首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Level sets and shape models for segmentation of cardiac perfusion MRI
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Level sets and shape models for segmentation of cardiac perfusion MRI

机译:用于心脏灌注MRI分割的水平集和形状模型

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Dynamic MRI perfusion studies have proven to be useful for detecting and characterizing myocardial ischemia. Accurate segmentation of the myocardium in the dynamic contrast-enhanced (DCE) MRI images is an important step for estimation of regional perfusion. Although a great deal of research has been done for segmenting MRI scans of heart wall motion, relatively little work has been done to segment DCE MRI studies. We propose a new semi-automatic robust level set based segmentation technique that uses both spatial and temporal information. The evolution of level sets is based on a spectral speed function which is a function of the Mahalanobis distance between each pixel's time curve and the time curves of user-determined seed points in the myocardium. A curvature penalty term is included in the evolution of the contours to ensure smoothness of the evolving level sets. We also make use of shape information to constrain the evolution of the level sets. Shape models were created by using signed distance maps from manually segmented images and performing principal component analysis. Thus the algorithm has the qualities of evolving an active contour both locally, based on image values and curvature, and globally to a maximum a posteriori estimate of the left ventricle shape in order to segment the left ventricle myocardium from DCE cardiac MRI images. The algorithm was tested on 16 DCE MRI datasets and compared to manual segmentations. The results matched the manual segmentations.
机译:动态MRI灌注研究已被证明可用于检测和表征心肌缺血。在动态对比增强(DCE)MRI图像中,心肌的正确分割是评估区域灌注的重要步骤。尽管已经对分割心脏壁运动的MRI扫描进行了大量研究,但对分割DCE MRI研究的工作却很少。我们提出了一种使用空间和时间信息的基于半自动鲁棒水平集的分割技术。水平集的演化基于频谱速度函数,该频谱速度函数是每个像素的时间曲线与心肌中用户确定的种子点的时间曲线之间的马氏距离的函数。轮廓变化中包括曲率罚分项,以确保演变的水平集的平滑性。我们还利用形状信息来约束水平集的演变。形状模型是通过使用来自手动分割图像的带符号距离图并执行主成分分析来创建的。因此,该算法具有基于图像值和曲率局部地改变活动轮廓的质量,以全局地最大化左心室形状的后验估计,以便从DCE心脏MRI图像中分割左心室心肌。该算法在16个DCE MRI数据集上进行了测试,并与手动分割进行了比较。结果与手动分割相符。

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