Validation of deep learning-based CT image reconstruction for treatment planning.

Journal: Scientific reports
Published Date:

Abstract

Deep learning-based CT image reconstruction (DLR) is a state-of-the-art method for obtaining CT images. This study aimed to evaluate the usefulness of DLR in radiotherapy. Data were acquired using a large-bore CT system and an electron density phantom for radiotherapy. We compared the CT values, image noise, and CT value-to-electron density conversion table of DLR and hybrid iterative reconstruction (H-IR) for various doses. Further, we evaluated three DLR reconstruction strength patterns (Mild, Standard, and Strong). The variations of CT values of DLR and H-IR were large at low doses, and the difference in average CT values was insignificant with less than 10 HU at doses of 100 mAs and above. DLR showed less change in CT values and smaller image noise relative to H-IR. The noise-reduction effect was particularly large in the low-dose region. The difference in image noise between DLR Mild and Standard/Strong was large, suggesting the usefulness of reconstruction intensities higher than Mild. DLR showed stable CT values and low image noise for various materials, even at low doses; particularly for Standard or Strong, the reduction in image noise was significant. These findings indicate the usefulness of DLR in treatment planning using large-bore CT systems.

Authors

  • Keisuke Yasui
    Division of Medical Physics, School of Medical Sciences, Fujita Health University, 1-98 Dengakugakubo, Kutsukake-Cho, Toyoake, Aichi, 470-1192, Japan. k-yasui@fujita-hu.ac.jp.
  • Yasunori Saito
    Department of Radiology, Fujita Health University Hospital, Toyoake, Aichi, Japan.
  • Azumi Ito
    Faculty of Radiological Technology, School of Medical Sciences, Fujita Health University, Toyoake, Aichi, Japan.
  • Momoka Douwaki
    Department of Radiology, Fujita Health University Hospital, Toyoake, Aichi, Japan.
  • Shuta Ogawa
    Department of Radiology, Fujita Health University Hospital, Toyoake, Aichi, Japan.
  • Yuri Kasugai
    Faculty of Radiological Technology, School of Medical Sciences, Fujita Health University, Toyoake, Aichi, Japan.
  • Hiromu Ooe
    Faculty of Radiological Technology, School of Medical Sciences, Fujita Health University, Toyoake, Aichi, Japan.
  • Yuya Nagake
    Faculty of Radiological Technology, School of Medical Sciences, Fujita Health University, Toyoake, Aichi, Japan.
  • Naoki Hayashi
    Simulation & Mining Division, NTT DATA Mathematical Systems Inc., 1F Shinanomachi Rengakan, 35, Shinanomachi, Shinjuku-ku, Tokyo, 160-0016, Japan; Department of Mathematical and Computing Science, Tokyo Institute of Technology, Mail-Box W8-42, 2-12-1, Oookayama, Meguro-ku, Tokyo, 152-8552, Japan. Electronic address: hayashi@msi.co.jp.