Motion Compensated Unsupervised Deep Learning for 5D MRI.

Joseph Kettelkamp, Ludovica Romanin, Davide Piccini, Sarv Priya, Mathews Jacob
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Abstract

We propose an unsupervised deep learning algorithm for the motion-compensated reconstruction of 5D cardiac MRI data from 3D radial acquisitions. Ungated free-breathing 5D MRI simplifies the scan planning, improves patient comfort, and offers several clinical benefits over breath-held 2D exams, including isotropic spatial resolution and the ability to reslice the data to arbitrary views. However, the current reconstruction algorithms for 5D MRI take very long computational time, and their outcome is greatly dependent on the uniformity of the binning of the acquired data into different physiological phases. The proposed algorithm is a more data-efficient alternative to current motion-resolved reconstructions. This motion-compensated approach models the data in each cardiac/respiratory bin as Fourier samples of the deformed version of a 3D image template. The deformation maps are modeled by a convolutional neural network driven by the physiological phase information. The deformation maps and the template are then jointly estimated from the measured data. The cardiac and respiratory phases are estimated from 1D navigators using an auto-encoder. The proposed algorithm is validated on 5D bSSFP datasets acquired from two subjects.

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用于 5D MRI 的运动补偿无监督深度学习。
我们提出了一种无监督深度学习算法,用于对三维径向采集的 5D 心脏 MRI 数据进行运动补偿重建。无盖自由呼吸 5D 磁共振成像简化了扫描计划,提高了患者的舒适度,与屏住呼吸的 2D 检查相比,它具有多种临床优势,包括各向同性的空间分辨率和将数据重新切片为任意视图的能力。然而,目前的 5D MRI 重建算法需要耗费很长的计算时间,而且其结果在很大程度上取决于将获取的数据按不同生理阶段进行分档的均匀性。与目前的运动分辨重建相比,所提出的算法是一种数据效率更高的替代方案。这种运动补偿方法将每个心脏/呼吸分区的数据建模为三维图像模板变形版本的傅立叶样本。变形图由生理相位信息驱动的卷积神经网络建模。然后根据测量数据对变形图和模板进行联合估算。心脏和呼吸相位是通过自动编码器从一维导航器估算出来的。所提出的算法在两个受试者的 5D bSSFP 数据集上得到了验证。
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