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Improved Time-Resolved MRA Using k-Space Deep Learning

机译:使用k-Space深度学习的改进的时间分辨MRA

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In dynamic contrast enhanced (DCE) MRI, temporal and spatial resolution can be improved by time-resolved angiography with interleaved stochastic trajectories (TWIST) thanks to its highly accelerated acquisitions. However, due to limited k-space samples, the periphery of the k-space data from several adjacent frames should be combined to reconstruct one temporal frame so that the temporal resolution of TWIST is limited. Furthermore, the k-space sampling patterns of TWIST imaging have been especially designed for a generalized autocalibrating partial parallel acquisition (GRAPPA) reconstruction. Therefore, the number of shared frames cannot be reduced to provide a reconstructed image with better temporal resolution. The purpose of this study is to improve the temporal resolution of TWIST using a novel k-space deep learning approach. Direct k-space interpolation is performed simultaneously for multiple coils by exploiting spatial domain redundancy and multi-coil diversity. Furthermore, the proposed method can provide the reconstructed images with various numbers of view sharing. Experimental results using in vivo TWIST data set showed the accuracy and the flexibility of the proposed method.
机译:在动态对比度增强(DCE)MRI中,由于其高度加速的采集,可以通过具有交错的随机轨迹(TWIST)的时间分辨血管造影术来改善时间和空间分辨率。然而,由于有限的k空间样本,来自几个相邻帧的k空间数据的外围应当被组合以重建一个时间帧,从而限制了TWIST的时间分辨率。此外,TWIST成像的k空间采样模式已专门设计用于广义自动校准部分并行采集(GRAPPA)重建。因此,不能减少共享帧的数量以提供具有更好的时间分辨率的重建图像。这项研究的目的是使用一种新颖的k空间深度学习方法来提高TWIST的时间分辨率。通过利用空间域冗余和多线圈分集,可以同时对多个线圈执行直接k空间内插。此外,所提出的方法可以为重建图像提供各种数量的视图共享。使用体内TWIST数据集的实验结果表明了该方法的准确性和灵活性。

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