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Material decomposition from photon-counting CT using a convolutional neural network and energy-integrating CT training labels.

Publication ,  Journal Article
Nadkarni, R; Allphin, A; Clark, DP; Badea, CT
Published in: Phys Med Biol
July 18, 2022

Objective.Photon-counting CT (PCCT) has better dose efficiency and spectral resolution than energy-integrating CT, which is advantageous for material decomposition. Unfortunately, the accuracy of PCCT-based material decomposition is limited due to spectral distortions in the photon-counting detector (PCD).Approach.In this work, we demonstrate a deep learning (DL) approach that compensates for spectral distortions in the PCD and improves accuracy in material decomposition by using decomposition maps provided by high-dose multi-energy-integrating detector (EID) data as training labels. We use a 3D U-net architecture and compare networks with PCD filtered back projection (FBP) reconstruction (FBP2Decomp), PCD iterative reconstruction (Iter2Decomp), and PCD decomposition (Decomp2Decomp) as the input.Main results.We found that our Iter2Decomp approach performs best, but DL outperforms matrix inversion decomposition regardless of the input. Compared to PCD matrix inversion decomposition, Iter2Decomp gives 27.50% lower root mean squared error (RMSE) in the iodine (I) map and 59.87% lower RMSE in the photoelectric effect (PE) map. In addition, it increases the structural similarity (SSIM) by 1.92%, 6.05%, and 9.33% in the I, Compton scattering (CS), and PE maps, respectively. When taking measurements from iodine and calcium vials, Iter2Decomp provides excellent agreement with multi-EID decomposition. One limitation is some blurring caused by our DL approach, with a decrease from 1.98 line pairs/mm at 50% modulation transfer function (MTF) with PCD matrix inversion decomposition to 1.75 line pairs/mm at 50% MTF when using Iter2Decomp.Significance.Overall, this work demonstrates that our DL approach with high-dose multi-EID derived decomposition labels is effective at generating more accurate material maps from PCD data. More accurate preclinical spectral PCCT imaging such as this could serve for developing nanoparticles that show promise in the field of theranostics (therapy and diagnostics).

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Published In

Phys Med Biol

DOI

EISSN

1361-6560

Publication Date

July 18, 2022

Volume

67

Issue

15

Location

England

Related Subject Headings

  • Tomography, X-Ray Computed
  • Photons
  • Phantoms, Imaging
  • Nuclear Medicine & Medical Imaging
  • Neural Networks, Computer
  • Iodine
  • 5105 Medical and biological physics
  • 1103 Clinical Sciences
  • 0903 Biomedical Engineering
  • 0299 Other Physical Sciences
 

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Nadkarni, R., Allphin, A., Clark, D. P., & Badea, C. T. (2022). Material decomposition from photon-counting CT using a convolutional neural network and energy-integrating CT training labels. Phys Med Biol, 67(15). https://doi.org/10.1088/1361-6560/ac7d34
Nadkarni, Rohan, Alex Allphin, Darin P. Clark, and Cristian T. Badea. “Material decomposition from photon-counting CT using a convolutional neural network and energy-integrating CT training labels.Phys Med Biol 67, no. 15 (July 18, 2022). https://doi.org/10.1088/1361-6560/ac7d34.
Nadkarni, Rohan, et al. “Material decomposition from photon-counting CT using a convolutional neural network and energy-integrating CT training labels.Phys Med Biol, vol. 67, no. 15, July 2022. Pubmed, doi:10.1088/1361-6560/ac7d34.
Journal cover image

Published In

Phys Med Biol

DOI

EISSN

1361-6560

Publication Date

July 18, 2022

Volume

67

Issue

15

Location

England

Related Subject Headings

  • Tomography, X-Ray Computed
  • Photons
  • Phantoms, Imaging
  • Nuclear Medicine & Medical Imaging
  • Neural Networks, Computer
  • Iodine
  • 5105 Medical and biological physics
  • 1103 Clinical Sciences
  • 0903 Biomedical Engineering
  • 0299 Other Physical Sciences