Institute of Biomedical Engineering, College of Medicine and College of Engineering, National Taiwan University, Number 1, Section 1, Jen-Ai Road, Taipei 100, Taiwan.
Med Phys. 2010 Dec;37(12):6240-52. doi: 10.1118/1.3512799.
Fully automatic and high-quality demarcation of sonographical breast lesions remains a far-reaching goal. This article aims to develop an image segmentation algorithm that provides quality delineation of breast lesions in sonography with a simple and friendly semiautomatic scheme.
A data-driven image segmentation algorithm, named as augmented cell competition (ACCOMP) algorithm, is developed to delineate breast lesion boundaries in ultrasound images. Inspired by visual perceptual experience and Gestalt principles, the ACCOMP algorithm is constituted of two major processes, i.e., cell competition and cell-based contour grouping. The cell competition process drives cells, i.e., the catchment basins generated by a two-pass watershed transformation, to merge and split into prominent components. A prominent component is defined as a relatively large and homogeneous region circumscribed by a perceivable boundary. Based on the prominent component tessellation, cell-based contour grouping process seeks the best closed subsets of edges in the prominent component structure as the desirable boundary candidates. Finally, five boundary candidates with respect to five devised boundary cost functions are suggested by the ACCOMP algorithm for user selection. To evaluate the efficacy of the ACCOMP algorithm on breast lesions with complicated echogenicity and shapes, 324 breast sonograms, including 199 benign and 125 malignant lesions, are adopted as testing data. The boundaries generated by the ACCOMP algorithm are compared to manual delineations, which were confirmed by four experienced medical doctors. Four assessment metrics, including the modified Williams index, percentage statistic, overlapping ratio, and difference ratio, are employed to see if the ACCOMP-generated boundaries are comparable to manual delineations. A comparative study is also conducted by implementing two pixel-based segmentation algorithms. The same four assessment metrics are employed to evaluate the boundaries generated by two conventional pixel-based algorithms based on the same set of manual delineations.
The ACCOMP-generated boundaries are shown to be comparable to the manual delineations. Particularly, the modified Williams indices of the boundaries generated by the ACCOMP algorithm and the first and second pixel-based algorithms are 1.069 +/- 0.024, 0.935 +/- 0.024, and 0.579 +/- 0.013, respectively. If the modified Williams index is greater than or equal to 1, the average distance between the computer-generated boundaries and manual delineations is deemed to be comparable to that between the manual delineations.
The boundaries derived by the ACCOMP algorithm are shown to reasonably demarcate sonographic breast lesions, especially for the cases with complicated echogenicity and shapes. It suggests that the ACCOMP-generated boundaries can potentially serve as the basis for further morphological or quantitative analysis.
全自动、高质量的超声图像中乳腺病变的分割仍然是一个遥远的目标。本文旨在开发一种图像分割算法,通过简单友好的半自动方案,为超声中的乳腺病变提供高质量的边界描绘。
设计了一种基于数据驱动的图像分割算法,称为增强细胞竞争(ACCOMP)算法,用于在超声图像中描绘乳腺病变的边界。受视觉感知经验和格式塔原理的启发,ACCOMP 算法由两个主要过程组成,即细胞竞争和基于细胞的轮廓分组。细胞竞争过程驱动细胞,即通过两次分水岭变换生成的集水盆,合并和分裂成显著的成分。一个显著的成分被定义为一个由可感知的边界包围的相对较大且均匀的区域。基于显著成分的细分,基于细胞的轮廓分组过程寻找显著成分结构中边缘的最佳封闭子集作为理想边界候选。最后,ACCOMP 算法提出了五个关于五个设计边界代价函数的边界候选,供用户选择。为了评估 ACCOMP 算法对具有复杂回声和形状的乳腺病变的有效性,使用了 324 个乳腺超声图像,包括 199 个良性病变和 125 个恶性病变作为测试数据。ACCOMP 算法生成的边界与由四位经验丰富的医生确认的手动描绘进行比较。使用修改后的 Williams 指数、百分比统计、重叠比和差异比四个评估指标来判断 ACCOMP 生成的边界是否与手动描绘相似。还进行了一项比较研究,通过实施两种基于像素的分割算法。同样使用四个评估指标来评估基于同一组手动描绘的两种基于像素的常规算法生成的边界。
ACCOMP 生成的边界与手动描绘相似。特别是,ACCOMP 算法生成的边界的修改后的 Williams 指数以及前两个基于像素的算法生成的边界的修改后的 Williams 指数分别为 1.069 +/- 0.024、0.935 +/- 0.024 和 0.579 +/- 0.013。如果修改后的 Williams 指数大于或等于 1,则认为计算机生成的边界与手动描绘之间的平均距离与手动描绘相似。
ACCOMP 算法得出的边界可以合理地描绘超声乳腺病变,特别是对于回声和形状复杂的情况。这表明 ACCOMP 生成的边界可以作为进一步形态学或定量分析的基础。