Department of Computer Science, Johns Hopkins University, Baltimore, MD 21218, USA.
IEEE Trans Med Imaging. 2010 Aug;29(8):1560-72. doi: 10.1109/TMI.2010.2045509. Epub 2010 Mar 18.
Magnetic resonance tagging makes it possible to measure the motion of tissues such as muscles in the heart and tongue. The harmonic phase (HARP) method largely automates the process of tracking points within tagged MR images, permitting many motion properties to be computed. However, HARP tracking can yield erroneous motion estimates due to 1) large deformations between image frames, 2) through-plane motion, and 3) tissue boundaries. Methods that incorporate the spatial continuity of motion--so-called refinement or flood-filling methods--have previously been reported to reduce tracking errors. This paper presents a new refinement method based on shortest path computations. The method uses a graph representation of the image and seeks an optimal tracking order from a specified seed to each point in the image by solving a single source shortest path problem. This minimizes the potential errors for those path dependent solutions that are found in other refinement methods. In addition to this, tracking in the presence of through-plane motion is improved by introducing synthetic tags at the reference time (when the tissue is not deformed). Experimental results on both tongue and cardiac images show that the proposed method can track the whole tissue more robustly and is also computationally efficient.
磁共振标记使得测量心脏和舌等组织的运动成为可能。谐相位(HARP)方法在很大程度上实现了标记磁共振图像中跟踪点的自动化过程,允许计算许多运动特性。然而,由于 1)图像帧之间的大变形,2)切向运动和 3)组织边界,HARP 跟踪可能会产生错误的运动估计。先前已经报道了结合运动的空间连续性的方法,即所谓的细化或填充方法,可以减少跟踪误差。本文提出了一种新的基于最短路径计算的细化方法。该方法使用图像的图形表示,并通过求解单个源最短路径问题,从指定的种子到图像中的每个点寻找最佳的跟踪顺序。这最小化了在其他细化方法中找到的那些路径相关解的潜在误差。除了这一点,通过在参考时间(当组织没有变形时)引入合成标记,还可以改善切向运动中的跟踪。在舌和心脏图像上的实验结果表明,所提出的方法可以更稳健地跟踪整个组织,并且计算效率也很高。