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Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction

INTRODUCTION: Spatio-temporal MRI methods enable whole-brain multi-parametric mapping at ultra-fast acquisition times through efficient k-space encoding, but can have very long reconstruction times, which limit their integration into clinical practice. Deep learning (DL) is a promising approach to a...

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Autores principales: Iyer, Siddharth S., Schauman, S. Sophie, Sandino, Christopher M., Yurt, Mahmut, Cao, Xiaozhi, Liao, Congyu, Ruengchaijatuporn, Natthanan, Chatnuntawech, Itthi, Tong, Elizabeth, Setsompop, Kawin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10081201/
https://www.ncbi.nlm.nih.gov/pubmed/37034586
http://dx.doi.org/10.1101/2023.03.28.534431
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author Iyer, Siddharth S.
Schauman, S. Sophie
Sandino, Christopher M.
Yurt, Mahmut
Cao, Xiaozhi
Liao, Congyu
Ruengchaijatuporn, Natthanan
Chatnuntawech, Itthi
Tong, Elizabeth
Setsompop, Kawin
author_facet Iyer, Siddharth S.
Schauman, S. Sophie
Sandino, Christopher M.
Yurt, Mahmut
Cao, Xiaozhi
Liao, Congyu
Ruengchaijatuporn, Natthanan
Chatnuntawech, Itthi
Tong, Elizabeth
Setsompop, Kawin
author_sort Iyer, Siddharth S.
collection PubMed
description INTRODUCTION: Spatio-temporal MRI methods enable whole-brain multi-parametric mapping at ultra-fast acquisition times through efficient k-space encoding, but can have very long reconstruction times, which limit their integration into clinical practice. Deep learning (DL) is a promising approach to accelerate reconstruction, but can be computationally intensive to train and deploy due to the large dimensionality of spatio-temporal MRI. DL methods also need large training data sets and can produce results that don’t match the acquired data if data consistency is not enforced. The aim of this project is to reduce reconstruction time using DL whilst simultaneously limiting the risk of deep learning induced hallucinations, all with modest hardware requirements. METHODS: Deep Learning Initialized Compressed Sensing (Deli-CS) is proposed to reduce the reconstruction time of iterative reconstructions by “kick-starting” the iterative reconstruction with a DL generated starting point. The proposed framework is applied to volumetric multi-axis spiral projection MRF that achieves whole-brain T1 and T2 mapping at 1-mm isotropic resolution for a 2-minute acquisition. First, the traditional reconstruction is optimized from over two hours to less than 40 minutes while using more than 90% less RAM and only 4.7 GB GPU memory, by using a memory-efficient GPU implementation. The Deli-CS framework is then implemented and evaluated against the above reconstruction. RESULTS: Deli-CS achieves comparable reconstruction quality with 50% fewer iterations bringing the full reconstruction time to 20 minutes. CONCLUSION: Deli-CS reduces the reconstruction time of subspace reconstruction of volumetric spatio-temporal acquisitions by providing a warm start to the iterative reconstruction algorithm.
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spelling pubmed-100812012023-04-08 Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction Iyer, Siddharth S. Schauman, S. Sophie Sandino, Christopher M. Yurt, Mahmut Cao, Xiaozhi Liao, Congyu Ruengchaijatuporn, Natthanan Chatnuntawech, Itthi Tong, Elizabeth Setsompop, Kawin bioRxiv Article INTRODUCTION: Spatio-temporal MRI methods enable whole-brain multi-parametric mapping at ultra-fast acquisition times through efficient k-space encoding, but can have very long reconstruction times, which limit their integration into clinical practice. Deep learning (DL) is a promising approach to accelerate reconstruction, but can be computationally intensive to train and deploy due to the large dimensionality of spatio-temporal MRI. DL methods also need large training data sets and can produce results that don’t match the acquired data if data consistency is not enforced. The aim of this project is to reduce reconstruction time using DL whilst simultaneously limiting the risk of deep learning induced hallucinations, all with modest hardware requirements. METHODS: Deep Learning Initialized Compressed Sensing (Deli-CS) is proposed to reduce the reconstruction time of iterative reconstructions by “kick-starting” the iterative reconstruction with a DL generated starting point. The proposed framework is applied to volumetric multi-axis spiral projection MRF that achieves whole-brain T1 and T2 mapping at 1-mm isotropic resolution for a 2-minute acquisition. First, the traditional reconstruction is optimized from over two hours to less than 40 minutes while using more than 90% less RAM and only 4.7 GB GPU memory, by using a memory-efficient GPU implementation. The Deli-CS framework is then implemented and evaluated against the above reconstruction. RESULTS: Deli-CS achieves comparable reconstruction quality with 50% fewer iterations bringing the full reconstruction time to 20 minutes. CONCLUSION: Deli-CS reduces the reconstruction time of subspace reconstruction of volumetric spatio-temporal acquisitions by providing a warm start to the iterative reconstruction algorithm. Cold Spring Harbor Laboratory 2023-03-28 /pmc/articles/PMC10081201/ /pubmed/37034586 http://dx.doi.org/10.1101/2023.03.28.534431 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nc-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Iyer, Siddharth S.
Schauman, S. Sophie
Sandino, Christopher M.
Yurt, Mahmut
Cao, Xiaozhi
Liao, Congyu
Ruengchaijatuporn, Natthanan
Chatnuntawech, Itthi
Tong, Elizabeth
Setsompop, Kawin
Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction
title Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction
title_full Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction
title_fullStr Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction
title_full_unstemmed Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction
title_short Deep Learning Initialized Compressed Sensing (Deli-CS) in Volumetric Spatio-Temporal Subspace Reconstruction
title_sort deep learning initialized compressed sensing (deli-cs) in volumetric spatio-temporal subspace reconstruction
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10081201/
https://www.ncbi.nlm.nih.gov/pubmed/37034586
http://dx.doi.org/10.1101/2023.03.28.534431
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