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Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning

OBJECTIVES: Multiple b-value gas diffusion-weighted MRI (DW-MRI) enables non-invasive and quantitative assessment of lung morphometry, but its long acquisition time is not well-tolerated by patients. We aimed to accelerate multiple b-value gas DW-MRI for lung morphometry using deep learning. METHODS...

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Autores principales: Duan, Caohui, Deng, He, Xiao, Sa, Xie, Junshuai, Li, Haidong, Zhao, Xiuchao, Han, Dongshan, Sun, Xianping, Lou, Xin, Ye, Chaohui, Zhou, Xin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8276538/
https://www.ncbi.nlm.nih.gov/pubmed/34255160
http://dx.doi.org/10.1007/s00330-021-08126-y
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author Duan, Caohui
Deng, He
Xiao, Sa
Xie, Junshuai
Li, Haidong
Zhao, Xiuchao
Han, Dongshan
Sun, Xianping
Lou, Xin
Ye, Chaohui
Zhou, Xin
author_facet Duan, Caohui
Deng, He
Xiao, Sa
Xie, Junshuai
Li, Haidong
Zhao, Xiuchao
Han, Dongshan
Sun, Xianping
Lou, Xin
Ye, Chaohui
Zhou, Xin
author_sort Duan, Caohui
collection PubMed
description OBJECTIVES: Multiple b-value gas diffusion-weighted MRI (DW-MRI) enables non-invasive and quantitative assessment of lung morphometry, but its long acquisition time is not well-tolerated by patients. We aimed to accelerate multiple b-value gas DW-MRI for lung morphometry using deep learning. METHODS: A deep cascade of residual dense network (DC-RDN) was developed to reconstruct high-quality DW images from highly undersampled k-space data. Hyperpolarized (129)Xe lung ventilation images were acquired from 101 participants and were retrospectively collected to generate synthetic DW-MRI data to train the DC-RDN. Afterwards, the performance of the DC-RDN was evaluated on retrospectively and prospectively undersampled multiple b-value (129)Xe MRI datasets. RESULTS: Each slice with size of 64 × 64 × 5 could be reconstructed within 7.2 ms. For the retrospective test data, the DC-RDN showed significant improvement on all quantitative metrics compared with the conventional reconstruction methods (p < 0.05). The apparent diffusion coefficient (ADC) and morphometry parameters were not significantly different between the fully sampled and DC-RDN reconstructed images (p > 0.05). For the prospectively accelerated acquisition, the required breath-holding time was reduced from 17.8 to 4.7 s with an acceleration factor of 4. Meanwhile, the prospectively reconstructed results showed good agreement with the fully sampled images, with a mean difference of −0.72% and −0.74% regarding global mean ADC and mean linear intercept (L(m)) values. CONCLUSIONS: DC-RDN is effective in accelerating multiple b-value gas DW-MRI while maintaining accurate estimation of lung microstructural morphometry, facilitating the clinical potential of studying lung diseases with hyperpolarized DW-MRI. KEY POINTS: • The deep cascade of residual dense network allowed fast and high-quality reconstruction of multiple b-value gas diffusion-weighted MRI at an acceleration factor of 4. • The apparent diffusion coefficient and morphometry parameters were not significantly different between the fully sampled images and the reconstructed results (p > 0.05). • The required breath-holding time was reduced from 17.8 to 4.7 s and each slice with size of 64 × 64 × 5 could be reconstructed within 7.2 ms. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00330-021-08126-y.
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spelling pubmed-82765382021-07-14 Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning Duan, Caohui Deng, He Xiao, Sa Xie, Junshuai Li, Haidong Zhao, Xiuchao Han, Dongshan Sun, Xianping Lou, Xin Ye, Chaohui Zhou, Xin Eur Radiol Imaging Informatics and Artificial Intelligence OBJECTIVES: Multiple b-value gas diffusion-weighted MRI (DW-MRI) enables non-invasive and quantitative assessment of lung morphometry, but its long acquisition time is not well-tolerated by patients. We aimed to accelerate multiple b-value gas DW-MRI for lung morphometry using deep learning. METHODS: A deep cascade of residual dense network (DC-RDN) was developed to reconstruct high-quality DW images from highly undersampled k-space data. Hyperpolarized (129)Xe lung ventilation images were acquired from 101 participants and were retrospectively collected to generate synthetic DW-MRI data to train the DC-RDN. Afterwards, the performance of the DC-RDN was evaluated on retrospectively and prospectively undersampled multiple b-value (129)Xe MRI datasets. RESULTS: Each slice with size of 64 × 64 × 5 could be reconstructed within 7.2 ms. For the retrospective test data, the DC-RDN showed significant improvement on all quantitative metrics compared with the conventional reconstruction methods (p < 0.05). The apparent diffusion coefficient (ADC) and morphometry parameters were not significantly different between the fully sampled and DC-RDN reconstructed images (p > 0.05). For the prospectively accelerated acquisition, the required breath-holding time was reduced from 17.8 to 4.7 s with an acceleration factor of 4. Meanwhile, the prospectively reconstructed results showed good agreement with the fully sampled images, with a mean difference of −0.72% and −0.74% regarding global mean ADC and mean linear intercept (L(m)) values. CONCLUSIONS: DC-RDN is effective in accelerating multiple b-value gas DW-MRI while maintaining accurate estimation of lung microstructural morphometry, facilitating the clinical potential of studying lung diseases with hyperpolarized DW-MRI. KEY POINTS: • The deep cascade of residual dense network allowed fast and high-quality reconstruction of multiple b-value gas diffusion-weighted MRI at an acceleration factor of 4. • The apparent diffusion coefficient and morphometry parameters were not significantly different between the fully sampled images and the reconstructed results (p > 0.05). • The required breath-holding time was reduced from 17.8 to 4.7 s and each slice with size of 64 × 64 × 5 could be reconstructed within 7.2 ms. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00330-021-08126-y. Springer Berlin Heidelberg 2021-07-13 2022 /pmc/articles/PMC8276538/ /pubmed/34255160 http://dx.doi.org/10.1007/s00330-021-08126-y Text en © European Society of Radiology 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Imaging Informatics and Artificial Intelligence
Duan, Caohui
Deng, He
Xiao, Sa
Xie, Junshuai
Li, Haidong
Zhao, Xiuchao
Han, Dongshan
Sun, Xianping
Lou, Xin
Ye, Chaohui
Zhou, Xin
Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning
title Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning
title_full Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning
title_fullStr Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning
title_full_unstemmed Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning
title_short Accelerate gas diffusion-weighted MRI for lung morphometry with deep learning
title_sort accelerate gas diffusion-weighted mri for lung morphometry with deep learning
topic Imaging Informatics and Artificial Intelligence
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8276538/
https://www.ncbi.nlm.nih.gov/pubmed/34255160
http://dx.doi.org/10.1007/s00330-021-08126-y
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