Bansod Prashant, Desai U B, Merchant S N, Burkule Nitin
SPANN Laboratory, Department of Electrical Engineering, Indian Institute of Technology, Mumbai.
Comput Methods Biomech Biomed Engin. 2011 Jul;14(7):603-13. doi: 10.1080/10255842.2010.493507.
In this paper, we present a weighted radial edge filtering algorithm with adaptive recovery of dropout regions for the semi-automatic delineation of endocardial contours in short-axis echocardiographic image sequences. The proposed algorithm requires minimal user intervention at the end diastolic frame of the image sequence for specifying the candidate points of the contour. The region of interest is identified by fitting an ellipse in the region defined by the specified points. Subsequently, the ellipse centre is used for originating the radial lines for filtering. A weighted radial edge filter is employed for the detection of edge points. The outliers are corrected by global as well as local statistics. Dropout regions are recovered by incorporating the important temporal information from the previous frame by means of recursive least squares adaptive filter. This ensures fairly accurate segmentation of the cardiac structures for further determination of the functional cardiac parameters. The proposed algorithm was applied to 10 data-sets over a full cardiac cycle and the results were validated by comparing computer-generated boundaries to those manually outlined by two experts using Hausdorff distance (HD) measure, radial mean square error (rmse) and contour similarity index. The rmse was 1.83 mm with a HD of 5.12 ± 1.21 mm. We have also compared our results with two existing approaches, level set and optical flow. The results indicate an improvement when compared with ground truth due to incorporation of temporal clues. The weighted radial edge filtering algorithm in conjunction with adaptive dropout recovery offers semi-automatic segmentation of heart chambers in 2D echocardiography sequences for accurate assessment of global left ventricular function to guide therapy and staging of the cardiovascular diseases.
在本文中,我们提出了一种加权径向边缘滤波算法,该算法具有自适应恢复缺失区域的功能,用于在短轴超声心动图图像序列中半自动描绘心内膜轮廓。所提出的算法在图像序列的舒张末期帧需要最少的用户干预来指定轮廓的候选点。通过在由指定点定义的区域内拟合椭圆来识别感兴趣区域。随后,椭圆中心用于生成用于滤波的径向线。采用加权径向边缘滤波器来检测边缘点。通过全局和局部统计来校正异常值。通过递归最小二乘自适应滤波器合并来自前一帧的重要时间信息来恢复缺失区域。这确保了心脏结构的相当准确的分割,以便进一步确定心脏功能参数。所提出的算法应用于整个心动周期的10个数据集,并通过使用豪斯多夫距离(HD)测量、径向均方误差(rmse)和轮廓相似性指数将计算机生成的边界与两位专家手动勾勒的边界进行比较来验证结果。rmse为1.83毫米,HD为5.12±1.21毫米。我们还将我们的结果与两种现有方法,即水平集和光流进行了比较。结果表明,由于纳入了时间线索,与真实情况相比有了改进。加权径向边缘滤波算法结合自适应缺失恢复,为二维超声心动图序列中的心脏腔室提供半自动分割,以准确评估左心室整体功能,指导心血管疾病的治疗和分期。