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首页> 外文期刊>International journal of imaging systems and technology >A novel proximity graph: Circular neighborhood cell graph for histopathological tissue image analyzing
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A novel proximity graph: Circular neighborhood cell graph for histopathological tissue image analyzing

机译:一种新的接近图:组织病理组织图像分析的圆形邻域细胞图

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摘要

The cell is the smallest unit of living beings, which has structural and functional properties. Almost all cell behaviors are regulated by various intracellular reactions initiated by the signaling. The signaling and the distance between cells influence each other. Thus, cell-location-based modeling and analyzing of histopathological tissues provide important information to the expert. In literature, methods such as distance-based threshold, K-Nearest Neighbor, Voronoi graphs, Delaunay triangulation, and colored graph have been used. However, circular neighborhood relationships of cells have not been considered by any CAD system so far despite of its crucial impact. Thus, we developed the circular neighborhood cell-graph. Histopathological images of liver were classified by using features extracted from T-Distance, K-Nearest Neighbor, Voronoi, Delaunay, and the proposed cell-graph. Then, the classification performances of the methods were compared. Experimental results show that liver tissue images can be classified with accuracy of 95.7% by using the features provided by the proposed cell-graph model.
机译:细胞是活生植物的最小单位,具有结构性和功能性。几乎所有细胞行为都受到信号传导引发的各种细胞内反应的调节。信令和电池之间的距离彼此影响。因此,基于细胞的模型和分析组织病理组织为专家提供了重要信息。在文献中,已经使用了诸如距离的阈值,K最近邻居,vorono图,Delaunay三角测量和彩色图的方法。然而,尽管其关键影响,任何CAD系统都没有考虑细胞的循环邻居关系。因此,我们开发了圆形邻域单元图。通过使用从T型距离,k-最近邻居,voronoi,delaunay和所提出的细胞图中提取的特征来分类肝脏的组织病理学图像。然后,比较了这些方法的分类性能。实验结果表明,通过使用所提出的细胞图模型提供的功能,可以通过95.7%的精度来分类肝组织图像。

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