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ID 117595
著者
Fujiwara, Daiyu Tokushima University
Shimomura, Taisei Tokushima University
Zhao, Wei Beihang University
Li, Kai-Wen CAS Ion Medical Technology
Geng, Li-Sheng Beihang University|Zhengzhou University
キーワード
material decomposition
deep learning
computed tomography
ICRP110 human phantom
資料タイプ
学術雑誌論文
抄録
Objective: Material decomposition (MD) evaluates the elemental composition of human tissues and organs via computed tomography (CT) and is indispensable in correlating anatomical images with functional ones. A major issue in MD is inaccurate elemental information about the real human body. To overcome this problem, we developed a virtual CT system model, by which various reconstructed images can be generated based on ICRP110 human phantoms with information about six major elements (H, C, N, O, P, and Ca).
Approach: We generated CT datasets labelled with accurate elemental information using the proposed generative CT model and trained a deep learning (DL)-based model to estimate the material distribution with the ICRP110 based human phantom as well as the digital Shepp–Logan phantom. The accuracy in quad-, dual-, and single-energy CT cases was investigated. The influence of beam-hardening artefacts, noise, and spectrum variations were analysed with testing datasets including elemental density and anatomical shape variations.
Main results: The results indicated that this DL approach can realise precise MD, even with single-energy CT images. Moreover, noise, beam-hardening artefacts, and spectrum variations were shown to have minimal impact on the MD.
Significance: Present results suggest that the difficulty to prepare a large CT database can be solved by introducing the virtual CT system and the proposed technique can be applied to clinical radiodiagnosis and radiotherapy.
掲載誌名
Physics in Medicine & Biology
ISSN
00319155
cat書誌ID
AA12472523
AA00774048
出版者
IOP Publishing
67
15
開始ページ
155008
発行日
2022-07-19
権利情報
This is the Accepted Manuscript version of an article accepted for publication in Physics in Medicine & Biology. IOP Publishing Ltd is not responsible for any errors or omissions in this version of the manuscript or any version derived from it. The Version of Record is available online at 10.1088/1361-6560/ac7bcd.
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出版社版DOI
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フルテキストファイル
言語
eng
著者版フラグ
著者版
部局
医学系