コイケ ユウヘイ   KOIKE YUHEI
  小池 優平
   所属   関西医科大学  放射線科学講座
   職種   助教
論文種別 原著(症例報告除く)
言語種別 英語
査読の有無 査読あり
表題 Improvement of image quality for pancreatic cancer using deep learning-generated virtual monochromatic images: Comparison with single-energy computed tomography
掲載誌名 正式名:Physica medica : PM : an international journal devoted to the applications of physics to medicine and biology : official journal of the Italian Association of Biomedical Physics (AIFB)
略  称:Phys Med
ISSNコード:11201797/1724191X
掲載区分国外
巻・号・頁 85,pp.8-14
著者・共著者 Ohira S, Koike Y, Akino Y, Kanayama N, Wada K, Ueda Y, Masaoka A, Washio H, Miyazaki M, Koizumi M, Ogawa K, Teshima T.
発行年月 2021/05
概要 PURPOSE: To construct a deep convolutional neural network that generates virtual
monochromatic images (VMIs) from single-energy computed tomography (SECT) images
for improved pancreatic cancer imaging quality.
MATERIALS AND METHODS: Fifty patients with pancreatic cancer underwent a
dual-energy CT simulation and VMIs at 77 and 60 keV were reconstructed. A 2D
deep densely connected convolutional neural network was modeled to learn the
relationship between the VMIs at 77 (input) and 60 keV (ground-truth).
Subsequently, VMIs were generated for 20 patients from SECT images using the
trained deep learning model.
RESULTS: The contrast-to-noise ratio was significantly improved (p < 0.001) in
the generated VMIs (4.1 ± 1.8) compared to the SECT images (2.8 ± 1.1). The mean
overall image quality (4.1 ± 0.6) and tumor enhancement (3.6 ± 0.6) in the
generated VMIs assessed on a five-point scale were significantly higher
(p < 0.001) than that in the SECT images (3.2 ± 0.4 and 2.8 ± 0.4 for overall
image quality and tumor enhancement, respectively).
CONCLUSIONS: The quality of the SECT image was significantly improved both
objectively and subjectively using the proposed deep learning model for
pancreatic tumors in radiotherapy.
DOI 10.1016/j.ejmp.2021.03.035
PMID 33940528