accurate measurement of vertebral height. However, this technique is not suitable for diagnosing compression fractures.