Deep learning based spectral extrapolation for dual-source, dual-energy x-ray computed tomography

被引:10
|
作者
Clark, Darin P. [1 ]
Schwartz, Fides R. [2 ]
Marin, Daniele [2 ]
Ramirez-Giraldo, Juan C. [3 ]
Badea, Cristian T. [1 ]
机构
[1] Duke Univ, Dept Radiol, Ctr Vivo Microscopy, Durham, NC 27710 USA
[2] Duke Univ, Dept Radiol, Durham, NC 27710 USA
[3] Siemens Healthineers, CT R&D Collaborat, Cary, NC USA
关键词
data completion; deep learning; dual-energy CT; dual-source CT; CT; SCAN;
D O I
10.1002/mp.14324
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose Data completion is commonly employed in dual-source, dual-energy computed tomography (CT) when physical or hardware constraints limit the field of view (FoV) covered by one of two imaging chains. Practically, dual-energy data completion is accomplished by estimating missing projection data based on the imaging chain with the full FoV and then by appropriately truncating the analytical reconstruction of the data with the smaller FoV. While this approach works well in many clinical applications, there are applications which would benefit from spectral contrast estimates over the larger FoV (spectral extrapolation)-e.g. model-based iterative reconstruction, contrast-enhanced abdominal imaging of large patients, interior tomography, and combined temporal and spectral imaging. Methods To document the fidelity of spectral extrapolation and to prototype a deep learning algorithm to perform it, we assembled a data set of 50 dual-source, dual-energy abdominal x-ray CT scans (acquired at Duke University Medical Center with 5 SiemensFlashscanners; chain A: 50 cm FoV, 100 kV; chain B: 33 cm FoV, 140 kV + Sn; helical pitch: 0.8). Data sets were reconstructed usingReconCT(v14.1, Siemens Healthineers): 768 x 768 pixels per slice, 50 cm FoV, 0.75 mm slice thickness, "Dual-Energy - WFBP" reconstruction mode with dual-source data completion. A hybrid architecture consisting of a learned piecewise linear transfer function (PLTF) and a convolutional neural network (CNN) was trained using 40 scans (five scans reserved for validation, five for testing). The PLTF learned to map chain A spectral contrast to chain B spectral contrast voxel-wise, performing an image domain analog of dual-source data completion with approximate spectral reweighting. The CNN with its U-net structure then learned to improve the accuracy of chain B contrast estimates by copying chain A structural information, by encoding prior chain A, chain B contrast relationships, and by generalizing feature-contrast associations. Training was supervised, using data from within the 33-cm chain B FoV to optimize and assess network performance. Results Extrapolation performance on the testing data confirmed our network's robustness and ability to generalize to unseen data from different patients, yielding maximum extrapolation errors of 26 HU following the PLTF and 7.5 HU following the CNN (averaged per target organ). Degradation of network performance when applied to a geometrically simple phantom confirmed our method's reliance on feature-contrast relationships in correctly inferring spectral contrast. Integrating our image domain spectral extrapolation network into a standard dual-source, dual-energy processing pipeline for SiemensFlashscanner data yielded spectral CT data with adequate fidelity for the generation of both 50 keV monochromatic images and material decomposition images over a 30-cm FoV for chain B when only 20 cm of chain B data were available for spectral extrapolation. Conclusions Even with a moderate amount of training data, deep learning methods are capable of robustly inferring spectral contrast from feature-contrast relationships in spectral CT data, leading to spectral extrapolation performance well beyond what may be expected at face value. Future work reconciling spectral extrapolation results with original projection data is expected to further improve results in outlying and pathological cases.
引用
收藏
页码:4150 / 4163
页数:14
相关论文
共 50 条
  • [31] Spectral and dual-energy X-ray imaging for medical applications
    Fredenberg, Erik
    NUCLEAR INSTRUMENTS & METHODS IN PHYSICS RESEARCH SECTION A-ACCELERATORS SPECTROMETERS DETECTORS AND ASSOCIATED EQUIPMENT, 2018, 878 : 74 - 87
  • [32] Low-cost dual-energy CBCT by spectral filtration of a dual focal spot X-ray source
    Li, Boyuan
    Hu, Yuanming
    Xu, Shuang
    Li, Bokuan
    Inscoe, Christina R.
    Tyndall, Donald A.
    Lee, Yueh Z.
    Lu, Jianping
    Zhou, Otto
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [33] Novel x-ray source for dual-energy subtraction angiography
    Tuffanelli, A
    Taibi, A
    Baldazzi, G
    Bollini, D
    Gombia, M
    Ramello, L
    Gambaccini, M
    MEDICAL IMAGING 2002: PHYSICS OF MEDICAL IMAGING, 2002, 4682 : 311 - 319
  • [34] Raw data consistent deep learning-based field of view extension for dual-source dual-energy CT
    Maier, Joscha
    Erath, Julien
    Sawall, Stefan
    Fournie, Eric
    Stierstorfer, Karl
    Kachelriess, Marc
    MEDICAL PHYSICS, 2024, 51 (03) : 1822 - 1831
  • [35] A generalized simultaneous algebraic reconstruction technique (GSART) for dual-energy X-ray computed tomography
    Lee, Donghyeon
    Yun, Sungho
    Soh, Jeongtae
    Lim, Sunho
    Kim, Hyoyi
    Cho, Seungryong
    JOURNAL OF X-RAY SCIENCE AND TECHNOLOGY, 2022, 30 (03) : 549 - 566
  • [36] Dual-energy X-ray absorptiometry
    Braillon, Pierre
    Peretti, Noel
    NUTRITION CLINIQUE ET METABOLISME, 2011, 25 (02): : 91 - 96
  • [37] Dual-energy X-ray computed tomography for void detection in fiber-reinforced composites
    Suzuki, Yasuhito
    Cousins, Dylan S.
    Dorgan, John R.
    Stebner, Aaron P.
    Kappes, Branden B.
    JOURNAL OF COMPOSITE MATERIALS, 2019, 53 (17) : 2349 - 2359
  • [38] Dual-energy X-ray Absorptiometry
    Jain, Rajesh K.
    Vokes, Tamara
    JOURNAL OF CLINICAL DENSITOMETRY, 2017, 20 (03) : 291 - 303
  • [39] Embossed x-ray computed tomography utilizing pixel-shifted dual-energy subtraction
    Ito, Kazuki
    Sato, Eiichi
    Oda, Yasuyuki
    Moriyama, Hodaka
    Hagiwara, Osahiko
    Enomoto, Toshiyuki
    Yoshida, Sohei
    Watanabe, Manabu
    REVIEW OF SCIENTIFIC INSTRUMENTS, 2024, 95 (07):
  • [40] Dual-energy X-ray CT by Compton scattering hard X-ray source
    Kaneyasu, T
    Uesaka, N
    Dobashi, K
    Torikoshi, M
    2005 IEEE PARTICLE ACCELERATOR CONFERENCE (PAC), VOLS 1-4, 2005, : 1680 - 1682