Non-local means denoising of dynamic PET images.

<h4>Objective</h4>Dynamic positron emission tomography (PET), which reveals information about both the spatial distribution and temporal kinetics of a radiotracer, enables quantitative interpretation of PET data. Model-based interpretation of dynamic PET images by means of parametric fit...

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Main Authors: Joyita Dutta, Richard M Leahy, Quanzheng Li
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/24339921/?tool=EBI
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spelling doaj-e3a72f2b090c403ba2963be15238c49a2021-03-04T12:01:00ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01812e8139010.1371/journal.pone.0081390Non-local means denoising of dynamic PET images.Joyita DuttaRichard M LeahyQuanzheng Li<h4>Objective</h4>Dynamic positron emission tomography (PET), which reveals information about both the spatial distribution and temporal kinetics of a radiotracer, enables quantitative interpretation of PET data. Model-based interpretation of dynamic PET images by means of parametric fitting, however, is often a challenging task due to high levels of noise, thus necessitating a denoising step. The objective of this paper is to develop and characterize a denoising framework for dynamic PET based on non-local means (NLM).<h4>Theory</h4>NLM denoising computes weighted averages of voxel intensities assigning larger weights to voxels that are similar to a given voxel in terms of their local neighborhoods or patches. We introduce three key modifications to tailor the original NLM framework to dynamic PET. Firstly, we derive similarities from less noisy later time points in a typical PET acquisition to denoise the entire time series. Secondly, we use spatiotemporal patches for robust similarity computation. Finally, we use a spatially varying smoothing parameter based on a local variance approximation over each spatiotemporal patch.<h4>Methods</h4>To assess the performance of our denoising technique, we performed a realistic simulation on a dynamic digital phantom based on the Digimouse atlas. For experimental validation, we denoised [Formula: see text] PET images from a mouse study and a hepatocellular carcinoma patient study. We compared the performance of NLM denoising with four other denoising approaches - Gaussian filtering, PCA, HYPR, and conventional NLM based on spatial patches.<h4>Results</h4>The simulation study revealed significant improvement in bias-variance performance achieved using our NLM technique relative to all the other methods. The experimental data analysis revealed that our technique leads to clear improvement in contrast-to-noise ratio in Patlak parametric images generated from denoised preclinical and clinical dynamic images, indicating its ability to preserve image contrast and high intensity details while lowering the background noise variance.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/24339921/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Joyita Dutta
Richard M Leahy
Quanzheng Li
spellingShingle Joyita Dutta
Richard M Leahy
Quanzheng Li
Non-local means denoising of dynamic PET images.
PLoS ONE
author_facet Joyita Dutta
Richard M Leahy
Quanzheng Li
author_sort Joyita Dutta
title Non-local means denoising of dynamic PET images.
title_short Non-local means denoising of dynamic PET images.
title_full Non-local means denoising of dynamic PET images.
title_fullStr Non-local means denoising of dynamic PET images.
title_full_unstemmed Non-local means denoising of dynamic PET images.
title_sort non-local means denoising of dynamic pet images.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description <h4>Objective</h4>Dynamic positron emission tomography (PET), which reveals information about both the spatial distribution and temporal kinetics of a radiotracer, enables quantitative interpretation of PET data. Model-based interpretation of dynamic PET images by means of parametric fitting, however, is often a challenging task due to high levels of noise, thus necessitating a denoising step. The objective of this paper is to develop and characterize a denoising framework for dynamic PET based on non-local means (NLM).<h4>Theory</h4>NLM denoising computes weighted averages of voxel intensities assigning larger weights to voxels that are similar to a given voxel in terms of their local neighborhoods or patches. We introduce three key modifications to tailor the original NLM framework to dynamic PET. Firstly, we derive similarities from less noisy later time points in a typical PET acquisition to denoise the entire time series. Secondly, we use spatiotemporal patches for robust similarity computation. Finally, we use a spatially varying smoothing parameter based on a local variance approximation over each spatiotemporal patch.<h4>Methods</h4>To assess the performance of our denoising technique, we performed a realistic simulation on a dynamic digital phantom based on the Digimouse atlas. For experimental validation, we denoised [Formula: see text] PET images from a mouse study and a hepatocellular carcinoma patient study. We compared the performance of NLM denoising with four other denoising approaches - Gaussian filtering, PCA, HYPR, and conventional NLM based on spatial patches.<h4>Results</h4>The simulation study revealed significant improvement in bias-variance performance achieved using our NLM technique relative to all the other methods. The experimental data analysis revealed that our technique leads to clear improvement in contrast-to-noise ratio in Patlak parametric images generated from denoised preclinical and clinical dynamic images, indicating its ability to preserve image contrast and high intensity details while lowering the background noise variance.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/24339921/?tool=EBI
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AT richardmleahy nonlocalmeansdenoisingofdynamicpetimages
AT quanzhengli nonlocalmeansdenoisingofdynamicpetimages
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