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Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging

Chemical Exchange Saturation Transfer (CEST) magnetic resonance imaging (MRI) provides a novel method for analyzing biomolecule concentrations in tissues without exogenous contrast agents. Despite its potential, achieving a high signal-to-noise ratio (SNR) is imperative for detecting small CEST effe...

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Autores principales: Radke, Karl Ludger, Kamp, Benedikt, Adriaenssens, Vibhu, Stabinska, Julia, Gallinnis, Patrik, Wittsack, Hans-Jörg, Antoch, Gerald, Müller-Lutz, Anja
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10650582/
https://www.ncbi.nlm.nih.gov/pubmed/37958222
http://dx.doi.org/10.3390/diagnostics13213326
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author Radke, Karl Ludger
Kamp, Benedikt
Adriaenssens, Vibhu
Stabinska, Julia
Gallinnis, Patrik
Wittsack, Hans-Jörg
Antoch, Gerald
Müller-Lutz, Anja
author_facet Radke, Karl Ludger
Kamp, Benedikt
Adriaenssens, Vibhu
Stabinska, Julia
Gallinnis, Patrik
Wittsack, Hans-Jörg
Antoch, Gerald
Müller-Lutz, Anja
author_sort Radke, Karl Ludger
collection PubMed
description Chemical Exchange Saturation Transfer (CEST) magnetic resonance imaging (MRI) provides a novel method for analyzing biomolecule concentrations in tissues without exogenous contrast agents. Despite its potential, achieving a high signal-to-noise ratio (SNR) is imperative for detecting small CEST effects. Traditional metrics such as Magnetization Transfer Ratio Asymmetry (MTR(asym)) and Lorentzian analyses are vulnerable to image noise, hampering their precision in quantitative concentration estimations. Recent noise-reduction algorithms like principal component analysis (PCA), nonlocal mean filtering (NLM), and block matching combined with 3D filtering (BM3D) have shown promise, as there is a burgeoning interest in the utilization of neural networks (NNs), particularly autoencoders, for imaging denoising. This study uses the Bloch–McConnell equations, which allow for the synthetic generation of CEST images and explores NNs efficacy in denoising these images. Using synthetically generated phantoms, autoencoders were created, and their performance was compared with traditional denoising methods using various datasets. The results underscored the superior performance of NNs, notably the ResUNet architectures, in noise identification and abatement compared to analytical approaches across a wide noise gamut. This superiority was particularly pronounced at elevated noise intensities in the in vitro data. Notably, the neural architectures significantly improved the PSNR values, achieving up to 35.0, while some traditional methods struggled, especially in low-noise reduction scenarios. However, the application to the in vivo data presented challenges due to varying noise profiles. This study accentuates the potential of NNs as robust denoising tools, but their translation to clinical settings warrants further investigation.
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spelling pubmed-106505822023-10-27 Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging Radke, Karl Ludger Kamp, Benedikt Adriaenssens, Vibhu Stabinska, Julia Gallinnis, Patrik Wittsack, Hans-Jörg Antoch, Gerald Müller-Lutz, Anja Diagnostics (Basel) Article Chemical Exchange Saturation Transfer (CEST) magnetic resonance imaging (MRI) provides a novel method for analyzing biomolecule concentrations in tissues without exogenous contrast agents. Despite its potential, achieving a high signal-to-noise ratio (SNR) is imperative for detecting small CEST effects. Traditional metrics such as Magnetization Transfer Ratio Asymmetry (MTR(asym)) and Lorentzian analyses are vulnerable to image noise, hampering their precision in quantitative concentration estimations. Recent noise-reduction algorithms like principal component analysis (PCA), nonlocal mean filtering (NLM), and block matching combined with 3D filtering (BM3D) have shown promise, as there is a burgeoning interest in the utilization of neural networks (NNs), particularly autoencoders, for imaging denoising. This study uses the Bloch–McConnell equations, which allow for the synthetic generation of CEST images and explores NNs efficacy in denoising these images. Using synthetically generated phantoms, autoencoders were created, and their performance was compared with traditional denoising methods using various datasets. The results underscored the superior performance of NNs, notably the ResUNet architectures, in noise identification and abatement compared to analytical approaches across a wide noise gamut. This superiority was particularly pronounced at elevated noise intensities in the in vitro data. Notably, the neural architectures significantly improved the PSNR values, achieving up to 35.0, while some traditional methods struggled, especially in low-noise reduction scenarios. However, the application to the in vivo data presented challenges due to varying noise profiles. This study accentuates the potential of NNs as robust denoising tools, but their translation to clinical settings warrants further investigation. MDPI 2023-10-27 /pmc/articles/PMC10650582/ /pubmed/37958222 http://dx.doi.org/10.3390/diagnostics13213326 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Radke, Karl Ludger
Kamp, Benedikt
Adriaenssens, Vibhu
Stabinska, Julia
Gallinnis, Patrik
Wittsack, Hans-Jörg
Antoch, Gerald
Müller-Lutz, Anja
Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging
title Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging
title_full Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging
title_fullStr Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging
title_full_unstemmed Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging
title_short Deep Learning-Based Denoising of CEST MR Data: A Feasibility Study on Applying Synthetic Phantoms in Medical Imaging
title_sort deep learning-based denoising of cest mr data: a feasibility study on applying synthetic phantoms in medical imaging
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10650582/
https://www.ncbi.nlm.nih.gov/pubmed/37958222
http://dx.doi.org/10.3390/diagnostics13213326
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