基于加权最小二乘光流法的自旋标记MRI图像速度提取

J. Stoitsis, E. Bastouni, D. Karampinos, J. Bosshard, Jiaxi Lu, S. Golemati, S. Wright, J. Georgiadis, K. Nikita
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引用次数: 2

摘要

磁共振成像(MRI)可以提供真正无创的内部流场测量。从自旋标记图像中提取速度需要对网格节点进行定量跟踪。本文使用加权最小二乘光流方法来估计合成和真实自旋标记MRI图像中网格节点和标签的位移。为了研究所提出方法的准确性,利用泊泽维尔定律分析剖面生成了合成自旋标记图像。生成了三个不同噪声水平的合成序列,并估计了网格节点和标签对应点的平均绝对误差和最大绝对误差。研究了不同大小和形状的感兴趣区域(ROI),以确定合成和真实自旋标记MRI图像可靠提取速度的最佳大小和形状。发现最佳ROI大小为13x13像素2。采用最优ROI大小的合成数据垂直方向速度的平均绝对误差为5.46% ~ 14.42%,最大绝对误差为6.39% ~ 31.96%。
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Velocity extraction from spin-tagging MRI images using a weighted least-squares optical flow method
Magnetic resonance imaging (MRI) can provide truly non-invasive measurements of internal flow fields. The extraction of velocity from spin-tagging images requires the quantitative tracking of grid nodes. A weighted least-squares optical flow method was used in this work to estimate the displacements of the grid nodes and tags from synthetic and real spin-tagging MRI images. To investigate the accuracy of the proposed method, synthetic spin-tagging images were generated using the Poiseuille law analytical profile. Three synthetic sequences with different levels of noise were generated and the average and maximum absolute errors were estimated for points corresponding to grid nodes and tags. Different sizes and shapes of region of interest (ROI) were investigated to determine the optimal size and shape for reliable extraction of velocity both for synthetic and real spin-tagging MRI images. The optimal ROI size was found to be 13x13 pixels2 . The average and maximum absolute error for the velocity in vertical direction for synthetic data using the optimal ROI size ranged from 5.46% to 14.42% and from 6.39% to 31.96% respectively.
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