Department of Electronic Engineering, City University of Hong Kong, Hong Kong.
Phys Med Biol. 2013 Jun 7;58(11):3671-703. doi: 10.1088/0031-9155/58/11/3671. Epub 2013 May 8.
This paper describes a framework for vascular image segmentation evaluation. Since the size of vessel wall and plaque burden is defined by the lumen and wall boundaries in vascular segmentation, these two boundaries should be considered as a pair in statistical evaluation of a segmentation algorithm. This work proposed statistical metrics to evaluate the difference of local vessel wall thickness (VWT) produced by manual and algorithm-based semi-automatic segmentation methods (ΔT) with the local segmentation standard deviation of the wall and lumen boundaries considered. ΔT was further approximately decomposed into the local wall and lumen boundary differences (ΔW and ΔL respectively) in order to provide information regarding which of the wall and lumen segmentation errors contribute more to the VWT difference. In this study, the lumen and wall boundaries in 3D carotid ultrasound images acquired for 21 subjects were each segmented five times manually and by a level-set segmentation algorithm. The (absolute) difference measures (i.e., ΔT, ΔW, ΔL and their absolute values) and the pooled local standard deviation of manually and algorithmically segmented wall and lumen boundaries were computed for each subject and represented in a 2D standardized map. The local accuracy and variability of the segmentation algorithm at each point can be quantified by the average of these metrics for the whole group of subjects and visualized on the 2D standardized map. Based on the results shown on the 2D standardized map, a variety of strategies, such as adding anchor points and adjusting weights of different forces in the algorithm, can be introduced to improve the accuracy and variability of the algorithm.
本文描述了一种血管图像分割评估框架。由于血管分割中的管腔和管壁边界定义了血管壁和斑块负担的大小,因此这两个边界应在分割算法的统计评估中视为一对。本工作提出了统计指标,以评估手动和基于算法的半自动分割方法产生的局部血管壁厚度 (VWT) 差异 (ΔT),同时考虑了管壁和管腔边界的局部分割标准差。为了提供有关壁和管腔分割误差中哪一个对 VWT 差异的贡献更大的信息,ΔT 进一步近似分解为局部壁和管腔边界差异 (分别为 ΔW 和 ΔL)。在这项研究中,对 21 名受试者的 3D 颈动脉超声图像的管腔和管壁边界分别手动和使用水平集分割算法进行了五次分割。计算了每个受试者的(绝对)差异度量(即 ΔT、ΔW、ΔL 及其绝对值)和手动和算法分割的管壁和管腔边界的局部标准偏差,并以 2D 标准化图表示。可以通过整个受试者组的这些度量的平均值来量化分割算法在每个点的局部准确性和可变性,并在 2D 标准化图上可视化。基于 2D 标准化图上显示的结果,可以引入各种策略,例如添加锚点和调整算法中不同力的权重,以提高算法的准确性和可变性。