Shirzadi Zahra, Crane David E, Robertson Andrew D, Maralani Pejman J, Aviv Richard I, Chappell Michael A, Goldstein Benjamin I, Black Sandra E, MacIntosh Bradley J
Department of Medical Biophysics, University of Toronto, Toronto, Ontario, Canada.
HSF Canadian Partnership for Stroke Recovery, Sunnybrook Research Institute, Toronto, Ontario, Canada.
J Magn Reson Imaging. 2015 Nov;42(5):1377-85. doi: 10.1002/jmri.24918. Epub 2015 Apr 15.
To evaluate the impact of rejecting intermediate cerebral blood flow (CBF) images that are adversely affected by head motion during an arterial spin labeling (ASL) acquisition.
Eighty participants were recruited, representing a wide age range (14-90 years) and heterogeneous cerebrovascular health conditions including bipolar disorder, chronic stroke, and moderate to severe white matter hyperintensities of presumed vascular origin. Pseudocontinuous ASL and T1 -weigthed anatomical images were acquired on a 3T scanner. ASL intermediate CBF images were included based on their contribution to the mean estimate, with the goal to maximize CBF detectability in gray matter (GM). Simulations were conducted to evaluate the performance of the proposed optimization procedure relative to other ASL postprocessing approaches. Clinical CBF images were also assessed visually by two experienced neuroradiologists.
Optimized CBF images (CBFopt ) had significantly greater agreement with a synthetic ground truth CBF image and greater CBF detectability relative to the other ASL analysis methods (P < 0.05). Moreover, empirical CBFopt images showed a significantly improved signal-to-noise ratio relative to CBF images obtained from other postprocessing approaches (mean: 12.6%; range 1% to 56%; P < 0.001), and this improvement was age-dependent (P = 0.03). Differences between CBF images from different analysis procedures were not perceptible by visual inspection, while there was a moderate agreement between the ratings (κ = 0.44, P < 0.001).
This study developed an automated head motion threshold-free procedure to improve the detection of CBF in GM. The improvement in CBF image quality was larger when considering older participants.
评估在动脉自旋标记(ASL)采集过程中,剔除受头部运动不利影响的大脑中血流(CBF)图像所产生的影响。
招募了80名参与者,年龄范围广泛(14 - 90岁),脑血管健康状况各异,包括双相情感障碍、慢性中风以及推测为血管源性的中度至重度白质高信号。在3T扫描仪上采集伪连续ASL和T1加权解剖图像。根据ASL中间CBF图像对平均估计值的贡献将其纳入,目标是最大化灰质(GM)中CBF的可检测性。进行模拟以评估所提出的优化程序相对于其他ASL后处理方法的性能。两名经验丰富的神经放射科医生也对临床CBF图像进行了视觉评估。
优化后的CBF图像(CBFopt)与合成的地面真值CBF图像具有显著更高的一致性,并且相对于其他ASL分析方法具有更高的CBF可检测性(P < 0.05)。此外,相对于从其他后处理方法获得的CBF图像,经验性CBFopt图像的信噪比显著提高(平均值:12.6%;范围1%至56%;P < 0.001),并且这种改善与年龄相关(P = 0.03)。不同分析程序的CBF图像之间的差异通过视觉检查无法察觉,而评分之间存在中等程度的一致性(κ = 0.44,P < 0.001)。
本研究开发了一种自动的无头部运动阈值程序,以改善GM中CBF的检测。考虑年龄较大的参与者时,CBF图像质量的改善更大。