论文标题

FSE补偿运动校正MRI使用数据驱动方法

FSE Compensated Motion Correction for MRI Using Data Driven Methods

论文作者

Levac, Brett, Kumar, Sidharth, Kardonik, Sofia, Tamir, Jonathan I.

论文摘要

磁共振成像(MRI)是一种广泛使用的医学成像模态,具有巨大的软组织对比,而无需电离辐射,但不幸的是,收购时间很长。长时间的扫描时间会导致运动伪影,例如由于散装患者运动,例如头部运动和心脏或肺部产生的周期性运动。运动伪像可以降低图像质量,在某些情况下会使扫描非诊断。为了解决这个问题,已经引入了前瞻性和回顾性运动校正技术。最近,已经提出了使用深神经网络的数据驱动方法。由于大量公开可用的MRI数据集基于快速自旋回声(FSE)序列,因此将其用于训练的方法应包含正确的FSE采集动力学。不幸的是,在模拟训练数据时,许多方法无法通过忽略K空间线的时间顺序的影响以及忽略整个FSE ECHO ECHO列车的信号衰减来产生准确的运动腐败图像。在这项工作中,我们强调了这一结果,并演示了一种训练方法,该方法通过包括样品订购和信号衰减动力学,正确模拟具有更高保真度的FSE序列的数据采集过程。通过数值实验,我们表明,对FSE采集的核算会导致推理过程中更好的运动校正性能。

Magnetic Resonance Imaging (MRI) is a widely used medical imaging modality boasting great soft tissue contrast without ionizing radiation, but unfortunately suffers from long acquisition times. Long scan times can lead to motion artifacts, for example due to bulk patient motion such as head movement and periodic motion produced by the heart or lungs. Motion artifacts can degrade image quality and in some cases render the scans nondiagnostic. To combat this problem, prospective and retrospective motion correction techniques have been introduced. More recently, data driven methods using deep neural networks have been proposed. As a large number of publicly available MRI datasets are based on Fast Spin Echo (FSE) sequences, methods that use them for training should incorporate the correct FSE acquisition dynamics. Unfortunately, when simulating training data, many approaches fail to generate accurate motion-corrupt images by neglecting the effects of the temporal ordering of the k-space lines as well as neglecting the signal decay throughout the FSE echo train. In this work, we highlight this consequence and demonstrate a training method which correctly simulates the data acquisition process of FSE sequences with higher fidelity by including sample ordering and signal decay dynamics. Through numerical experiments, we show that accounting for the FSE acquisition leads to better motion correction performance during inference.

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