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Cell nuclei attributed relational graphs for efficient representation and classification of gastric cancer in digital histopathology

机译:用于数字组织病理学中胃癌有效陈述和分类的细胞核归属关系图

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This paper describes a novel graph-based method for efficient representation and subsequent classification in histological whole slide images of gastric cancer. Her2/neu immunohistochemically stained and haematoxylin and eosin (H&E) stained histological sections of gastric carcinoma are digitized. Immunohistochemical staining is used in practice by pathologists to determine extent of malignancy, however, it is laborious to visually discriminate the corresponding malignancy levels in the more commonly used H&E stain, and this study attempts to solve this problem using a computer-based method. Cell nuclei are first isolated at high magnification using an automatic cell nuclei segmentation strategy, followed by construction of cell nuclei attributed relational graphs of the tissue regions. These graphs represent tissue architecture comprehensively, as they contain information about cell nuclei morphology as vertex attributes, along with knowledge of neighborhood in the form of edge linking and edge attributes. Global graph characteristics are derived and ensemble learning is used to discriminate between three types of malignancy levels, namely, non tumor, Her2/neu positive tumor and Her2/neu negative tumor. Performance is compared with state of the art methods including four texture feature groups (Haralick, Gabor, Local Binary Patterns and Varma Zisserman features), color and intensity features, and Voronoi diagram and Delaunay triangulation. Texture, color and intensity information is also combined with graph-based knowledge, followed by correlation analysis. Quantitative assessment is performed using two cross validation strategies. On investigating the experimental results, it can be concluded that the proposed method provides a promising way for computer-based analysis of histopathological images of gastric cancer.
机译:本文介绍了一种基于图的基于曲线图的方法,用于高效表示和随后的胃癌组织学全幻灯片图像中的分类。 Her2 / Neu免疫组织化学染色和血红素蛋白和嗜酸盐(H&E)染色胃癌的组织学部分是数字化的。免疫组织化学染色用于通过病理学医生在实践中使用,以确定恶性肿瘤的程度,目视歧视更常用的H&E污染中的相应恶性水平是费力的,这项研究试图使用基于计算机的方法来解决这个问题。使用自动细胞核分割策略首先在高倍率下分离细胞核,然后构建组织区域的细胞核归属关系图。这些图表综合地表示组织架构,因为它们包含有关细胞核形态作为顶点属性的信息,以及以边缘链接和边缘属性的形式的知识。全局图表特征是衍生的,并且融合学习用于区分三种类型的恶性水平,即非肿瘤,HER2 / NEU阳性肿瘤和HER2 / Neu阴性肿瘤。将性能与现有技术的状态进行比较,包括四个纹理特征组(Haralick,Gabor,局部二进制模式和Varma Zisserman特征),颜色和强度特征和Voronoi图和Delaunay三角测量。纹理,颜色和强度信息也与基于图形的知识相结合,然后进行相关分析。使用两个交叉验证策略进行定量评估。研究实验结果,可以得出结论,该方法为胃癌组织病理学图像的基于计算机的分析提供了有希望的方法。

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