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Auteurs principaux: Dabrowski, Oscar, Falcone, Jean-Luc, Klauser, Antoine, Songeon, Julien, Kocher, Michel, Chopard, Bastien, Lazeyras, François, Courvoisier, Sébastien
Format: Preprint
Publié: 2023
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Accès en ligne:https://arxiv.org/abs/2312.13220
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author Dabrowski, Oscar
Falcone, Jean-Luc
Klauser, Antoine
Songeon, Julien
Kocher, Michel
Chopard, Bastien
Lazeyras, François
Courvoisier, Sébastien
author_facet Dabrowski, Oscar
Falcone, Jean-Luc
Klauser, Antoine
Songeon, Julien
Kocher, Michel
Chopard, Bastien
Lazeyras, François
Courvoisier, Sébastien
contents MRI, a widespread non-invasive medical imaging modality, is highly sensitive to patient motion. Despite many attempts over the years, motion correction remains a difficult problem and there is no general method applicable to all situations. We propose a retrospective method for motion estimation and correction to tackle the problem of in-plane rigid-body motion, apt for classical 2D Spin-Echo scans of the brain, which are regularly used in clinical practice. Due to the sequential acquisition of k-space, motion artifacts are well localized. The method leverages the power of deep neural networks to estimate motion parameters in k-space and uses a model-based approach to restore degraded images to avoid ''hallucinations''. Notable advantages are its ability to estimate motion occurring in high spatial frequencies without the need of a motion-free reference. The proposed method operates on the whole k-space dynamic range and is moderately affected by the lower SNR of higher harmonics. As a proof of concept, we provide models trained using supervised learning on 600k motion simulations based on motion-free scans of 43 different subjects. Generalization performance was tested with simulations as well as in-vivo. Qualitative and quantitative evaluations are presented for motion parameter estimations and image reconstruction. Experimental results show that our approach is able to obtain good generalization performance on simulated data and in-vivo acquisitions. We provide a Python implementation at https://gitlab.unige.ch/Oscar.Dabrowski/sismik_mri/.
format Preprint
id arxiv_https___arxiv_org_abs_2312_13220
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle SISMIK for brain MRI: Deep-learning-based motion estimation and model-based motion correction in k-space
Dabrowski, Oscar
Falcone, Jean-Luc
Klauser, Antoine
Songeon, Julien
Kocher, Michel
Chopard, Bastien
Lazeyras, François
Courvoisier, Sébastien
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
MRI, a widespread non-invasive medical imaging modality, is highly sensitive to patient motion. Despite many attempts over the years, motion correction remains a difficult problem and there is no general method applicable to all situations. We propose a retrospective method for motion estimation and correction to tackle the problem of in-plane rigid-body motion, apt for classical 2D Spin-Echo scans of the brain, which are regularly used in clinical practice. Due to the sequential acquisition of k-space, motion artifacts are well localized. The method leverages the power of deep neural networks to estimate motion parameters in k-space and uses a model-based approach to restore degraded images to avoid ''hallucinations''. Notable advantages are its ability to estimate motion occurring in high spatial frequencies without the need of a motion-free reference. The proposed method operates on the whole k-space dynamic range and is moderately affected by the lower SNR of higher harmonics. As a proof of concept, we provide models trained using supervised learning on 600k motion simulations based on motion-free scans of 43 different subjects. Generalization performance was tested with simulations as well as in-vivo. Qualitative and quantitative evaluations are presented for motion parameter estimations and image reconstruction. Experimental results show that our approach is able to obtain good generalization performance on simulated data and in-vivo acquisitions. We provide a Python implementation at https://gitlab.unige.ch/Oscar.Dabrowski/sismik_mri/.
title SISMIK for brain MRI: Deep-learning-based motion estimation and model-based motion correction in k-space
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2312.13220