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A New Augmented K-Means Algorithm for Seed Segmentation in Microscopic Images of the Colon Cancer

机译:一种新的增强型K均值算法,用于结肠癌显微图像中的种子分割

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In this study, we analyze histologic human colon tissue images that we captured with a camera-mounted microscope. We propose the Augmented K-Means Clustering algorithm as a method of segmenting cell nuclei in such colon images. Then we compare the proposed algorithm to the weighted K-Means Clustering algorithm. As a result, we observe that the developed Augmented K-Means Clustering algorithm decreased the needed number of iterations and shortened the duration of the segmentation process. Moreover, the algorithm we propose appears more consistent in comparison to the weighted K-Means Clustering algorithm. We also assess the similarity of the segmented images to the original images, for which we used the Histogram-Based Similarity method. Our assessment indicates that the images segmented by the Augmented K-Means Clustering algorithm are more frequently similar to the original images than the images segmented by the Weighed K-Means Clustering algorithm.
机译:在这项研究中,我们分析了我们用相机安装的显微镜捕获的组织学人类结肠组织图像。我们提出了增强的K-均值聚类算法,作为在这种结肠图像中分割细胞核的一种方法。然后,将提出的算法与加权的K均值聚类算法进行比较。结果,我们观察到已开发的增强K均值聚类算法减少了所需的迭代次数,并缩短了分割过程的持续时间。此外,与加权K均值聚类算法相比,我们提出的算法显得更加一致。我们还使用基于直方图的相似度方法评估了分割图像与原始图像的相似度。我们的评估表明,与通过加权K均值聚类算法分割的图像相比,通过增强K均值聚类算法分割的图像与原始图像更相似。

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