Literature DB >> 31924718

Projection Space Implementation of Deep Learning-Guided Low-Dose Brain PET Imaging Improves Performance over Implementation in Image Space.

Amirhossein Sanaat1, Hossein Arabi1, Ismini Mainta1, Valentina Garibotto1,2, Habib Zaidi3,2,4,5.   

Abstract

Our purpose was to assess the performance of full-dose (FD) PET image synthesis in both image and sinogram space from low-dose (LD) PET images and sinograms without sacrificing diagnostic quality using deep learning techniques.
Methods: Clinical brain PET/CT studies of 140 patients were retrospectively used for LD-to-FD PET conversion. Five percent of the events were randomly selected from the FD list-mode PET data to simulate a realistic LD acquisition. A modified 3-dimensional U-Net model was implemented to predict FD sinograms in the projection space (PSS) and FD images in image space (PIS) from their corresponding LD sinograms and images, respectively. The quality of the predicted PET images was assessed by 2 nuclear medicine specialists using a 5-point grading scheme. Quantitative analysis using established metrics including the peak signal-to-noise ratio (PSNR), structural similarity index metric (SSIM), regionwise SUV bias, and first-, second- and high-order texture radiomic features in 83 brain regions for the test and evaluation datasets was also performed.
Results: All PSS images were scored 4 or higher (good to excellent) by the nuclear medicine specialists. PSNR and SSIM values of 0.96 ± 0.03 and 0.97 ± 0.02, respectively, were obtained for PIS, and values of 31.70 ± 0.75 and 37.30 ± 0.71, respectively, were obtained for PSS. The average SUV bias calculated over all brain regions was 0.24% ± 0.96% and 1.05% ± 1.44% for PSS and PIS, respectively. The Bland-Altman plots reported the lowest SUV bias (0.02) and variance (95% confidence interval, -0.92 to +0.84) for PSS, compared with the reference FD images. The relative error of the homogeneity radiomic feature belonging to the gray-level cooccurrence matrix category was -1.07 ± 1.77 and 0.28 ± 1.4 for PIS and PSS, respectively.
Conclusion: The qualitative assessment and quantitative analysis demonstrated that the FD PET PSS led to superior performance, resulting in higher image quality and lower SUV bias and variance than for FD PET PIS.
© 2020 by the Society of Nuclear Medicine and Molecular Imaging.

Entities:  

Keywords:  PET/CT; brain imaging; deep learning; low-dose imaging; radiomics

Mesh:

Year:  2020        PMID: 31924718      PMCID: PMC7456177          DOI: 10.2967/jnumed.119.239327

Source DB:  PubMed          Journal:  J Nucl Med        ISSN: 0161-5505            Impact factor:   11.082


  26 in total

1.  Predicting standard-dose PET image from low-dose PET and multimodal MR images using mapping-based sparse representation.

Authors:  Yan Wang; Pei Zhang; Le An; Guangkai Ma; Jiayin Kang; Feng Shi; Xi Wu; Jiliu Zhou; David S Lalush; Weili Lin; Dinggang Shen
Journal:  Phys Med Biol       Date:  2016-01-06       Impact factor: 3.609

2.  Ultra-low-dose PET reconstruction using generative adversarial network with feature matching and task-specific perceptual loss.

Authors:  Jiahong Ouyang; Kevin T Chen; Enhao Gong; John Pauly; Greg Zaharchuk
Journal:  Med Phys       Date:  2019-06-17       Impact factor: 4.071

3.  Full-Dose PET Image Estimation from Low-Dose PET Image Using Deep Learning: a Pilot Study.

Authors:  Sydney Kaplan; Yang-Ming Zhu
Journal:  J Digit Imaging       Date:  2019-10       Impact factor: 4.056

4.  PET image denoising using unsupervised deep learning.

Authors:  Jianan Cui; Kuang Gong; Ning Guo; Chenxi Wu; Xiaxia Meng; Kyungsang Kim; Kun Zheng; Zhifang Wu; Liping Fu; Baixuan Xu; Zhaohui Zhu; Jiahe Tian; Huafeng Liu; Quanzheng Li
Journal:  Eur J Nucl Med Mol Imaging       Date:  2019-08-29       Impact factor: 9.236

5.  Towards tracer dose reduction in PET studies: Simulation of dose reduction by retrospective randomized undersampling of list-mode data.

Authors:  Sergios Gatidis; Christian Würslin; Ferdinand Seith; Jürgen F Schäfer; Christian la Fougère; Konstantin Nikolaou; Nina F Schwenzer; Holger Schmidt
Journal:  Hell J Nucl Med       Date:  2016-03-01       Impact factor: 1.102

6.  Higher SNR PET image prediction using a deep learning model and MRI image.

Authors:  Chih-Chieh Liu; Jinyi Qi
Journal:  Phys Med Biol       Date:  2019-05-23       Impact factor: 3.609

7.  DeepPET: A deep encoder-decoder network for directly solving the PET image reconstruction inverse problem.

Authors:  Ida Häggström; C Ross Schmidtlein; Gabriele Campanella; Thomas J Fuchs
Journal:  Med Image Anal       Date:  2019-03-30       Impact factor: 8.545

8.  Deep Auto-context Convolutional Neural Networks for Standard-Dose PET Image Estimation from Low-Dose PET/MRI.

Authors:  Lei Xiang; Yu Qiao; Dong Nie; Le An; Qian Wang; Dinggang Shen
Journal:  Neurocomputing       Date:  2017-06-29       Impact factor: 5.719

9.  An investigation of quantitative accuracy for deep learning based denoising in oncological PET.

Authors:  Wenzhuo Lu; John A Onofrey; Yihuan Lu; Luyao Shi; Tianyu Ma; Yaqiang Liu; Chi Liu
Journal:  Phys Med Biol       Date:  2019-08-21       Impact factor: 3.609

10.  A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis.

Authors:  Xiaoxuan Liu; Livia Faes; Aditya U Kale; Siegfried K Wagner; Dun Jack Fu; Alice Bruynseels; Thushika Mahendiran; Gabriella Moraes; Mohith Shamdas; Christoph Kern; Joseph R Ledsam; Martin K Schmid; Konstantinos Balaskas; Eric J Topol; Lucas M Bachmann; Pearse A Keane; Alastair K Denniston
Journal:  Lancet Digit Health       Date:  2019-09-25
View more
  7 in total

1.  Artificial intelligence enables whole-body positron emission tomography scans with minimal radiation exposure.

Authors:  Yan-Ran Joyce Wang; Lucia Baratto; K Elizabeth Hawk; Ashok J Theruvath; Allison Pribnow; Avnesh S Thakor; Sergios Gatidis; Rong Lu; Santosh E Gummidipundi; Jordi Garcia-Diaz; Daniel Rubin; Heike E Daldrup-Link
Journal:  Eur J Nucl Med Mol Imaging       Date:  2021-02-01       Impact factor: 9.236

Review 2.  Artificial Intelligence-Based Image Enhancement in PET Imaging: Noise Reduction and Resolution Enhancement.

Authors:  Juan Liu; Masoud Malekzadeh; Niloufar Mirian; Tzu-An Song; Chi Liu; Joyita Dutta
Journal:  PET Clin       Date:  2021-10

3.  Deep-TOF-PET: Deep learning-guided generation of time-of-flight from non-TOF brain PET images in the image and projection domains.

Authors:  Amirhossein Sanaat; Azadeh Akhavanalaf; Isaac Shiri; Yazdan Salimi; Hossein Arabi; Habib Zaidi
Journal:  Hum Brain Mapp       Date:  2022-09-10       Impact factor: 5.399

4.  Direct Reconstruction of Linear Parametric Images From Dynamic PET Using Nonlocal Deep Image Prior.

Authors:  Kuang Gong; Ciprian Catana; Jinyi Qi; Quanzheng Li
Journal:  IEEE Trans Med Imaging       Date:  2022-03-02       Impact factor: 11.037

Review 5.  Deep learning-based image reconstruction and post-processing methods in positron emission tomography for low-dose imaging and resolution enhancement.

Authors:  Cameron Dennis Pain; Gary F Egan; Zhaolin Chen
Journal:  Eur J Nucl Med Mol Imaging       Date:  2022-03-21       Impact factor: 10.057

Review 6.  A review on medical imaging synthesis using deep learning and its clinical applications.

Authors:  Tonghe Wang; Yang Lei; Yabo Fu; Jacob F Wynne; Walter J Curran; Tian Liu; Xiaofeng Yang
Journal:  J Appl Clin Med Phys       Date:  2020-12-11       Impact factor: 2.102

7.  Deep learning-assisted PET imaging achieves fast scan/low-dose examination.

Authors:  Yan Xing; Wenli Qiao; Taisong Wang; Ying Wang; Chenwei Li; Yang Lv; Chen Xi; Shu Liao; Zheng Qian; Jinhua Zhao
Journal:  EJNMMI Phys       Date:  2022-02-04
  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.