CONN-NLM: A Novel CONNectome-Based Non-local Means Filter for PET-MRI Denoising.

PET-MRI connectivity connectome denoising diffusion MRI image processing tractography

Journal

Frontiers in neuroscience
ISSN: 1662-4548
Titre abrégé: Front Neurosci
Pays: Switzerland
ID NLM: 101478481

Informations de publication

Date de publication:
2022
Historique:
received: 29 11 2021
accepted: 22 04 2022
entrez: 17 6 2022
pubmed: 18 6 2022
medline: 18 6 2022
Statut: epublish

Résumé

Advancements in hybrid positron emission tomography-magnetic resonance (PET-MR) systems allow for combining the advantages of each modality. Integrating information from MRI and PET can be valuable for diagnosing and treating neurological disorders. However, combining diffusion MRI (dMRI) and PET data, which provide highly complementary information, has rarely been exploited in image post-processing. dMRI has the ability to investigate the white matter pathways of the brain through fibre tractography, which enables comprehensive mapping of the brain connection networks (the "connectome"). Novel methods are required to combine information present in the connectome and PET to increase the full potential of PET-MRI. We developed a CONNectome-based Non-Local Means (CONN-NLM) filter to exploit synergies between dMRI-derived structural connectivity and PET intensity information to denoise PET images. PET-MR data are parcelled into a number of regions based on a brain atlas, and the inter-regional structural connectivity is calculated based on dMRI fibre-tracking. The CONN-NLM filter is then implemented as a post-reconstruction filter by combining the nonlocal means filter and a connectivity-based cortical smoothing. The effect of this approach is to weight voxels with similar PET intensity and highly connected voxels higher when computing the weighted-average to perform more informative denoising. The proposed method was first evaluated using a novel computer phantom framework to simulate realistic hybrid PET-MR images with different lesion scenarios. CONN-NLM was further assessed with clinical dMRI and tau PET examples. The results showed that CONN-NLM has the capacity to improve the overall PET image quality by reducing noise while preserving lesion contrasts, and it outperformed a range of filters that did not use dMRI information. The simulations demonstrate that CONN-NLM can handle various lesion contrasts consistently, as well as lesions with different levels of inter-connectivity. CONN-NLM has unique advantages of providing more informative and accurate PET smoothing by adding complementary structural connectivity information from dMRI, representing a new avenue to exploit synergies between MRI and PET.

Sections du résumé

Background UNASSIGNED
Advancements in hybrid positron emission tomography-magnetic resonance (PET-MR) systems allow for combining the advantages of each modality. Integrating information from MRI and PET can be valuable for diagnosing and treating neurological disorders. However, combining diffusion MRI (dMRI) and PET data, which provide highly complementary information, has rarely been exploited in image post-processing. dMRI has the ability to investigate the white matter pathways of the brain through fibre tractography, which enables comprehensive mapping of the brain connection networks (the "connectome"). Novel methods are required to combine information present in the connectome and PET to increase the full potential of PET-MRI.
Methods UNASSIGNED
We developed a CONNectome-based Non-Local Means (CONN-NLM) filter to exploit synergies between dMRI-derived structural connectivity and PET intensity information to denoise PET images. PET-MR data are parcelled into a number of regions based on a brain atlas, and the inter-regional structural connectivity is calculated based on dMRI fibre-tracking. The CONN-NLM filter is then implemented as a post-reconstruction filter by combining the nonlocal means filter and a connectivity-based cortical smoothing. The effect of this approach is to weight voxels with similar PET intensity and highly connected voxels higher when computing the weighted-average to perform more informative denoising. The proposed method was first evaluated using a novel computer phantom framework to simulate realistic hybrid PET-MR images with different lesion scenarios. CONN-NLM was further assessed with clinical dMRI and tau PET examples.
Results UNASSIGNED
The results showed that CONN-NLM has the capacity to improve the overall PET image quality by reducing noise while preserving lesion contrasts, and it outperformed a range of filters that did not use dMRI information. The simulations demonstrate that CONN-NLM can handle various lesion contrasts consistently, as well as lesions with different levels of inter-connectivity.
Conclusion UNASSIGNED
CONN-NLM has unique advantages of providing more informative and accurate PET smoothing by adding complementary structural connectivity information from dMRI, representing a new avenue to exploit synergies between MRI and PET.

Identifiants

pubmed: 35712456
doi: 10.3389/fnins.2022.824431
pmc: PMC9197079
doi:

Types de publication

Journal Article

Langues

eng

Pagination

824431

Informations de copyright

Copyright © 2022 Sun, Meikle and Calamante.

Déclaration de conflit d'intérêts

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Références

Neuroimage. 2010 Dec;53(4):1233-43
pubmed: 20643215
Neuroimage. 2013 Oct 15;80:426-44
pubmed: 23643999
Neuroscience. 2019 Apr 1;403:125-135
pubmed: 30071279
Neuroimage. 2021 Nov 1;241:118417
pubmed: 34298083
Nat Commun. 2020 Oct 9;11(1):5094
pubmed: 33037225
Front Neurosci. 2017 Mar 31;11:167
pubmed: 28408865
Neuroimage. 2019 Nov 15;202:116137
pubmed: 31473352
Neuroimage. 2012 Sep;62(3):1924-38
pubmed: 22705374
Eur J Nucl Med Mol Imaging. 2019 Dec;46(13):2819-2830
pubmed: 31292699
Neuroimage. 2002 Oct;17(2):825-41
pubmed: 12377157
Hum Brain Mapp. 2018 Dec;39(12):5126-5144
pubmed: 30076750
Neuroimage. 2020 Feb 1;206:116189
pubmed: 31521825
Neuroimage. 2007 May 1;35(4):1459-72
pubmed: 17379540
J Cereb Blood Flow Metab. 2017 Dec;37(12):3803-3817
pubmed: 28569617
Neuroimage. 2021 Feb 1;226:117560
pubmed: 33189932
Phys Med. 2021 Sep;89:129-139
pubmed: 34365117
Magn Reson Med. 2014 Nov;72(5):1460-70
pubmed: 24323973
Acta Neuropathol. 2017 Sep;134(3):459-473
pubmed: 28638989
NMR Biomed. 2019 Apr;32(4):e3785
pubmed: 28945294
Magn Reson Imaging. 2019 Dec;64:62-70
pubmed: 31075422
Phys Med Biol. 2017 Jul 06;62(15):5975-6007
pubmed: 28570263
Diagnostics (Basel). 2019 Sep 06;9(3):
pubmed: 31500098
IEEE Trans Med Imaging. 2013 Oct;32(10):1952-63
pubmed: 23807436
Neuroimage. 2015 Oct 1;119:338-51
pubmed: 26163802
J Nucl Med. 2012 Aug;53(8):1284-91
pubmed: 22743250
Front Neuroinform. 2016 Jul 27;10:30
pubmed: 27512372
Nat Neurosci. 2018 Mar;21(3):424-431
pubmed: 29403032
MAGMA. 2017 Aug;30(4):317-335
pubmed: 28181027
IEEE Trans Med Imaging. 2014 Mar;33(3):636-50
pubmed: 24595339
Neuroimage. 2014 Dec;103:411-426
pubmed: 25109526
J Magn Reson Imaging. 2016 Aug;44(2):265-76
pubmed: 27007987
Phys Med Biol. 2012 Feb 21;57(4):867-83
pubmed: 22290410
Brain. 2018 Mar 1;141(3):888-902
pubmed: 29309541

Auteurs

Zhuopin Sun (Z)

School of Biomedical Engineering, The University of Sydney, Sydney, NSW, Australia.

Steven Meikle (S)

Faculty of Medicine and Health, The University of Sydney, Sydney, NSW, Australia.
Brain and Mind Centre, The University of Sydney, Sydney, NSW, Australia.

Fernando Calamante (F)

School of Biomedical Engineering, The University of Sydney, Sydney, NSW, Australia.
Brain and Mind Centre, The University of Sydney, Sydney, NSW, Australia.
Sydney Imaging, The University of Sydney, Sydney, NSW, Australia.

Classifications MeSH