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A Novel Geodesic Distance Based Clustering Approach to Delineating Boundaries of Touching Cells

机译:一种基于测地距离的聚类新方法来描述触摸单元的边界

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In this paper, we propose a novel geodesic distance based clustering approach for delineating boundaries of touching cells. In specific, the Riemannian metric is firstly adopted to integrate the spatial distance and intensity variation. Then the distance between any two given pixels under this metric is computed as the geodesic distance in a propagational way, and the K-means-like algorithm is deployed in clustering based on the propagational distance. The proposed method was validated to segment the touching Madin-Darby Canine Kidney (MDCK) epithelial cell images for measuring their N-Ras protein expression patterns inside individual cells. The experimental results and comparisons demonstrate the advantages of the proposed method in massive cell segmentation and robustness to the initial seeds selection, varying intensity contrasts and high cell densities in microscopy images.
机译:在本文中,我们提出了一种新颖的基于测地距离的聚类方法来描绘触摸单元的边界。具体而言,首先采用黎曼度量来整合空间距离和强度变化。然后,以传播方式计算该度量下任意两个给定像素之间的距离作为测地距离,并根据传播距离在聚类中部署类似K均值的算法。所提出的方法经过验证,可以分割接触的Madin-Darby犬肾(MDCK)上皮细胞图像,以测量其在单个细胞内的N-Ras蛋白表达模式。实验结果和比较结果证明了该方法在大规模细胞分割和鲁棒性方面的优势,可用于初始种子选择,变化强度对比和显微镜图像中的高细胞密度。

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