Ciulla Carlo, Deek Fadi P
NJIT-New Jersey Institute of Technology, College of Computing Sciences, University Heights, Newark 07102, USA.
Brain Topogr. 2002 Summer;14(4):313-32. doi: 10.1023/a:1015756812054.
This paper reports on performance assessment of an algorithm developed to align functional Magnetic Resonance Image (fMRI) time series. The algorithm is based on the assumption that the human brain is subject to rigid-body motion and has been devised by pipelining fiducial markers and tensor based registration methodologies. Feature extraction is performed on each fMRI volume to determine tensors of inertia and gradient image of the brain. A head coordinate system is determined on the basis of three fiducial markers found automatically at the head boundary by means of the tensors and is used to compute a point-based rigid matching transformation. Intensity correction is performed with sub-voxel accuracy by trilinear interpolation. Performance of the algorithm was preliminarily assessed by fMR brain images in which controlled motion has been simulated. Further experimentation has been conducted with real fMRI time series. Rigid-body transformations were retrieved automatically and the value of motion parameters compared to those obtained with the Statistical Parametric Mapping (SPM99) and the Automatic Image Registration (AIR 3.08). Results indicate that the algorithm offers sub-voxel accuracy in performing both misalignment and intensity correction of fMRI time series.
本文报道了一种为对齐功能磁共振成像(fMRI)时间序列而开发的算法的性能评估。该算法基于人类大脑会发生刚体运动这一假设,并通过将基准标记和基于张量的配准方法流水线化而设计。对每个fMRI容积进行特征提取,以确定大脑的惯性张量和梯度图像。基于通过张量在头部边界自动找到的三个基准标记确定头部坐标系,并用于计算基于点的刚性匹配变换。通过三线性插值以亚体素精度进行强度校正。该算法的性能通过模拟了受控运动的fMR脑图像进行了初步评估。还对真实的fMRI时间序列进行了进一步实验。自动检索刚体变换,并将运动参数值与通过统计参数映射(SPM99)和自动图像配准(AIR 3.08)获得的参数值进行比较。结果表明,该算法在执行fMRI时间序列的失准校正和强度校正方面均具有亚体素精度。