Auburn University MRI Research Center, Auburn University, Auburn, Alabama, United States; Department of Electrical and Computer Engineering, Auburn University, Auburn, Alabama, United States.
Division of Cardiovascular Disease, University of Alabama at Birmingham, Birmingham, Alabama, United States.
Med Image Anal. 2017 Jan;35:46-57. doi: 10.1016/j.media.2016.06.006. Epub 2016 Jun 11.
Tagged magnetic resonance imaging (tMRI) is a well-established method for evaluating regional mechanical function of the heart. Many techniques have been developed to compute 2D or 3D cardiac deformation and strain from tMRI images. In this paper, we present a new method for measuring 3D plus time biventricular myocardial strain from tMRI data. The method is composed of two parts. First, we use a Gabor filter bank to extract tag points along tag lines. Second, each tag point is classified to one of a set of indexed reference tag lines using a point classification with graph cuts (PCGC) algorithm and a motion compensation technique. 3D biventricular deformation and strain is computed at each image time frame from the classified tag points using a previously published finite difference method. The strain computation is fully automatic after myocardial contours are defined near end-diastole and end-systole. An in-vivo dataset composed of 30 human imaging studies with a range of pathologies was used for validation. Strains computed with the PCGC method with no manual corrections were compared to strains computed from both manually placed tag points and a manually-corrected unwrapped phase method. A typical cardiac imaging study with 10 short-axis slices and 6 long-axis slices required 30 min for contouring followed by 44 min of automated processing. The results demonstrate that the proposed method can reconstruct accurate 3D plus time cardiac strain maps with minimal user intervention.
标记磁共振成像(tMRI)是评估心脏区域机械功能的一种成熟方法。已经开发了许多技术来从 tMRI 图像计算 2D 或 3D 心脏变形和应变。在本文中,我们提出了一种从 tMRI 数据测量 3D 加时间双心室心肌应变的新方法。该方法由两部分组成。首先,我们使用 Gabor 滤波器组沿标记线提取标记点。其次,使用基于图割(PCGC)算法和运动补偿技术的点分类(PCGC)算法,将每个标记点分类为一组索引参考标记线之一。使用先前发表的有限差分法,从分类的标记点计算每个图像时间帧的 3D 双心室变形和应变。在定义了舒张末期和收缩末期的心肌轮廓后,应变计算是全自动的。使用来自 30 项具有多种病变的人体成像研究的体内数据集进行了验证。使用 PCGC 方法计算的应变无需手动校正,与手动放置的标记点和手动校正的展开相位方法计算的应变进行了比较。一个具有 10 个短轴切片和 6 个长轴切片的典型心脏成像研究需要 30 分钟进行轮廓绘制,然后需要 44 分钟进行自动处理。结果表明,该方法可以在最小的用户干预下重建准确的 3D 加时间心脏应变图。