Fraunhofer Institute for Medical Image Computing MEVIS, Bremen, Germany.
Fraunhofer Institute for Medical Image Computing MEVIS, Bremen, Germany.
Neuroimage. 2017 Apr 1;149:1-14. doi: 10.1016/j.neuroimage.2016.12.055. Epub 2016 Dec 21.
Subject head motion is a major challenge in diffusion-weighted imaging, which requires a precise alignment of images from different time points to allow a reliable quantification of diffusion parameters within each voxel. The technique requires long measurement times, making it highly sensitive to long-term subject motion, even when head restraint is used. Current methods of data analysis rely on retrospective motion correction, but there are potential benefits to using prospective motion correction, in which motion is tracked and compensated for during data acquisition. This technique is regularly used to enhance image quality in blood-oxygen-level dependent (BOLD) imaging, but its application to diffusion-weighted imaging has been limited by the contrast variation between images acquired with different diffusion-gradient directions. This paper describes a novel approach to this topic that exploits the rotational invariance of the trace of the diffusion tensor to reduce the effect of this contrast variation, making it possible to perform a fast image registration using a least-squares cost function. This results in an image-based motion detection algorithm that can be applied in real time during data acquisition to adapt the slice position and orientation in response to subject motion. The motion detection capabilities of the technique were evaluated in a study of ten subjects with b-values up to 3000s/mm². The resulting motion-parameter estimates were in close agreement with reference values provided by interleaved low-b-value images with a correlation coefficient of R=0.9634 for the voxel displacements measured across all subjects and b-values. The technique was also used to perform prospective motion correction on a standard clinical MRI system with b-values up to 2000s/mm². The correction was evaluated in 3 subjects using interleaved low-b-value images, retrospective image registration using the AFNI processing package and mean diffusivity histogram analysis. Compared to acquisitions without motion correction, prospective motion correction based on pseudo-trace-weighted images was found to provide a robust method for substantially reducing the level of misregistration between volumes. In most cases, misregistrations were reduced to less than 0.2mm of translation and 0.2° of rotation for an isotropic voxel size of 2mm, yielding high-quality diffusion parameter maps even in the absence of head restraint and post-acquisition image registration.
头部运动是扩散加权成像中的一个主要挑战,它需要将不同时间点的图像精确对准,以在每个体素中可靠地量化扩散参数。该技术需要长时间的测量,因此即使使用头部约束,也非常容易受到长期的头部运动的影响。目前的数据分析方法依赖于回顾性运动校正,但前瞻性运动校正具有潜在的优势,即在数据采集过程中跟踪和补偿运动。这种技术常用于增强血氧水平依赖(BOLD)成像的图像质量,但由于不同扩散梯度方向采集的图像之间对比度的变化,其在扩散加权成像中的应用受到限制。本文介绍了一种新颖的方法,利用扩散张量迹的旋转不变性来减少这种对比度变化的影响,从而可以使用最小二乘代价函数进行快速图像配准。这导致了一种基于图像的运动检测算法,可以在数据采集过程中实时应用,以响应受试者运动来调整切片位置和方向。该技术的运动检测能力在一项 10 名受试者的研究中进行了评估,b 值高达 3000s/mm²。结果表明,运动参数估计与参考值非常吻合,参考值是通过对所有受试者和 b 值的体素位移进行间隔的低 b 值图像提供的,相关系数为 R=0.9634。该技术还用于在具有高达 2000s/mm² b 值的标准临床 MRI 系统上进行前瞻性运动校正。在 3 名受试者中使用间隔的低 b 值图像、使用 AFNI 处理包的回顾性图像配准和平均扩散系数直方图分析对校正进行了评估。与没有运动校正的采集相比,基于伪迹加权图像的前瞻性运动校正被发现是一种可靠的方法,可以大大减少体积之间的配准程度。在大多数情况下,即使在没有头部约束和采集后图像配准的情况下,也可以将配准错误减少到小于 0.2mm 的平移和 0.2°的旋转,对于 2mm 的各向同性体素大小,可以获得高质量的扩散参数图。