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q-Space Upsampling Using x-q Space Regularization

机译:使用x-q空间正则化的q-空间上采样

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Acquisition time in diffusion MRI increases with the number of diffusion-weighted images that need to be acquired. Particularly in clinical settings, scan time is limited and only a sparse coverage of the vast q-space is possible. In this paper, we show how non-local self-similar information in the x-q space of diffusion MRI data can be harnessed for q-space upsampling. More specifically, we establish the relationships between signal measurements in x-q space using a patch matching mechanism that caters to unstructured data. We then encode these relationships in a graph and use it to regularize an inverse problem associated with recovering a high q-space resolution dataset from its low-resolution counterpart. Experimental results indicate that the high-resolution datasets reconstructed using the proposed method exhibit greater quality, both quantitatively and qualitatively, than those obtained using conventional methods, such as interpolation using spherical radial basis functions (SRBFs).
机译:扩散MRI中的采集时间随需要采集的扩散加权图像的数量而增加。特别是在临床环境中,扫描时间有限,并且只有稀疏覆盖广阔的q空间是可能的。在本文中,我们展示了如何利用扩散MRI数据的x-q空间中的非局部自相似信息进行q空间上采样。更具体地说,我们使用迎合非结构化数据的补丁匹配机制在x-q空间中建立信号测量之间的关系。然后,我们将这些关系编码在图形中,并使用它来规范与从低分辨率对应项中恢复高q空间分辨率数据集相关的反问题。实验结果表明,与使用常规方法(例如,使用球面径向基函数(SRBF)进行插值)获得的数据集相比,使用本方法重建的高分辨率数据集在数量和质量上均表现出更高的质量。

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