Liu Chi, Shang Fei, Ozolek John A, Rohde Gustavo K
Department of Biomedical Engineering, Carnegie Mellon University, Beijing, China.
Department of Biomedical Engineering, Beijing Institute of Technology, Beijing, China.
J Pathol Inform. 2016 Oct 21;7:42. doi: 10.4103/2153-3539.192810. eCollection 2016.
Cell nuclei are important indicators of cellular processes and diseases. Segmentation is an essential stage in systems for quantitative analysis of nuclei extracted from microscopy images. Given the wide variety of nuclei appearance in different organs and staining procedures, a plethora of methods have been described in the literature to improve the segmentation accuracy and robustness.
In this paper, we propose an unsupervised method for cell nuclei detection and segmentation in two-dimensional microscopy images. The nuclei in the image are detected automatically using a matching-based method. Next, edge maps are generated at multiple image blurring levels followed by edge selection performed in polar space. The nuclei contours are refined iteratively in the constructed edge pyramid. The validation study was conducted over two cell nuclei datasets with manual labeling, including 25 hematoxylin and eosin-stained liver histopathology images and 35 Papanicolaou-stained thyroid images.
The nuclei detection accuracy was measured by miss rate, and the segmentation accuracy was evaluated by two types of error metrics. Overall, the nuclei detection efficiency of the proposed method is similar to the supervised template matching method. In comparison to four existing state-of-the-art segmentation methods, the proposed method performed the best with average segmentation error 10.34% and 0.33 measured by area error rate and normalized sum of distances (×10).
Quantitative analysis showed that the method is automatic and accurate when segmenting cell nuclei from microscopy images with noisy background and has the potential to be used in clinic settings.
细胞核是细胞过程和疾病的重要指标。分割是从显微镜图像中提取的细胞核定量分析系统中的一个关键阶段。鉴于不同器官和染色程序中细胞核外观的多样性,文献中描述了大量方法来提高分割的准确性和鲁棒性。
在本文中,我们提出了一种用于二维显微镜图像中细胞核检测和分割的无监督方法。使用基于匹配的方法自动检测图像中的细胞核。接下来,在多个图像模糊级别生成边缘图,然后在极坐标空间中进行边缘选择。在构建的边缘金字塔中迭代细化细胞核轮廓。在两个带有手动标注的细胞核数据集上进行了验证研究,包括25张苏木精和伊红染色的肝脏组织病理学图像以及35张巴氏染色的甲状腺图像。
通过漏检率测量细胞核检测准确率,通过两种误差度量评估分割准确率。总体而言,所提方法的细胞核检测效率与有监督的模板匹配方法相似。与四种现有的最先进分割方法相比,所提方法表现最佳,面积误差率和归一化距离总和(×10)测量的平均分割误差分别为10.34%和0.33。
定量分析表明,该方法在从具有噪声背景的显微镜图像中分割细胞核时具有自动性和准确性,并且有潜力应用于临床环境。