Chen Ting, Babb James, Kellman Peter, Axel Leon, Kim Daniel
Department of Radiology, New York University, 650 First Ave, New York, NY 10016, USA.
IEEE Trans Med Imaging. 2008 Aug;27(8):1084-94. doi: 10.1109/TMI.2008.918327.
The purposes of this study were to develop a semiautomated cardiac contour segmentation method for use with cine displacement-encoded MRI and evaluate its accuracy against manual segmentation. This segmentation model was designed with two distinct phases: preparation and evolution. During the model preparation phase, after manual image cropping and then image intensity standardization, the myocardium is separated from the background based on the difference in their intensity distributions, and the endo- and epi-cardial contours are initialized automatically as zeros of an underlying level set function. During the model evolution phase, the model deformation is driven by the minimization of an energy function consisting of five terms: model intensity, edge attraction, shape prior, contours interaction, and contour smoothness. The energy function is minimized iteratively by adaptively weighting the five terms in the energy function using an annealing algorithm. The validation experiments were performed on a pool of cine data sets of five volunteers. The difference between the semiautomated segmentation and manual segmentation was sufficiently small as to be considered clinically irrelevant. This relatively accurate semiautomated segmentation method can be used to significantly increase the throughput of strain analysis of cine displacement-encoded MR images for clinical applications.
本研究的目的是开发一种用于电影位移编码磁共振成像(cine displacement-encoded MRI)的半自动心脏轮廓分割方法,并将其准确性与手动分割进行评估。该分割模型设计为两个不同阶段:准备阶段和演化阶段。在模型准备阶段,在手动裁剪图像然后进行图像强度标准化之后,根据心肌和背景强度分布的差异将心肌与背景分离,并且心内膜和心外膜轮廓自动初始化为基础水平集函数的零点。在模型演化阶段,模型变形由一个由五项组成的能量函数的最小化驱动:模型强度、边缘吸引力、形状先验、轮廓相互作用和轮廓平滑度。通过使用退火算法对能量函数中的五项进行自适应加权,迭代地最小化能量函数。在五名志愿者的一组电影数据集上进行了验证实验。半自动分割和手动分割之间的差异足够小,以至于被认为在临床上不相关。这种相对准确的半自动分割方法可用于显著提高电影位移编码磁共振图像应变分析在临床应用中的通量。