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Erschienen in: European Radiology 11/2021

23.04.2021 | Computed Tomography

Sinogram-based deep learning image reconstruction technique in abdominal CT: image quality considerations

verfasst von: Anushri Parakh, Jinjin Cao, Theodore T. Pierce, Michael A. Blake, Cristy A. Savage, Avinash R. Kambadakone

Erschienen in: European Radiology | Ausgabe 11/2021

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Abstract

Objectives

To investigate the image quality and perception of a sinogram-based deep learning image reconstruction (DLIR) algorithm for single-energy abdominal CT compared to standard-of-care strength of ASIR-V.

Methods

In this retrospective study, 50 patients (62% F; 56.74 ± 17.05 years) underwent portal venous phase. Four reconstructions (ASIR-V at 40%, and DLIR at three strengths: low (DLIR-L), medium (DLIR-M), and high (DLIR-H)) were generated. Qualitative and quantitative image quality analysis was performed on the 200 image datasets. Qualitative scores were obtained for image noise, contrast, small structure visibility, sharpness, and artifact by three blinded radiologists on a 5-point scale (1, excellent; 5, very poor). Radiologists also indicated image preference on a 3-point scale (1, most preferred; 3, least preferred). Quantitative assessment was performed by measuring image noise and contrast-to-noise ratio (CNR).

Results

DLIR had better image quality scores compared to ASIR-V. Scores on DLIR-H for noise (1.40 ± 0.53), contrast (1.41 ± 0.55), small structure visibility (1.51 ± 0.61), and sharpness (1.60 ± 0.54) were the best (p < 0.05) followed by DLIR-M (1.85 ± 0.52, 1.66 ± 0.57, 1.69 ± 0.59, 1.68 ± 0.46), DLIR-L (2.29 ± 0.58, 1.96 ± 0.61, 1.90 ± 0.65, 1.86 ± 0.46), and ASIR-V (2.86 ± 0.67, 2.55 ± 0.58, 2.34 ± 0.66, 2.01 ± 0.36). Ratings for artifacts were similar for all reconstructions (p > 0.05). DLIRs did not influence subjective textural perceptions and were preferred over ASIR-V from the beginning. All DLIRs had a higher CNR (26.38–102.30%) and lower noise (20.64–48.77%) than ASIR-V. DLIR-H had the best objective scores.

Conclusion

Sinogram-based deep learning image reconstructions were preferred over iterative reconstruction subjectively and objectively due to improved image quality and lower noise, even in large patients. Use in clinical routine may allow for radiation dose reduction.

Key Points

Deep learning image reconstructions (DLIRs) have a higher contrast-to-noise ratio compared to medium-strength hybrid iterative reconstruction techniques.
DLIR may be advantageous in patients with large body habitus due to a lower image noise.
DLIR can enable further optimization of radiation doses used in abdominal CT.
Literatur
2.
Zurück zum Zitat Hong JY, Han K, Jung JH, Kim JS (2019) Association of exposure to diagnostic low-dose ionizing radiation with risk of cancer among youths in South Korea. JAMA Netw Open 2(9):e1910584CrossRef Hong JY, Han K, Jung JH, Kim JS (2019) Association of exposure to diagnostic low-dose ionizing radiation with risk of cancer among youths in South Korea. JAMA Netw Open 2(9):e1910584CrossRef
3.
Zurück zum Zitat Sodickson A, Baeyens PF, Andriole KP et al (2009) Recurrent CT, cumulative radiation exposure, and associated radiation-induced cancer risks from CT of adults. Radiology 251(1):175–184CrossRef Sodickson A, Baeyens PF, Andriole KP et al (2009) Recurrent CT, cumulative radiation exposure, and associated radiation-induced cancer risks from CT of adults. Radiology 251(1):175–184CrossRef
4.
Zurück zum Zitat Lurz M, Lell MM, Wuest W et al (2015) Automated tube voltage selection in thoracoabdominal computed tomography at high pitch using a third-generation dual-source scanner: Image quality and radiation dose performance. Invest Radiol 50(5):352–360CrossRef Lurz M, Lell MM, Wuest W et al (2015) Automated tube voltage selection in thoracoabdominal computed tomography at high pitch using a third-generation dual-source scanner: Image quality and radiation dose performance. Invest Radiol 50(5):352–360CrossRef
5.
Zurück zum Zitat Mozaffary A, Trabzonlu TA, Kim D, Yaghmai V (2019) Comparison of tin filter-based spectral shaping CT and low-dose protocol for detection of urinary calculi. AJR Am J Roentgenol 212(4):808–814CrossRef Mozaffary A, Trabzonlu TA, Kim D, Yaghmai V (2019) Comparison of tin filter-based spectral shaping CT and low-dose protocol for detection of urinary calculi. AJR Am J Roentgenol 212(4):808–814CrossRef
6.
Zurück zum Zitat Parakh A, Kortesniemi M, Schindera ST (2016) CT radiation dose management: A comprehensive optimization process for improving patient safety. Radiology 280(3):663–673CrossRef Parakh A, Kortesniemi M, Schindera ST (2016) CT radiation dose management: A comprehensive optimization process for improving patient safety. Radiology 280(3):663–673CrossRef
7.
Zurück zum Zitat den Harder AM, Willemink MJ, van Doormaal PJ et al (2018) Radiation dose reduction for CT assessment of urolithiasis using iterative reconstruction: A prospective intra-individual study. Eur Radiol 28(1):143–150CrossRef den Harder AM, Willemink MJ, van Doormaal PJ et al (2018) Radiation dose reduction for CT assessment of urolithiasis using iterative reconstruction: A prospective intra-individual study. Eur Radiol 28(1):143–150CrossRef
8.
Zurück zum Zitat Solomon J, Marin D, Roy Choudhury K, Patel B, Samei E (2017) Effect of radiation dose reduction and reconstruction algorithm on image noise, contrast, resolution, and detectability of subtle hypoattenuating liver lesions at multidetector CT: Filtered back projection versus a commercial model-based iterative reconstruction algorithm. Radiology 284(3):777–787CrossRef Solomon J, Marin D, Roy Choudhury K, Patel B, Samei E (2017) Effect of radiation dose reduction and reconstruction algorithm on image noise, contrast, resolution, and detectability of subtle hypoattenuating liver lesions at multidetector CT: Filtered back projection versus a commercial model-based iterative reconstruction algorithm. Radiology 284(3):777–787CrossRef
9.
Zurück zum Zitat Desai GS, Uppot RN, Yu EW, Kambadakone AR, Sahani DV (2012) Impact of iterative reconstruction on image quality and radiation dose in multidetector CT of large body size adults. Eur Radiol 22(8):1631–1640CrossRef Desai GS, Uppot RN, Yu EW, Kambadakone AR, Sahani DV (2012) Impact of iterative reconstruction on image quality and radiation dose in multidetector CT of large body size adults. Eur Radiol 22(8):1631–1640CrossRef
10.
Zurück zum Zitat Kuo Y, Lin YY, Lee RC, Lin CJ, Chiou YY, Guo WY (2016) Comparison of image quality from filtered back projection, statistical iterative reconstruction, and model-based iterative reconstruction algorithms in abdominal computed tomography. Medicine (Baltimore) 95(31):e4456CrossRef Kuo Y, Lin YY, Lee RC, Lin CJ, Chiou YY, Guo WY (2016) Comparison of image quality from filtered back projection, statistical iterative reconstruction, and model-based iterative reconstruction algorithms in abdominal computed tomography. Medicine (Baltimore) 95(31):e4456CrossRef
11.
Zurück zum Zitat De Marco P, Origgi D (2018) New adaptive statistical iterative reconstruction ASiR-V: Assessment of noise performance in comparison to ASiR. J Appl Clin Med Phys 19(2):275–286CrossRef De Marco P, Origgi D (2018) New adaptive statistical iterative reconstruction ASiR-V: Assessment of noise performance in comparison to ASiR. J Appl Clin Med Phys 19(2):275–286CrossRef
12.
Zurück zum Zitat Nelson RC, Feuerlein S, Boll DT (2011) New iterative reconstruction techniques for cardiovascular computed tomography: How do they work, and what are the advantages and disadvantages? J Cardiovasc Comput Tomogr 5(5):286–292CrossRef Nelson RC, Feuerlein S, Boll DT (2011) New iterative reconstruction techniques for cardiovascular computed tomography: How do they work, and what are the advantages and disadvantages? J Cardiovasc Comput Tomogr 5(5):286–292CrossRef
13.
Zurück zum Zitat Lim K, Kwon H, Cho J et al (2015) Initial phantom study comparing image quality in computed tomography using adaptive statistical iterative reconstruction and new adaptive statistical iterative reconstruction v. J Comput Assist Tomogr 39(3):443–448PubMed Lim K, Kwon H, Cho J et al (2015) Initial phantom study comparing image quality in computed tomography using adaptive statistical iterative reconstruction and new adaptive statistical iterative reconstruction v. J Comput Assist Tomogr 39(3):443–448PubMed
15.
Zurück zum Zitat Shin YJ, Chang W, Ye JC et al (2020) Low-dose abdominal CT using a deep learning-based denoising algorithm: A comparison with CT reconstructed with filtered back projection or iterative reconstruction algorithm. Korean J Radiol 21(3):356–364CrossRef Shin YJ, Chang W, Ye JC et al (2020) Low-dose abdominal CT using a deep learning-based denoising algorithm: A comparison with CT reconstructed with filtered back projection or iterative reconstruction algorithm. Korean J Radiol 21(3):356–364CrossRef
17.
Zurück zum Zitat Akagi M, Nakamura Y, Higaki T et al (2019) Deep learning reconstruction improves image quality of abdominal ultra-high-resolution CT. Eur Radiol 29(11):6163–6171CrossRef Akagi M, Nakamura Y, Higaki T et al (2019) Deep learning reconstruction improves image quality of abdominal ultra-high-resolution CT. Eur Radiol 29(11):6163–6171CrossRef
18.
Zurück zum Zitat Tian SF, Liu AL, Liu JH, Liu YJ, Pan JD (2019) Potential value of the PixelShine deep learning algorithm for increasing quality of 70 kVp+ASiR-V reconstruction pelvic arterial phase CT images. Jpn J Radiol 37(2):186–190CrossRef Tian SF, Liu AL, Liu JH, Liu YJ, Pan JD (2019) Potential value of the PixelShine deep learning algorithm for increasing quality of 70 kVp+ASiR-V reconstruction pelvic arterial phase CT images. Jpn J Radiol 37(2):186–190CrossRef
19.
Zurück zum Zitat Shafiq-Ul-Hassan M, Zhang GG, Hunt DC et al (2018) Accounting for reconstruction kernel-induced variability in CT radiomic features using noise power spectra. J Med Imaging (Bellingham) 5(1):011013 Shafiq-Ul-Hassan M, Zhang GG, Hunt DC et al (2018) Accounting for reconstruction kernel-induced variability in CT radiomic features using noise power spectra. J Med Imaging (Bellingham) 5(1):011013
22.
Zurück zum Zitat Verdun FR, Racine D, Ott JG et al (2015) Image quality in CT: From physical measurements to model observers (2015). Phys Med 31(8):823–843CrossRef Verdun FR, Racine D, Ott JG et al (2015) Image quality in CT: From physical measurements to model observers (2015). Phys Med 31(8):823–843CrossRef
23.
Zurück zum Zitat Greffier J, Hamard A, Pereira F et al (2020) Image quality and dose reduction opportunity of deep learning image reconstruction algorithm for CT: A phantom study. Eur Radiol 30(7):3951–3959CrossRef Greffier J, Hamard A, Pereira F et al (2020) Image quality and dose reduction opportunity of deep learning image reconstruction algorithm for CT: A phantom study. Eur Radiol 30(7):3951–3959CrossRef
24.
Zurück zum Zitat Cao L, Liu X, Li J et al (2021) A study of using a deep learning image reconstruction to improve the image quality of extremely low-dose contrast-enhanced abdominal CT for patients with hepatic lesions. Br J Radiol 94(1118):20201086CrossRef Cao L, Liu X, Li J et al (2021) A study of using a deep learning image reconstruction to improve the image quality of extremely low-dose contrast-enhanced abdominal CT for patients with hepatic lesions. Br J Radiol 94(1118):20201086CrossRef
25.
Zurück zum Zitat Park C, Choo KS, Jung Y, Jeong HS, Hwang JY, Yun MS (2020) CT iterative vs deep learning reconstruction: Comparison of noise and sharpness. Eur Radiol 15:1–9 Park C, Choo KS, Jung Y, Jeong HS, Hwang JY, Yun MS (2020) CT iterative vs deep learning reconstruction: Comparison of noise and sharpness. Eur Radiol 15:1–9
26.
Zurück zum Zitat Hata A, Yanagawa M, Yoshida Y et al (2021) The image quality of deep-learning image reconstruction of chest CT images on a mediastinal window setting. Clin Radiol 76(2):155.e15–155.e23CrossRef Hata A, Yanagawa M, Yoshida Y et al (2021) The image quality of deep-learning image reconstruction of chest CT images on a mediastinal window setting. Clin Radiol 76(2):155.e15–155.e23CrossRef
27.
Zurück zum Zitat Solomon J, Lyu P, Marin D, Samei E (2020) Noise and spatial resolution properties of a commercially available deep learning-based CT reconstruction algorithm. Med Phys 47(9):3961–3971CrossRef Solomon J, Lyu P, Marin D, Samei E (2020) Noise and spatial resolution properties of a commercially available deep learning-based CT reconstruction algorithm. Med Phys 47(9):3961–3971CrossRef
Metadaten
Titel
Sinogram-based deep learning image reconstruction technique in abdominal CT: image quality considerations
verfasst von
Anushri Parakh
Jinjin Cao
Theodore T. Pierce
Michael A. Blake
Cristy A. Savage
Avinash R. Kambadakone
Publikationsdatum
23.04.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
European Radiology / Ausgabe 11/2021
Print ISSN: 0938-7994
Elektronische ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-021-07952-4

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