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A Comparative Study of Cell Nuclei Attributed Relational Graphs for Knowledge Description and Categorization in Histopathological Gastric Cancer Whole Slide Images

机译:细胞核归属关系图对组织病理学胃癌整体幻灯片的知识描述和分类的比较研究

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In this paper, cell nuclei attributed relational graphs are extensively studied and comparatively analyzed for effective knowledge description and classification in H&E stained whole slide images of gastric cancer. This includes design and implementation of multiple graph variations with diverse tissue component characteristics and architectural properties to obtain enhanced image representations, followed by hierarchical ensemble learning and classification. A detailed comparative analysis of the proposed graph-based methods, also with the established low-level, object-level and high-level image descriptions is performed, that further leads to a hybrid approach combining salient visual information. Quantitative evaluation of investigated methods suggests the suitability of particular graph variants for automatic classification using H&E stained histopathological gastric cancer whole slide images based on HER2 immunohistochemistry.
机译:在本文中,广泛研究了细胞核归属关系图,对H&E中的有效知识描述和分类进行了广泛的研究和相对分析了胃癌的整个幻灯片图像。这包括具有不同组织组件特性和架构特性的多个图形变化的设计和实现,以获得增强的图像表示,然后是分层集合学习和分类。对所提出的基于图形的方法的详细比较分析,也具有所建立的低级,对象级和高级图像描述,其进一步导致混合方法组合突出的视觉信息。研究方法的定量评估表明,使用H&E染色的组织病理学胃癌整个幻灯片图像基于HER2免疫组化的特定曲线变体的适用性。

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