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Deep-learning based motion-corrected image reconstruction in 4D magnetic resonance imaging of the body trunk

机译:基于深学习的体育校正图像重建在躯干的4D磁共振成像中

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Respiratory and cardiac motion can cause artifacts in magnetic resonance imaging of the body trunk if patients cannot hold their breath or triggered acquisitions are not practical. Retrospective correction strategies usually cope with motion by fast imaging sequences with integrated motion tracking under free-movement conditions. These acquisitions perform sub-Nyquist sampling and retrospectively bin the data into the respective motion states, yielding subsampled and motionresolved k-space data. The motion-resolved k-spaces are linked to each other by non-rigid deformation fields. The accurate estimation of such motion is thus an important task in the successful correction of respiratory and cardiac motion. Usually this problem is formulated in image space via diffusion, parametric-spline or optical flow methods. Image-based registration can be however impaired by aliasing artifacts or by estimation from low-resolution images. Subsequently, any motion-corrected reconstruction can be biased by errors in the deformation fields. In this work, we propose a novel deep-learning based motion-corrected 4D (3D spatial + time) image reconstruction which combines a non-rigid registration network and a(3+1)D reconstruction network. Non-rigid motion is estimated directly in k-space based on an optical flow idea and incorporated into the reconstruction network. The proposed method is evaluated on in-vivo 4D motionresolved magnetic resonance images of patients with suspected liver or lung metastases and healthy subjects.
机译:如果患者不能持有呼吸或触发的收购,呼吸和心动运动可能导致体躯干的磁共振成像中的伪影是不实际的。回顾性校正策略通常通过在自由运动条件下具有集成运动跟踪的快速成像序列来应对运动。这些获取执行子奈奎斯特采样,并回顾性地将数据置于各个运动状态,产生限定和MotionResolved k空间数据。运动分辨的k空间通过非刚性变形字段彼此连接。因此,这种运动的准确估计是成功校正呼吸和心动运动的重要任务。通常,该问题通过扩散,参数样条或光学流动方法在图像空间中配制在图像空间中。然而,基于图像的登记可以通过叠加伪像或通过低分辨率图像估计来损害。随后,任何运动校正的重建都可以通过变形字段中的误差偏置。在这项工作中,我们提出了一种新的基于深度学习的运动校正的4D(3D空间+时间)图像重建,其结合了非刚性登记网络和(3 + 1)D重建网络。基于光流思想并结合到重建网络中,直接在K空间中直接估计非刚性运动。所提出的方法在涉嫌肝脏或肺转移和健康受试者的患者的vivo 4d MotientResolved磁共振图像上进行评估。

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