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Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images

Despite the utility of tumour characterisation using quantitative parameter maps from multi-b-value diffusion-weighted MRI (DWI), clinicians often prefer the use of the image with highest diffusion-weighting (b-value), for instance for defining regions of interest (ROIs). However, these images are t...

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Autores principales: Gurney-Champion, Oliver J, Collins, David J, Wetscherek, Andreas, Rata, Mihaela, Klaassen, Remy, van Laarhoven, Hanneke W M, Harrington, Kevin J, Oelfke, Uwe, Orton, Matthew R
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IOP Publishing 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7655121/
https://www.ncbi.nlm.nih.gov/pubmed/30965296
http://dx.doi.org/10.1088/1361-6560/ab1786
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author Gurney-Champion, Oliver J
Collins, David J
Wetscherek, Andreas
Rata, Mihaela
Klaassen, Remy
van Laarhoven, Hanneke W M
Harrington, Kevin J
Oelfke, Uwe
Orton, Matthew R
author_facet Gurney-Champion, Oliver J
Collins, David J
Wetscherek, Andreas
Rata, Mihaela
Klaassen, Remy
van Laarhoven, Hanneke W M
Harrington, Kevin J
Oelfke, Uwe
Orton, Matthew R
author_sort Gurney-Champion, Oliver J
collection PubMed
description Despite the utility of tumour characterisation using quantitative parameter maps from multi-b-value diffusion-weighted MRI (DWI), clinicians often prefer the use of the image with highest diffusion-weighting (b-value), for instance for defining regions of interest (ROIs). However, these images are typically degraded by noise, as they do not utilize the information from the full acquisition. We present a principal component analysis (PCA) approach for model-free denoising of DWI data. PCA-denoising was compared to synthetic MRI, where a diffusion model is fitted for each voxel and a denoised image at a given b-value is generated from the model fit. A quantitative comparison of systematic and random errors was performed on data simulated using several diffusion models (mono-exponential, bi-exponential, stretched-exponential and kurtosis). A qualitative visual comparison was also performed for in vivo images in six healthy volunteers and three pancreatic cancer patients. In simulations, the reduction in random errors from PCA-denoising was substantial (up to 55%) and similar to synthetic MRI (up to 53%). Model-based synthetic MRI denoising resulted in substantial (up to 29% of signal) systematic errors, whereas PCA-denoising was able to denoise without introducing systematic errors (less than 2%). In vivo, the signal-to-noise ratio (SNR) and sharpness of PCA-denoised images were superior to synthetic MRI, resulting in clearer tumour boundaries. In the presence of motion, PCA-denoising did not cause image blurring, unlike image averaging or synthetic MRI. Multi-b-value MRI can be denoised model-free with our PCA-denoising strategy that reduces noise to a level similar to synthetic MRI, but without introducing systematic errors associated with the synthetic MRI method.
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spelling pubmed-76551212020-11-12 Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images Gurney-Champion, Oliver J Collins, David J Wetscherek, Andreas Rata, Mihaela Klaassen, Remy van Laarhoven, Hanneke W M Harrington, Kevin J Oelfke, Uwe Orton, Matthew R Phys Med Biol Paper Despite the utility of tumour characterisation using quantitative parameter maps from multi-b-value diffusion-weighted MRI (DWI), clinicians often prefer the use of the image with highest diffusion-weighting (b-value), for instance for defining regions of interest (ROIs). However, these images are typically degraded by noise, as they do not utilize the information from the full acquisition. We present a principal component analysis (PCA) approach for model-free denoising of DWI data. PCA-denoising was compared to synthetic MRI, where a diffusion model is fitted for each voxel and a denoised image at a given b-value is generated from the model fit. A quantitative comparison of systematic and random errors was performed on data simulated using several diffusion models (mono-exponential, bi-exponential, stretched-exponential and kurtosis). A qualitative visual comparison was also performed for in vivo images in six healthy volunteers and three pancreatic cancer patients. In simulations, the reduction in random errors from PCA-denoising was substantial (up to 55%) and similar to synthetic MRI (up to 53%). Model-based synthetic MRI denoising resulted in substantial (up to 29% of signal) systematic errors, whereas PCA-denoising was able to denoise without introducing systematic errors (less than 2%). In vivo, the signal-to-noise ratio (SNR) and sharpness of PCA-denoised images were superior to synthetic MRI, resulting in clearer tumour boundaries. In the presence of motion, PCA-denoising did not cause image blurring, unlike image averaging or synthetic MRI. Multi-b-value MRI can be denoised model-free with our PCA-denoising strategy that reduces noise to a level similar to synthetic MRI, but without introducing systematic errors associated with the synthetic MRI method. IOP Publishing 2019-05 2019-05-16 /pmc/articles/PMC7655121/ /pubmed/30965296 http://dx.doi.org/10.1088/1361-6560/ab1786 Text en © 2019 Institute of Physics and Engineering in Medicine http://creativecommons.org/licenses/by/3.0/ Original content from this work may be used under the terms of the Creative Commons Attribution 3.0 licence (http://creativecommons.org/licenses/by/3.0) . Any further distribution of this work must maintain attribution to the author(s) and the title of the work, journal citation and DOI.
spellingShingle Paper
Gurney-Champion, Oliver J
Collins, David J
Wetscherek, Andreas
Rata, Mihaela
Klaassen, Remy
van Laarhoven, Hanneke W M
Harrington, Kevin J
Oelfke, Uwe
Orton, Matthew R
Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images
title Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images
title_full Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images
title_fullStr Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images
title_full_unstemmed Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images
title_short Principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted MR images
title_sort principal component analysis fosr fast and model-free denoising of multi b-value diffusion-weighted mr images
topic Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7655121/
https://www.ncbi.nlm.nih.gov/pubmed/30965296
http://dx.doi.org/10.1088/1361-6560/ab1786
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