Skip to main content
Erschienen in: Journal of Digital Imaging 4/2023

29.03.2023

Employing Multiple Low-Dose PET Images (at Different Dose Levels) as Prior Knowledge to Predict Standard-Dose PET Images

verfasst von: Behnoush Sanaei, Reza Faghihi, Hossein Arabi

Erschienen in: Journal of Imaging Informatics in Medicine | Ausgabe 4/2023

Einloggen, um Zugang zu erhalten

Abstract

The existing deep learning-based denoising methods predicting standard-dose PET images (S-PET) from the low-dose versions (L-PET) solely rely on a single-dose level of PET images as the input of deep learning network. In this work, we exploited the prior knowledge in the form of multiple low-dose levels of PET images to estimate the S-PET images. To this end, a high-resolution ResNet architecture was utilized to predict S-PET images from 6 to 4% L-PET images. For the 6% L-PET imaging, two models were developed; the first and second models were trained using a single input of 6% L-PET and three inputs of 6%, 4%, and 2% L-PET as input to predict S-PET images, respectively. Similarly, for 4% L-PET imaging, a model was trained using a single input of 4% low-dose data, and a three-channel model was developed getting 4%, 3%, and 2% L-PET images. The performance of the four models was evaluated using structural similarity index (SSI), peak signal-to-noise ratio (PSNR), and root mean square error (RMSE) within the entire head regions and malignant lesions. The 4% multi-input model led to improved SSI and PSNR and a significant decrease in RMSE by 22.22% and 25.42% within the entire head region and malignant lesions, respectively. Furthermore, the 4% multi-input network remarkably decreased the lesions’ SUVmean bias and SUVmax bias by 64.58% and 37.12% comparing to single-input network. In addition, the 6% multi-input network decreased the RMSE within the entire head region, within the lesions, lesions’ SUVmean bias, and SUVmax bias by 37.5%, 39.58%, 86.99%, and 45.60%, respectively. This study demonstrated the significant benefits of using prior knowledge in the form of multiple L-PET images to predict S-PET images.
Literatur
1.
Zurück zum Zitat Basu S, Hess S, Braad PE, Olsen BB, Inglev S, Høilund-Carlsen PF: The basic principles of FDG-PET/CT imaging. PET clinics, 9(4):355-70, 2014.CrossRefPubMed Basu S, Hess S, Braad PE, Olsen BB, Inglev S, Høilund-Carlsen PF: The basic principles of FDG-PET/CT imaging. PET clinics, 9(4):355-70, 2014.CrossRefPubMed
2.
Zurück zum Zitat Zimmer L: PET imaging for better understanding of normal and pathological neurotransmission. Biologie aujourd'hui, 213(3-4):109-20, 2019.CrossRefPubMed Zimmer L: PET imaging for better understanding of normal and pathological neurotransmission. Biologie aujourd'hui, 213(3-4):109-20, 2019.CrossRefPubMed
3.
Zurück zum Zitat Khoshyari-morad Z, Jahangir R, Miri-Hakimabad H, Mohammadi N, Arabi H: Monte Carlo-based estimation of patient absorbed dose in 99mTc-DMSA,-MAG3, and-DTPA SPECT imaging using the University of Florida (UF) phantoms. arXiv preprint arXiv:2103.00619. 2021 Feb 28. Khoshyari-morad Z, Jahangir R, Miri-Hakimabad H, Mohammadi N, Arabi H: Monte Carlo-based estimation of patient absorbed dose in 99mTc-DMSA,-MAG3, and-DTPA SPECT imaging using the University of Florida (UF) phantoms. arXiv preprint arXiv:​2103.​00619. 2021 Feb 28.
4.
Zurück zum Zitat Sanaat A, Shiri I, Arabi H, Mainta I, Nkoulou R, Zaidi H: Deep learning-assisted ultra-fast/low-dose whole-body PET/CT imaging. European journal of nuclear medicine and molecular imaging, 48(8):2405-15, 2021.CrossRefPubMedPubMedCentral Sanaat A, Shiri I, Arabi H, Mainta I, Nkoulou R, Zaidi H: Deep learning-assisted ultra-fast/low-dose whole-body PET/CT imaging. European journal of nuclear medicine and molecular imaging, 48(8):2405-15, 2021.CrossRefPubMedPubMedCentral
5.
6.
Zurück zum Zitat Sanaei B, Faghihi R, Arabi H: Quantitative investigation of low-dose PET imaging and post-reconstruction smoothing. arXiv preprint arXiv:2103.10541. 2021 Mar 18. Sanaei B, Faghihi R, Arabi H: Quantitative investigation of low-dose PET imaging and post-reconstruction smoothing. arXiv preprint arXiv:​2103.​10541. 2021 Mar 18.
7.
Zurück zum Zitat Sanaat A, Arabi H, Mainta I, Garibotto V, Zaidi H: Projection space implementation of deep learning–guided low-dose brain PET imaging improves performance over implementation in image space. Journal of Nuclear Medicine, 61(9):1388-96, 2020.CrossRefPubMedPubMedCentral Sanaat A, Arabi H, Mainta I, Garibotto V, Zaidi H: Projection space implementation of deep learning–guided low-dose brain PET imaging improves performance over implementation in image space. Journal of Nuclear Medicine, 61(9):1388-96, 2020.CrossRefPubMedPubMedCentral
8.
Zurück zum Zitat Aghakhan Olia N, Kamali-Asl A, Hariri Tabrizi S, Geramifar P, Sheikhzadeh P, Farzanefar S, Arabi H, Zaidi H: Deep learning–based denoising of low-dose SPECT myocardial perfusion images: quantitative assessment and clinical performance. European journal of nuclear medicine and molecular imaging, 49(5):1508-22, 2022.CrossRefPubMed Aghakhan Olia N, Kamali-Asl A, Hariri Tabrizi S, Geramifar P, Sheikhzadeh P, Farzanefar S, Arabi H, Zaidi H: Deep learning–based denoising of low-dose SPECT myocardial perfusion images: quantitative assessment and clinical performance. European journal of nuclear medicine and molecular imaging, 49(5):1508-22, 2022.CrossRefPubMed
9.
Zurück zum Zitat Case JA: 3D iterative reconstruction can do so much more than reduce dose. Journal of Nuclear Cardiology, 2:1-5, 2019. Case JA: 3D iterative reconstruction can do so much more than reduce dose. Journal of Nuclear Cardiology, 2:1-5, 2019.
10.
Zurück zum Zitat Yu X, Wang C, Hu H, Liu H: Low dose PET image reconstruction with total variation using alternating direction method. PloS one, 11(12):e0166871, 2016.CrossRefPubMedPubMedCentral Yu X, Wang C, Hu H, Liu H: Low dose PET image reconstruction with total variation using alternating direction method. PloS one, 11(12):e0166871, 2016.CrossRefPubMedPubMedCentral
11.
Zurück zum Zitat Zeraatkar N, Sajedi S, Farahani MH, Arabi H, Sarkar S, Ghafarian P, Rahmim A, Ay MR: Resolution-recovery-embedded image reconstruction for a high-resolution animal SPECT system. Physica Medica, 30(7):774-81, 2014.CrossRefPubMed Zeraatkar N, Sajedi S, Farahani MH, Arabi H, Sarkar S, Ghafarian P, Rahmim A, Ay MR: Resolution-recovery-embedded image reconstruction for a high-resolution animal SPECT system. Physica Medica, 30(7):774-81, 2014.CrossRefPubMed
12.
Zurück zum Zitat Mehranian A, Reader AJ: Model-based deep learning PET image reconstruction using forward–backward splitting expectation–maximization. IEEE transactions on radiation and plasma medical sciences, 5(1):54-64, 2020.CrossRefPubMedPubMedCentral Mehranian A, Reader AJ: Model-based deep learning PET image reconstruction using forward–backward splitting expectation–maximization. IEEE transactions on radiation and plasma medical sciences, 5(1):54-64, 2020.CrossRefPubMedPubMedCentral
13.
Zurück zum Zitat Arabi H, Zaidi H: Improvement of image quality in PET using post-reconstruction hybrid spatial-frequency domain filtering. Physics in Medicine & Biology, 63(21):215010, 2018.CrossRef Arabi H, Zaidi H: Improvement of image quality in PET using post-reconstruction hybrid spatial-frequency domain filtering. Physics in Medicine & Biology, 63(21):215010, 2018.CrossRef
14.
Zurück zum Zitat Arabi H, Zaidi H: Non-local mean denoising using multiple PET reconstructions. Annals of nuclear medicine, 35(2):176-86, 2021.CrossRefPubMed Arabi H, Zaidi H: Non-local mean denoising using multiple PET reconstructions. Annals of nuclear medicine, 35(2):176-86, 2021.CrossRefPubMed
15.
Zurück zum Zitat Zhou L, Schaefferkoetter JD, Tham IW, Huang G, Yan J: Supervised learning with cyclegan for low-dose FDG PET image denoising. Medical image analysis, 65:101770, 2020.CrossRefPubMed Zhou L, Schaefferkoetter JD, Tham IW, Huang G, Yan J: Supervised learning with cyclegan for low-dose FDG PET image denoising. Medical image analysis, 65:101770, 2020.CrossRefPubMed
16.
Zurück zum Zitat Bland J, Mehranian A, Belzunce MA, Ellis S, McGinnity CJ, Hammers A, Reader AJ: MR-guided kernel EM reconstruction for reduced dose PET imaging. IEEE transactions on radiation and plasma medical sciences, 2(3):235-43, 2017.CrossRefPubMedPubMedCentral Bland J, Mehranian A, Belzunce MA, Ellis S, McGinnity CJ, Hammers A, Reader AJ: MR-guided kernel EM reconstruction for reduced dose PET imaging. IEEE transactions on radiation and plasma medical sciences, 2(3):235-43, 2017.CrossRefPubMedPubMedCentral
17.
Zurück zum Zitat Arabi H, Zaidi H: Spatially guided nonlocal mean approach for denoising of PET images. Medical physics, 47(4):1656-69, 2020.CrossRefPubMed Arabi H, Zaidi H: Spatially guided nonlocal mean approach for denoising of PET images. Medical physics, 47(4):1656-69, 2020.CrossRefPubMed
18.
Zurück zum Zitat Arabi H, Zaidi H: Applications of artificial intelligence and deep learning in molecular imaging and radiotherapy. European Journal of Hybrid Imaging, 4(1):1-23, 2020.CrossRef Arabi H, Zaidi H: Applications of artificial intelligence and deep learning in molecular imaging and radiotherapy. European Journal of Hybrid Imaging, 4(1):1-23, 2020.CrossRef
19.
Zurück zum Zitat Arabi H, AkhavanAllaf A, Sanaat A, Shiri I, Zaidi H: The promise of artificial intelligence and deep learning in PET and SPECT imaging. Physica Medica, 83:122-37, 2021.CrossRefPubMed Arabi H, AkhavanAllaf A, Sanaat A, Shiri I, Zaidi H: The promise of artificial intelligence and deep learning in PET and SPECT imaging. Physica Medica, 83:122-37, 2021.CrossRefPubMed
20.
Zurück zum Zitat Chen KT, Gong E, de Carvalho Macruz FB, Xu J, Boumis A, Khalighi M, Poston KL, Sha SJ, Greicius MD, Mormino E, Pauly JM: Ultra–low-dose 18F-florbetaben amyloid PET imaging using deep learning with multi-contrast MRI inputs. Radiology, 290(3):649-56, 2019.CrossRefPubMed Chen KT, Gong E, de Carvalho Macruz FB, Xu J, Boumis A, Khalighi M, Poston KL, Sha SJ, Greicius MD, Mormino E, Pauly JM: Ultra–low-dose 18F-florbetaben amyloid PET imaging using deep learning with multi-contrast MRI inputs. Radiology, 290(3):649-56, 2019.CrossRefPubMed
21.
Zurück zum Zitat Liu H, Wu J, Lu W, Onofrey JA, Liu YH, Liu C: Noise reduction with cross-tracer and cross-protocol deep transfer learning for low-dose PET. Physics in Medicine & Biology, 65(18):185006, 2020.CrossRef Liu H, Wu J, Lu W, Onofrey JA, Liu YH, Liu C: Noise reduction with cross-tracer and cross-protocol deep transfer learning for low-dose PET. Physics in Medicine & Biology, 65(18):185006, 2020.CrossRef
22.
23.
Zurück zum Zitat Wang Y, Yu B, Wang L, Zu C, Lalush D. S, Lin W., ... Zhou L: 3D conditional generative adversarial networks for high-quality PET image estimation at low dose. Neuroimage, 174, 550-562, 2018.CrossRefPubMed Wang Y, Yu B, Wang L, Zu C, Lalush D. S, Lin W., ... Zhou L: 3D conditional generative adversarial networks for high-quality PET image estimation at low dose. Neuroimage, 174, 550-562, 2018.CrossRefPubMed
24.
Zurück zum Zitat Lei Y, Dong X, Wang T, Higgins K, Liu T, Curran W. J, ... Yang X: Whole-body PET estimation from low count statistics using cycle-consistent generative adversarial networks. Physics in Medicine & Biology, 64(21), 215017, 2019.CrossRef Lei Y, Dong X, Wang T, Higgins K, Liu T, Curran W. J, ... Yang X: Whole-body PET estimation from low count statistics using cycle-consistent generative adversarial networks. Physics in Medicine & Biology, 64(21), 215017, 2019.CrossRef
25.
Zurück zum Zitat Chen K. T, Gong E, de Carvalho Macruz F. B, Xu J, Boumis A, Khalighi M, ... Zaharchuk G: Ultra–low-dose 18F-florbetaben amyloid PET imaging using deep learning with multi-contrast MRI inputs. Radiology, 290(3), 649-656, 2019CrossRefPubMed Chen K. T, Gong E, de Carvalho Macruz F. B, Xu J, Boumis A, Khalighi M, ... Zaharchuk G: Ultra–low-dose 18F-florbetaben amyloid PET imaging using deep learning with multi-contrast MRI inputs. Radiology, 290(3), 649-656, 2019CrossRefPubMed
26.
Zurück zum Zitat Smith LN: A disciplined approach to neural network hyper-parameters: Part 1--learning rate, batch size, momentum, and weight decay. arXiv preprint arXiv:1803.09820. 2018 Mar 26. Smith LN: A disciplined approach to neural network hyper-parameters: Part 1--learning rate, batch size, momentum, and weight decay. arXiv preprint arXiv:​1803.​09820. 2018 Mar 26.
27.
Zurück zum Zitat Arabi H, Zaidi H: Assessment of deep learning-based PET attenuation correction frameworks in the sinogram domain. Physics in Medicine & Biology, 66(14):145001, 2021.CrossRef Arabi H, Zaidi H: Assessment of deep learning-based PET attenuation correction frameworks in the sinogram domain. Physics in Medicine & Biology, 66(14):145001, 2021.CrossRef
28.
Zurück zum Zitat Olia NA, Kamali-Asl A, Tabrizi SH, Geramifar P, Sheikhzadeh P, Farzanefar S, Arabi H: Deep learning-based noise reduction in low dose SPECT Myocardial Perfusion Imaging: Quantitative assessment and clinical performance. arXiv preprint arXiv:2103.11974. 2021 Mar 22. Olia NA, Kamali-Asl A, Tabrizi SH, Geramifar P, Sheikhzadeh P, Farzanefar S, Arabi H: Deep learning-based noise reduction in low dose SPECT Myocardial Perfusion Imaging: Quantitative assessment and clinical performance. arXiv preprint arXiv:​2103.​11974. 2021 Mar 22.
29.
Zurück zum Zitat Olia NA, Kamali-Asl A, Tabrizi SH, Geramifar P, Sheikhzadeh P, Arabi H, Zaidi H: Deep Learning-based Low-dose Cardiac Gated SPECT: Implementation in Projection Space vs. Image Space. In2021 IEEE Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC) 2021 Oct 16 (pp. 1–3). IEEE. Olia NA, Kamali-Asl A, Tabrizi SH, Geramifar P, Sheikhzadeh P, Arabi H, Zaidi H: Deep Learning-based Low-dose Cardiac Gated SPECT: Implementation in Projection Space vs. Image Space. In2021 IEEE Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC) 2021 Oct 16 (pp. 1–3). IEEE.
Metadaten
Titel
Employing Multiple Low-Dose PET Images (at Different Dose Levels) as Prior Knowledge to Predict Standard-Dose PET Images
verfasst von
Behnoush Sanaei
Reza Faghihi
Hossein Arabi
Publikationsdatum
29.03.2023
Verlag
Springer International Publishing
Erschienen in
Journal of Imaging Informatics in Medicine / Ausgabe 4/2023
Print ISSN: 2948-2925
Elektronische ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-023-00815-y

Weitere Artikel der Ausgabe 4/2023

Journal of Digital Imaging 4/2023 Zur Ausgabe

Ein Drittel der jungen Ärztinnen und Ärzte erwägt abzuwandern

07.05.2024 Medizinstudium Nachrichten

Extreme Arbeitsverdichtung und kaum Supervision: Dr. Andrea Martini, Sprecherin des Bündnisses Junge Ärztinnen und Ärzte (BJÄ) über den Frust des ärztlichen Nachwuchses und die Vorteile des Rucksack-Modells.

Endlich: Zi zeigt, mit welchen PVS Praxen zufrieden sind

IT für Ärzte Nachrichten

Darauf haben viele Praxen gewartet: Das Zi hat eine Liste von Praxisverwaltungssystemen veröffentlicht, die von Nutzern positiv bewertet werden. Eine gute Grundlage für wechselwillige Ärztinnen und Psychotherapeuten.

Akuter Schwindel: Wann lohnt sich eine MRT?

28.04.2024 Schwindel Nachrichten

Akuter Schwindel stellt oft eine diagnostische Herausforderung dar. Wie nützlich dabei eine MRT ist, hat eine Studie aus Finnland untersucht. Immerhin einer von sechs Patienten wurde mit akutem ischämischem Schlaganfall diagnostiziert.

Screening-Mammografie offenbart erhöhtes Herz-Kreislauf-Risiko

26.04.2024 Mammografie Nachrichten

Routinemäßige Mammografien helfen, Brustkrebs frühzeitig zu erkennen. Anhand der Röntgenuntersuchung lassen sich aber auch kardiovaskuläre Risikopatientinnen identifizieren. Als zuverlässiger Anhaltspunkt gilt die Verkalkung der Brustarterien.

Update Radiologie

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.