Leemans A, Sijbers J, De Backer S, Vandervliet E, Parizel P
Vision Laboratory, Department of Physics, University of Antwerp, Belgium.
Magn Reson Med. 2006 Jun;55(6):1414-23. doi: 10.1002/mrm.20898.
In this paper an automatic multiscale feature-based rigid-body coregistration technique for diffusion tensor imaging (DTI) based on the local curvature kappa and torsion tau of the white matter (WM) fiber pathways is presented. As a similarity measure, the mean squared difference (MSD) of corresponding fiber pathways in (kappa, tau)-space is chosen. After the MSD is minimized along the arc length of the curve, principal component analysis is applied to calculate the transformation parameters. In addition, a scale-space representation of the space curves is incorporated, resulting in a multiscale robust coregistration technique. This fully automatic technique inherently allows one to apply region of interest (ROI) coregistration, and is adequate for performing both global and local transformations. Simulations were performed on synthetic DT data to evaluate the coregistration accuracy and precision. An in vivo coregistration example is presented and compared with a voxel-based coregistration approach, demonstrating the feasibility and advantages of the proposed technique to align DT data of the human brain.
本文提出了一种基于白质(WM)纤维束局部曲率κ和挠率τ的扩散张量成像(DTI)自动多尺度特征刚体配准技术。作为相似性度量,选择了(κ,τ)空间中对应纤维束的均方误差(MSD)。在沿曲线弧长最小化MSD后,应用主成分分析来计算变换参数。此外,纳入了空间曲线的尺度空间表示,从而产生了一种多尺度鲁棒配准技术。这种全自动技术本质上允许应用感兴趣区域(ROI)配准,并且适用于执行全局和局部变换。对合成DT数据进行了模拟,以评估配准的准确性和精度。给出了一个体内配准示例,并与基于体素的配准方法进行了比较,证明了所提技术对齐人脑DT数据的可行性和优势。