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Harmonizing CT Images via Physics-based Deep Neural Networks.

Publication ,  Journal Article
Zarei, M; Sotoudeh-Paima, S; McCabe, C; Abadi, E; Samei, E
Published in: Proc SPIE Int Soc Opt Eng
February 2023

The rendition of medical images influences the accuracy and precision of quantifications. Image variations or biases make measuring imaging biomarkers challenging. The objective of this paper is to reduce the variability of computed tomography (CT) quantifications for radiomics and biomarkers using physics-based deep neural networks (DNNs). With the proposed framework, it is possible to harmonize the different renditions of a single CT scan (with variations in reconstruction kernel and dose) into an image that is in close agreement with the ground truth. To this end, a generative adversarial network (GAN) model was developed where the generator is informed by the scanner's modulation transfer function (MTF). To train the network, a virtual imaging trial (VIT) platform was used to acquire CT images, from a set of forty computational models (XCAT) serving as the patient model. Phantoms with varying levels of pulmonary disease, such as lung nodules and emphysema, were used. We scanned the patient models with a validated CT simulator (DukeSim) modeling a commercial CT scanner at 20 and 100 mAs dose levels and then reconstructed the images by twelve kernels representing smooth to sharp kernels. An evaluation of the harmonized virtual images was conducted in four different ways: 1) visual quality of the images, 2) bias and variation in density-based biomarkers, 3) bias and variation in morphological-based biomarkers, and 4) Noise Power Spectrum (NPS) and lung histogram. The trained model harmonized the test set images with a structural similarity index of 0.95±0.1, a normalized mean squared error of 10.2±1.5%, and a peak signal-to-noise ratio of 31.8±1.5 dB. Moreover, emphysema-based imaging biomarkers of LAA-950 (-1.5±1.8), Perc15 (13.65±9.3), and Lung mass (0.1±0.3) had more precise quantifications.

Duke Scholars

Published In

Proc SPIE Int Soc Opt Eng

DOI

ISSN

0277-786X

Publication Date

February 2023

Volume

12463

Location

United States

Related Subject Headings

  • 5102 Atomic, molecular and optical physics
  • 4009 Electronics, sensors and digital hardware
  • 4006 Communications engineering
 

Citation

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Zarei, M., Sotoudeh-Paima, S., McCabe, C., Abadi, E., & Samei, E. (2023). Harmonizing CT Images via Physics-based Deep Neural Networks. Proc SPIE Int Soc Opt Eng, 12463. https://doi.org/10.1117/12.2654215
Zarei, Mojtaba, Saman Sotoudeh-Paima, Cindy McCabe, Ehsan Abadi, and Ehsan Samei. “Harmonizing CT Images via Physics-based Deep Neural Networks.Proc SPIE Int Soc Opt Eng 12463 (February 2023). https://doi.org/10.1117/12.2654215.
Zarei M, Sotoudeh-Paima S, McCabe C, Abadi E, Samei E. Harmonizing CT Images via Physics-based Deep Neural Networks. Proc SPIE Int Soc Opt Eng. 2023 Feb;12463.
Zarei, Mojtaba, et al. “Harmonizing CT Images via Physics-based Deep Neural Networks.Proc SPIE Int Soc Opt Eng, vol. 12463, Feb. 2023. Pubmed, doi:10.1117/12.2654215.
Zarei M, Sotoudeh-Paima S, McCabe C, Abadi E, Samei E. Harmonizing CT Images via Physics-based Deep Neural Networks. Proc SPIE Int Soc Opt Eng. 2023 Feb;12463.

Published In

Proc SPIE Int Soc Opt Eng

DOI

ISSN

0277-786X

Publication Date

February 2023

Volume

12463

Location

United States

Related Subject Headings

  • 5102 Atomic, molecular and optical physics
  • 4009 Electronics, sensors and digital hardware
  • 4006 Communications engineering