...
首页> 外文期刊>Ultrasound in Medicine and Biology >Modeling envelope statistics of blood and myocardium for segmentation of echocardiographic images.
【24h】

Modeling envelope statistics of blood and myocardium for segmentation of echocardiographic images.

机译:为超声心动图图像分割建模血液和心肌包膜统计数据。

获取原文
获取原文并翻译 | 示例
           

摘要

The objective of this study was to investigate the use of speckle statistics as a preprocessing step for segmentation of the myocardium in echocardiographic images. Three-dimensional (3D) and biplane image sequences of the left ventricle of two healthy children and one dog (beagle) were acquired. Pixel-based speckle statistics of manually segmented blood and myocardial regions were investigated by fitting various probability density functions (pdf). The statistics of heart muscle and blood could both be optimally modeled by a K-pdf or Gamma-pdf (Kolmogorov-Smirnov goodness-of-fit test). Scale and shape parameters of both distributions could differentiate between blood and myocardium. Local estimation of these parameters was used to obtain parametric images, where window size was related to speckle size (5 x 2 speckles). Moment-based and maximum-likelihood estimators were used. Scale parameters were still able to differentiate blood from myocardium; however, smoothing of edges of anatomical structures occurred. Estimation of the shape parameter required a larger window size, leading to unacceptable blurring. Using these parameters as an input for segmentation resulted in unreliable segmentation. Adaptive mean squares filtering was then introduced using the moment-based scale parameter (sigma(2)/mu) of the Gamma-pdf to automatically steer the two-dimensional (2D) local filtering process. This method adequately preserved sharpness of the edges. In conclusion, a trade-off between preservation of sharpness of edges and goodness-of-fit when estimating local shape and scale parameters is evident for parametric images. For this reason, adaptive filtering outperforms parametric imaging for the segmentation of echocardiographic images.
机译:这项研究的目的是调查使用斑点统计数据作为超声心动图图像中心肌分割的预处理步骤。获得了两个健康儿童和一只狗(小猎犬)左心室的三维(3D)和双平面图像序列。通过拟合各种概率密度函数(pdf),对手动分割的血液和心肌区域的基于像素的斑点统计进行了研究。可以通过K-pdf或Gamma-pdf(Kolmogorov-Smirnov拟合优度检验)来最佳地建模心肌和血液的统计数据。两种分布的比例和形状参数可以区分血液和心肌。这些参数的局部估计用于获得参数图像,其中窗口大小与斑点大小(5 x 2斑点)有关。使用基于矩的和最大似然估计器。量表参数仍然能够区分血液和心肌。但是,发生了解剖结构边缘的平滑。形状参数的估计需要较大的窗口大小,从而导致不可接受的模糊。使用这些参数作为分割的输入会导致分割不可靠。然后使用Gamma-pdf的基于矩的比例参数(sigma(2)/ mu)引入自适应均方滤波,以自动控制二维(2D)局部滤波过程。该方法充分保留了边缘的清晰度。总之,对于参数图像而言,在估计局部形状和比例参数时,在保留边缘的锐度和拟合优度之间需要做出权衡。因此,对于超声心动图图像的分割,自适应滤波的性能优于参数成像。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号