Bouhrara Mustapha, Reiter David A, Sexton Kyle W, Bergeron Christopher M, Zukley Linda M, Spencer Richard G
Laboratory of Clinical Investigation, National Institute on Aging, National Institutes of Health, Baltimore, MD 21224, USA.
Clinical Research Core, Office of the Scientific Director, National Institute on Aging, National Institutes of Health, Baltimore, MD 21225, USA.
Magn Reson Imaging. 2017 Nov;43:1-5. doi: 10.1016/j.mri.2017.06.011. Epub 2017 Jun 20.
We applied our recently introduced Bayesian analytic method to achieve clinically-feasible in-vivo mapping of the proteoglycan water fraction (PgWF) of human knee cartilage with improved spatial resolution and stability as compared to existing methods.
Multicomponent driven equilibrium single-pulse observation of T and T (mcDESPOT) datasets were acquired from the knees of two healthy young subjects and one older subject with previous knee injury. Each dataset was processed using Bayesian Monte Carlo (BMC) analysis incorporating a two-component tissue model. We assessed the performance and reproducibility of BMC and of the conventional analysis of stochastic region contraction (SRC) in the estimation of PgWF. Stability of the BMC analysis of PgWF was tested by comparing independent high-resolution (HR) datasets from each of the two young subjects.
Unlike SRC, the BMC-derived maps from the two HR datasets were essentially identical. Furthermore, SRC maps showed substantial random variation in estimated PgWF, and mean values that differed from those obtained using BMC. In addition, PgWF maps derived from conventional low-resolution (LR) datasets exhibited partial volume and magnetic susceptibility effects. These artifacts were absent in HR PgWF images. Finally, our analysis showed regional variation in PgWF estimates, and substantially higher values in the younger subjects as compared to the older subject.
BMC-mcDESPOT permits HR in-vivo mapping of PgWF in human knee cartilage in a clinically-feasible acquisition time. HR mapping reduces the impact of partial volume and magnetic susceptibility artifacts compared to LR mapping. Finally, BMC-mcDESPOT demonstrated excellent reproducibility in the determination of PgWF.
我们应用最近引入的贝叶斯分析方法,以实现对人膝关节软骨蛋白聚糖水分数(PgWF)的临床可行的体内映射,与现有方法相比,具有更高的空间分辨率和稳定性。
从两名健康年轻受试者和一名有膝关节旧伤的老年受试者的膝盖获取多组分驱动平衡单脉冲T和T观测(mcDESPOT)数据集。每个数据集使用包含双组分组织模型的贝叶斯蒙特卡罗(BMC)分析进行处理。我们评估了BMC以及传统随机区域收缩(SRC)分析在估计PgWF方面的性能和可重复性。通过比较来自两名年轻受试者各自的独立高分辨率(HR)数据集,测试了PgWF的BMC分析的稳定性。
与SRC不同,来自两个HR数据集的BMC衍生图基本相同。此外,SRC图在估计的PgWF中显示出大量随机变化,且平均值与使用BMC获得的不同。另外,从传统低分辨率(LR)数据集得出的PgWF图表现出部分容积和磁化率效应。这些伪影在HR PgWF图像中不存在。最后,我们的分析显示了PgWF估计值的区域差异,并且年轻受试者的值比老年受试者的值高得多。
BMC-mcDESPOT在临床可行的采集时间内允许对人膝关节软骨中的PgWF进行高分辨率体内映射。与LR映射相比,HR映射减少了部分容积和磁化率伪影的影响。最后,BMC-mcDESPOT在PgWF的测定中表现出出色的可重复性。