Literature DB >> 34663767

Noise2Void: unsupervised denoising of PET images.

Tzu-An Song1, Fan Yang1, Joyita Dutta1,2.   

Abstract

Objective:Elevated noise levels in positron emission tomography (PET) images lower image quality and quantitative accuracy and are a confounding factor for clinical interpretation. The objective of this paper is to develop a PET image denoising technique based on unsupervised deep learning.Significance:Recent advances in deep learning have ushered in a wide array of novel denoising techniques, several of which have been successfully adapted for PET image reconstruction and post-processing. The bulk of the deep learning research so far has focused on supervised learning schemes, which, for the image denoising problem, require paired noisy and noiseless/low-noise images. This requirement tends to limit the utility of these methods for medical applications as paired training datasets are not always available. Furthermore, to achieve the best-case performance of these methods, it is essential that the datasets for training and subsequent real-world application have consistent image characteristics (e.g. noise, resolution, etc), which is rarely the case for clinical data. To circumvent these challenges, it is critical to develop unsupervised techniques that obviate the need for paired training data.Approach:In this paper, we have adapted Noise2Void, a technique that relies on corrupt images alone for model training, for PET image denoising and assessed its performance using PET neuroimaging data. Noise2Void is an unsupervised approach that uses a blind-spot network design. It requires only a single noisy image as its input, and, therefore, is well-suited for clinical settings. During the training phase, a single noisy PET image serves as both the input and the target. Here we present a modified version of Noise2Void based on a transfer learning paradigm that involves group-level pretraining followed by individual fine-tuning. Furthermore, we investigate the impact of incorporating an anatomical image as a second input to the network.Main
Results: We validated our denoising technique using simulation data based on the BrainWeb digital phantom. We show that Noise2Void with pretraining and/or anatomical guidance leads to higher peak signal-to-noise ratios than traditional denoising schemes such as Gaussian filtering, anatomically guided non-local means filtering, and block-matching and 4D filtering. We used the Noise2Noise denoising technique as an additional benchmark. For clinical validation, we applied this method to human brain imaging datasets. The clinical findings were consistent with the simulation results confirming the translational value of Noise2Void as a denoising tool.
© 2021 Institute of Physics and Engineering in Medicine.

Entities:  

Keywords:  PET; deep learning; denoising; unsupervised learning

Mesh:

Year:  2021        PMID: 34663767      PMCID: PMC8563445          DOI: 10.1088/1361-6560/ac30a0

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  32 in total

1.  Denoising of PET images by combining wavelets and curvelets for improved preservation of resolution and quantitation.

Authors:  A Le Pogam; H Hanzouli; M Hatt; C Cheze Le Rest; D Visvikis
Journal:  Med Image Anal       Date:  2013-06-01       Impact factor: 8.545

2.  Guided image filtering.

Authors:  Kaiming He; Jian Sun; Xiaoou Tang
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2013-06       Impact factor: 6.226

3.  Quantitative dynamic cardiac 82Rb PET using generalized factor and compartment analyses.

Authors:  Georges El Fakhri; Arkadiusz Sitek; Bastien Guérin; Marie Foley Kijewski; Marcelo F Di Carli; Stephen C Moore
Journal:  J Nucl Med       Date:  2005-08       Impact factor: 10.057

4.  Micro-Networks for Robust MR-Guided Low Count PET Imaging.

Authors:  Casper O da Costa-Luis; Andrew J Reader
Journal:  IEEE Trans Radiat Plasma Med Sci       Date:  2020-04-08

5.  Dynamic PET denoising with HYPR processing.

Authors:  Bradley T Christian; Nicholas T Vandehey; John M Floberg; Charles A Mistretta
Journal:  J Nucl Med       Date:  2010-06-16       Impact factor: 10.057

6.  Quantification of regional myocardial blood flow in vivo with H215O.

Authors:  S R Bergmann; K A Fox; A L Rand; K D McElvany; M J Welch; J Markham; B E Sobel
Journal:  Circulation       Date:  1984-10       Impact factor: 29.690

Review 7.  Pitfalls and Limitations of PET/CT in Brain Imaging.

Authors:  Eric Salmon; Claire Bernard Ir; Roland Hustinx
Journal:  Semin Nucl Med       Date:  2015-11       Impact factor: 4.446

8.  Kinetic analysis of central [11C]raclopride binding to D2-dopamine receptors studied by PET--a comparison to the equilibrium analysis.

Authors:  L Farde; L Eriksson; G Blomquist; C Halldin
Journal:  J Cereb Blood Flow Metab       Date:  1989-10       Impact factor: 6.200

9.  Suitability of bilateral filtering for edge-preserving noise reduction in PET.

Authors:  Frank Hofheinz; Jens Langner; Bettina Beuthien-Baumann; Liane Oehme; Jörg Steinbach; Jörg Kotzerke; Jörg van den Hoff
Journal:  EJNMMI Res       Date:  2011-10-05       Impact factor: 3.138

10.  Non-local means denoising of dynamic PET images.

Authors:  Joyita Dutta; Richard M Leahy; Quanzheng Li
Journal:  PLoS One       Date:  2013-12-05       Impact factor: 3.240

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  3 in total

1.  Virtual high-count PET image generation using a deep learning method.

Authors:  Juan Liu; Sijin Ren; Rui Wang; Niloufarsadat Mirian; Yu-Jung Tsai; Michal Kulon; Darko Pucar; Ming-Kai Chen; Chi Liu
Journal:  Med Phys       Date:  2022-08-13       Impact factor: 4.506

2.  Signal-to-Noise Ratio Comparison of Several Filters against Phantom Image.

Authors:  Muhammad Hameed Siddiqi; Yousef Alhwaiti
Journal:  J Healthc Eng       Date:  2022-03-26       Impact factor: 2.682

3.  Effect of Denoising and Deblurring 18F-Fluorodeoxyglucose Positron Emission Tomography Images on a Deep Learning Model's Classification Performance for Alzheimer's Disease.

Authors:  Min-Hee Lee; Chang-Soo Yun; Kyuseok Kim; Youngjin Lee
Journal:  Metabolites       Date:  2022-03-07
  3 in total

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