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Cervical Histopathology Image Clustering Using Graph Based Unsupervised Learning

机译:宫颈组织病理学图像聚类使用基于曲线无监督学习

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In order to apply the important topological information to solve a Cervical Histopathology Image Clustering (CHIC) problem, a Graph Based Unsupervised Learning (GBUL) approach is proposed in this paper. First, the GBUL method applies color features and k-means clustering for a first-stage "coarse" clustering. Then, a Skeletonization Based Node Generation (SBNG) approach is introduced to approximate the distribution of cervical cell nuclei. Thirdly, based on the SBNG nodes, a minimum spanning tree graph is constructed. Next, graph features and additional geometrical features are extracted based on the constructed graph. Finally, the k-means clustering is applied again for the second-stage clustering. In the experiment, a practical cervical histopathology image dataset with ten whole scanned images is tested, obtaining a promising CHIC result and showing a huge potential in the cancer risk prediction field.
机译:为了应用重要的拓扑信息来解决宫颈组织病理学图像聚类(CHIC)问题,本文提出了一种基于图的无监督学习(GBUL)方法。首先,GBUL方法应用用于第一级“粗”聚类的颜色特征和k均值群集。然后,引入基于骨架化的节点生成(SBNG)方法以近似宫颈细胞核的分布。第三,基于SBNG节点,构建了最小的生成树图。接下来,基于构造的图形提取图表特征和额外的几何特征。最后,k-means聚类再次应用于第二阶段聚类。在实验中,测试了具有十个整个扫描图像的实际宫颈组织病理学图像数据集,获得了有希望的别致的结果并显示出癌症风险预测领域的巨大潜力。

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