Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint

Background Magnetic resonance fingerprinting (MRF) is a method to speed up acquisition of quantitative MRI data. However, MRF does not usually produce contrast‐weighted images that are required by radiologists, limiting reachable total scan time improvement. Contrast synthesis from MRF could signifi...

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Published in:Journal of Magnetic Resonance Imaging
Main Authors: Nykänen, Olli, Nevalainen, Mika, Casula, Victor, Isosalo, Antti, Inkinen, Satu I., Nikki, Marko, Lattanzi, Riccardo, Cloos, Martijn A., Nissi, Mikko J., Nieminen, Miika T.
Other Authors: Academy of Finland, Jane ja Aatos Erkon Säätiö, National Institutes of Health
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2022
Subjects:
Online Access:http://dx.doi.org/10.1002/jmri.28573
https://onlinelibrary.wiley.com/doi/pdf/10.1002/jmri.28573
https://onlinelibrary.wiley.com/doi/full-xml/10.1002/jmri.28573
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spelling crwiley:10.1002/jmri.28573 2024-06-02T08:12:03+00:00 Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint Nykänen, Olli Nevalainen, Mika Casula, Victor Isosalo, Antti Inkinen, Satu I. Nikki, Marko Lattanzi, Riccardo Cloos, Martijn A. Nissi, Mikko J. Nieminen, Miika T. Academy of Finland Jane ja Aatos Erkon Säätiö National Institutes of Health 2022 http://dx.doi.org/10.1002/jmri.28573 https://onlinelibrary.wiley.com/doi/pdf/10.1002/jmri.28573 https://onlinelibrary.wiley.com/doi/full-xml/10.1002/jmri.28573 en eng Wiley http://creativecommons.org/licenses/by/4.0/ Journal of Magnetic Resonance Imaging volume 58, issue 2, page 559-568 ISSN 1053-1807 1522-2586 journal-article 2022 crwiley https://doi.org/10.1002/jmri.28573 2024-05-03T11:12:34Z Background Magnetic resonance fingerprinting (MRF) is a method to speed up acquisition of quantitative MRI data. However, MRF does not usually produce contrast‐weighted images that are required by radiologists, limiting reachable total scan time improvement. Contrast synthesis from MRF could significantly decrease the imaging time. Purpose To improve clinical utility of MRF by synthesizing contrast‐weighted MR images from the quantitative data provided by MRF, using U‐nets that were trained for the synthesis task utilizing L1‐ and perceptual loss functions, and their combinations. Study Type Retrospective. Population Knee joint MRI data from 184 subjects from Northern Finland 1986 Birth Cohort (ages 33–35, gender distribution not available). Field Strength and Sequence A 3 T, multislice‐MRF, proton density (PD)‐weighted 3D‐SPACE (sampling perfection with application optimized contrasts using different flip angle evolution), fat‐saturated T2‐weighted 3D‐space, water‐excited double echo steady state (DESS). Assessment Data were divided into training, validation, test, and radiologist's assessment sets in the following way: 136 subjects to training, 3 for validation, 3 for testing, and 42 for radiologist's assessment. The synthetic and target images were evaluated using 5‐point Likert scale by two musculoskeletal radiologists blinded and with quantitative error metrics. Statistical Tests Friedman's test accompanied with post hoc Wilcoxon signed‐rank test and intraclass correlation coefficient. The statistical cutoff P <0.05 adjusted by Bonferroni correction as necessary was utilized. Results The networks trained in the study could synthesize conventional images with high image quality (Likert scores 3–4 on a 5‐point scale). Qualitatively, the best synthetic images were produced with combination of L1‐ and perceptual loss functions and perceptual loss alone, while L1‐loss alone led to significantly poorer image quality (Likert scores below 3). The interreader and intrareader agreement were high (0.80 and 0.92, ... Article in Journal/Newspaper Northern Finland Wiley Online Library Journal of Magnetic Resonance Imaging 58 2 559 568
institution Open Polar
collection Wiley Online Library
op_collection_id crwiley
language English
description Background Magnetic resonance fingerprinting (MRF) is a method to speed up acquisition of quantitative MRI data. However, MRF does not usually produce contrast‐weighted images that are required by radiologists, limiting reachable total scan time improvement. Contrast synthesis from MRF could significantly decrease the imaging time. Purpose To improve clinical utility of MRF by synthesizing contrast‐weighted MR images from the quantitative data provided by MRF, using U‐nets that were trained for the synthesis task utilizing L1‐ and perceptual loss functions, and their combinations. Study Type Retrospective. Population Knee joint MRI data from 184 subjects from Northern Finland 1986 Birth Cohort (ages 33–35, gender distribution not available). Field Strength and Sequence A 3 T, multislice‐MRF, proton density (PD)‐weighted 3D‐SPACE (sampling perfection with application optimized contrasts using different flip angle evolution), fat‐saturated T2‐weighted 3D‐space, water‐excited double echo steady state (DESS). Assessment Data were divided into training, validation, test, and radiologist's assessment sets in the following way: 136 subjects to training, 3 for validation, 3 for testing, and 42 for radiologist's assessment. The synthetic and target images were evaluated using 5‐point Likert scale by two musculoskeletal radiologists blinded and with quantitative error metrics. Statistical Tests Friedman's test accompanied with post hoc Wilcoxon signed‐rank test and intraclass correlation coefficient. The statistical cutoff P <0.05 adjusted by Bonferroni correction as necessary was utilized. Results The networks trained in the study could synthesize conventional images with high image quality (Likert scores 3–4 on a 5‐point scale). Qualitatively, the best synthetic images were produced with combination of L1‐ and perceptual loss functions and perceptual loss alone, while L1‐loss alone led to significantly poorer image quality (Likert scores below 3). The interreader and intrareader agreement were high (0.80 and 0.92, ...
author2 Academy of Finland
Jane ja Aatos Erkon Säätiö
National Institutes of Health
format Article in Journal/Newspaper
author Nykänen, Olli
Nevalainen, Mika
Casula, Victor
Isosalo, Antti
Inkinen, Satu I.
Nikki, Marko
Lattanzi, Riccardo
Cloos, Martijn A.
Nissi, Mikko J.
Nieminen, Miika T.
spellingShingle Nykänen, Olli
Nevalainen, Mika
Casula, Victor
Isosalo, Antti
Inkinen, Satu I.
Nikki, Marko
Lattanzi, Riccardo
Cloos, Martijn A.
Nissi, Mikko J.
Nieminen, Miika T.
Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint
author_facet Nykänen, Olli
Nevalainen, Mika
Casula, Victor
Isosalo, Antti
Inkinen, Satu I.
Nikki, Marko
Lattanzi, Riccardo
Cloos, Martijn A.
Nissi, Mikko J.
Nieminen, Miika T.
author_sort Nykänen, Olli
title Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint
title_short Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint
title_full Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint
title_fullStr Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint
title_full_unstemmed Deep‐Learning‐Based Contrast Synthesis From MRF Parameter Maps in the Knee Joint
title_sort deep‐learning‐based contrast synthesis from mrf parameter maps in the knee joint
publisher Wiley
publishDate 2022
url http://dx.doi.org/10.1002/jmri.28573
https://onlinelibrary.wiley.com/doi/pdf/10.1002/jmri.28573
https://onlinelibrary.wiley.com/doi/full-xml/10.1002/jmri.28573
genre Northern Finland
genre_facet Northern Finland
op_source Journal of Magnetic Resonance Imaging
volume 58, issue 2, page 559-568
ISSN 1053-1807 1522-2586
op_rights http://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.1002/jmri.28573
container_title Journal of Magnetic Resonance Imaging
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