Ma Xiaodong, Zhang Zhe, Dai Erpeng, Guo Hua
Center for Biomedical Imaging Research, Department of Biomedical Engineering, Tsinghua University, Beijing, China.
Center for Biomedical Imaging Research, Department of Biomedical Engineering, Tsinghua University, Beijing, China.
Neuroimage. 2016 Sep;138:88-99. doi: 10.1016/j.neuroimage.2016.05.079. Epub 2016 Jun 1.
In multi-shot diffusion imaging, motion induced phase variations are traditionally seen as a source of artifacts and corrected in the image domain using SENSE-based methods. This correction usually requires image echo and navigator echo to be geometrically matched. Recently, a k-space based method, realigned GRAPPA, has been proposed. It realigns data from different shots into the same k-space locations, and then synthesizes the missing data using GRAPPA algorithm. In this study, we refined the theory for GRAPPA-based method. In the revised theory, phase variations are treated as a kind of encoding, similar to coil sensitivity encoding. Based on this, the missing data can be synthesized using k-space correlations among different shots and channels. Then a compact kernel is used which only includes acquired data with significant contribution for the data synthesis, and can generate accurate weights without strict navigator size requirements. Simulation studies as well as brain and cervical spine experiments demonstrate that the proposed reconstruction method can effectively suppress artifacts caused by phase variations, and provide diffusion images with high resolution and low distortion. Compared with SENSE-based methods, the proposed method is less sensitive to mismatch between image echo and navigator echo.
在多次激发扩散成像中,运动引起的相位变化传统上被视为伪影来源,并在图像域中使用基于敏感性编码(SENSE)的方法进行校正。这种校正通常要求图像回波和导航回波在几何上匹配。最近,一种基于k空间的方法——重新对齐的广义自校准部分并行采集(GRAPPA)被提出。它将来自不同激发的数据重新对齐到相同的k空间位置,然后使用GRAPPA算法合成缺失的数据。在本研究中,我们完善了基于GRAPPA方法的理论。在修订后的理论中,相位变化被视为一种编码,类似于线圈灵敏度编码。基于此,可以利用不同激发和通道之间的k空间相关性来合成缺失的数据。然后使用一个紧凑内核,该内核仅包括对数据合成有显著贡献的采集数据,并且无需严格的导航器大小要求即可生成准确的权重。模拟研究以及脑部和颈椎实验表明,所提出的重建方法可以有效抑制由相位变化引起的伪影,并提供高分辨率和低失真的扩散图像。与基于SENSE的方法相比,所提出的方法对图像回波和导航回波之间的失配不太敏感。