Tsou Chi-Hsuan, Lor Kuo-Lung, Chang Yeun-Chung, Chen Chung-Ming
Institute of Biomedical Engineering, College of Medicine and College of Engineering, National Taiwan University, Number 1, Section 1, Jen-Ai Road, Taipei 100, Taiwan.
Department of Radiology, National Taiwan University College of Medicine, Number 7, Chung-Shan South Road, Taipei 100, Taiwan.
Biomed Eng Online. 2015 May 14;14:42. doi: 10.1186/s12938-015-0043-3.
This paper proposes a semantic segmentation algorithm that provides the spatial distribution patterns of pulmonary ground-glass nodules with solid portions in computed tomography (CT) images.
The proposed segmentation algorithm, anatomy packing with hierarchical segments (APHS), performs pulmonary nodule segmentation and quantification in CT images. In particular, the APHS algorithm consists of two essential processes: hierarchical segmentation tree construction and anatomy packing. It constructs the hierarchical segmentation tree based on region attributes and local contour cues along the region boundaries. Each node of the tree corresponds to the soft boundary associated with a family of nested segmentations through different scales applied by a hierarchical segmentation operator that is used to decompose the image in a structurally coherent manner. The anatomy packing process detects and localizes individual object instances by optimizing a hierarchical conditional random field model. Ninety-two histopathologically confirmed pulmonary nodules were used to evaluate the performance of the proposed APHS algorithm. Further, a comparative study was conducted with two conventional multi-label image segmentation algorithms based on four assessment metrics: the modified Williams index, percentage statistic, overlapping ratio, and difference ratio.
Under the same framework, the proposed APHS algorithm was applied to two clinical applications: multi-label segmentation of nodules with a solid portion and surrounding tissues and pulmonary nodule segmentation. The results obtained indicate that the APHS-generated boundaries are comparable to manual delineations with a modified Williams index of 1.013. Further, the resulting segmentation of the APHS algorithm is also better than that achieved by two conventional multi-label image segmentation algorithms.
The proposed two-level hierarchical segmentation algorithm effectively labelled the pulmonary nodule and its surrounding anatomic structures in lung CT images. This suggests that the generated multi-label structures can potentially serve as the basis for developing related clinical applications.
本文提出了一种语义分割算法,该算法可在计算机断层扫描(CT)图像中提供具有实性成分的肺磨玻璃结节的空间分布模式。
所提出的分割算法,即分层段解剖打包(APHS)算法,用于在CT图像中进行肺结节分割和定量分析。具体而言,APHS算法由两个关键过程组成:分层分割树构建和解剖打包。它基于区域属性和沿区域边界的局部轮廓线索构建分层分割树。树的每个节点对应于通过分层分割算子应用不同尺度的一系列嵌套分割相关联的软边界,该分层分割算子用于以结构连贯的方式分解图像。解剖打包过程通过优化分层条件随机场模型来检测和定位单个对象实例。使用92个经组织病理学证实的肺结节来评估所提出的APHS算法的性能。此外,基于四个评估指标:修正的威廉姆斯指数、百分比统计、重叠率和差异率,与两种传统的多标签图像分割算法进行了比较研究。
在相同框架下,将所提出的APHS算法应用于两个临床应用:具有实性成分的结节及其周围组织的多标签分割和肺结节分割。所得结果表明,APHS生成的边界与手动勾勒的边界相当,修正的威廉姆斯指数为1.013。此外,APHS算法的分割结果也优于两种传统的多标签图像分割算法。
所提出的两级分层分割算法有效地标记了肺CT图像中的肺结节及其周围的解剖结构。这表明生成的多标签结构有可能作为开发相关临床应用的基础。