Oxford Centre for Functional MRI of the Brain, University of Oxford, John Radcliffe Hospital, Headington, Oxford, United Kingdom.
Magn Reson Med. 2010 Nov;64(5):1529-39. doi: 10.1002/mrm.22524.
Vessel encoded arterial spin labeling provides a way to perform non-invasive vascular territory imaging. By uniquely encoding the blood within feeding arteries over a number of images, the territories of each can be identified. Here, a new approach for the analysis of vessel encoded arterial spin labeling data is presented. The method includes a full description of how the geometry of arteries and spatial label modulation affects the measured signal. It also incorporates an artery-based classification that considers multiple arteries in each class, explicitly permitting a voxel to be supplied by multiple arteries. The developed framework is cast within a Bayesian inference procedure allowing both flow contributions and the locations of the arteries in the labeling plane to be inferred. By using simulated data, the method was shown to provide more accurate estimates of blood contribution in areas of mixed supply, such as would be found in watershed regions, than conventional methods. It was also able to estimate the location of arteries within the labeling plane, accounting for motion between sequence prescription and acquisition. Similar performance was found for data acquired using a pseudo-continuous labeling scheme both in the neck and above the Circle of Willis.
血管内动脉自旋标记提供了一种进行非侵入性血管区域成像的方法。通过在多个图像上对供血动脉内的血液进行独特编码,可以识别每个区域的供血动脉。这里提出了一种新的血管内动脉自旋标记数据分析方法。该方法全面描述了动脉的几何形状和空间标记调制如何影响测量信号。它还包含了一种基于动脉的分类方法,该方法考虑了每个类中的多条动脉,明确允许一个体素由多条动脉供应。所开发的框架被构建在贝叶斯推理过程中,允许推断血流贡献和标记平面中动脉的位置。通过使用模拟数据,该方法在混合供血区域(如分水岭区域)中比传统方法更能准确估计血液贡献,在这些区域中会存在混合供血的情况。它还能够估计标记平面内动脉的位置,同时考虑到序列处方和采集之间的运动。在颈部和 Willis 环上方使用伪连续标记方案采集的数据也具有类似的性能。