Oscar Dabrowski, Jean-Luc Falcone, Antoine Klauser, Julien Songeon, Michel Kocher, Bastien Chopard, Francois Lazeyras, Sebastien Courvoisier
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引用次数: 0
摘要
核磁共振成像是一种广泛应用的无创医学成像模式,对患者的运动非常敏感。尽管多年来进行了许多尝试,但运动校正仍是一个难题,没有适用于所有情况的通用方法。我们提出了一种运动估计和校正的回顾性方法,以解决平面内刚体运动的问题,适用于临床上经常使用的经典二维脑部自旋回波扫描。由于 k 空间的顺序采集,运动伪影被很好地定位。该方法利用深度神经网络的强大功能来估计 k 空间中的运动参数,并使用基于模型的方法来恢复退化图像,以避免出现 "幻觉"。该方法的显著优点是能够估算高空间频率下的运动,而无需无运动参照物。该方法适用于整个 k 空间动态范围,受高次谐波较低信噪比的影响较小。作为概念验证,我们提供了基于 43 个不同受试者的无运动扫描的 600k 运动模拟的监督学习训练模型。通过模拟和活体测试了泛化性能。对运动参数估计和图像重建进行了定性和定量评估。实验结果表明,我们的方法能够在模拟数据和体内采集中获得良好的泛化性能。我们在 https://gitlab.unige.ch/Oscar.Dabrowski/sismik_mri/ 上提供了 Python 实现。
SISMIK for brain MRI: Deep-learning-based motion estimation and model-based motion correction in k-space.
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/.