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Fuzzy Clustering and Active Contours for Histopathology Image Segmentation and Nuclei Detection

机译:用于组织病理学图像分割和核检测的模糊聚类和主动轮廓

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Histopathology imaging provides high resolution multispec-tral images for study and diagnosis of various types of cancers. The automatic analysis of these images can greatly facilitate the diagnosis task for pathologists. A primary step in computational histology is accurate image segmentation to detect the number and spatial distribution of cell nuclei in the tissue, along with segmenting other guiding structures such as lumen and epithelial regions which together make up a gland structure. This paper presents a new method for gland structure segmentation and nuclei detection. In the first step, fuzzy c-means with spatial constraint algorithm is applied to detect the potential regions of interest, multiphase vector-based level set algorithm is then used to refine the segmentation. Finally, individual nucleus centers are detected from segmented nuclei clusters using iterative voting algorithm. The obtained results show high performances for nuclei detection compared to the human annotation.
机译:组织病理学成像可提供高分辨率的多光谱图像,用于研究和诊断各种类型的癌症。这些图像的自动分析可以极大地促进病理学家的诊断任务。计算组织学的第一步是准确的图像分割,以检测组织中细胞核的数量和空间分布,以及分割其他引导结构,例如一起构成腺体结构的内腔和上皮区域。本文提出了一种新的腺体结构分割和细胞核检测方法。第一步,应用具有空间约束算法的模糊c均值检测潜在的感兴趣区域,然后使用基于多相矢量的水平集算法细化分割。最后,使用迭代投票算法从分段的核簇中检测单个核中心。与人类注释相比,所获得的结果显示出较高的核检测性能。

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