Fondazione CNR Regione Toscana G. Monasterio, Via Moruzzi, 1, 56124 Pisa, Italy.
MAGMA. 2013 Jun;26(3):325-35. doi: 10.1007/s10334-012-0337-4. Epub 2012 Sep 19.
The objective of this study was to develop an automatic image registration technique capable of compensating for kidney motion in renal perfusion MRI, to assess the effect of renal artery stenosis on the kidney parenchyma.
Images from 20 patients scheduled for a renal perfusion study were acquired using a 1.5 T scanner. A free-breathing 3D-FSPGR sequence was used to acquire coronal views encompassing both kidneys following the infusion of Gd-BOPTA. A two-step registration algorithm was developed, including a preliminary registration minimising the quadratic difference and a fine registration maximising the mutual information (MI) between consecutive image frames. The starting point for the MI-based registration procedure was provided by an adaptive predictor that was able to predict kidney motion using a respiratory movement model. The algorithm was validated against manual registration performed by an expert user.
The mean distance between the automatically and manually defined contours was 2.95 ± 0.81 mm, which was not significantly different from the interobserver variability of the manual registration procedure (2.86 ± 0.80 mm, P = 0.80). The perfusion indices evaluated on the manually and automatically extracted perfusion curves were not significantly different.
The developed method is able to automatically compensate for kidney motion in perfusion studies, which prevents the need for time-consuming manual image registration.
本研究旨在开发一种自动图像配准技术,以补偿肾灌注 MRI 中的肾脏运动,评估肾动脉狭窄对肾脏实质的影响。
20 例计划进行肾灌注研究的患者的图像在 1.5T 扫描仪上采集。使用自由呼吸 3D-FSPGR 序列,在 Gd-BOPTA 输注后采集冠状位视图,包含两个肾脏。采用两步配准算法,包括最小化二次差的初步配准和最大化连续图像帧之间互信息 (MI) 的精细配准。MI 配准过程的起点由能够使用呼吸运动模型预测肾脏运动的自适应预测器提供。该算法通过专家用户手动配准进行了验证。
自动和手动定义轮廓之间的平均距离为 2.95±0.81mm,与手动配准过程的观察者间变异性(2.86±0.80mm)没有显著差异(P=0.80)。手动和自动提取的灌注曲线评估的灌注指数没有显著差异。
所开发的方法能够自动补偿灌注研究中的肾脏运动,从而无需耗时的手动图像配准。