Segmentation of cell clusters in Pap smear images using intensity variation between superpixels

M. E. Plissiti, Michalis Vrigkas, Christophoros Nikou
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引用次数: 18

Abstract

The automated interpretation of Pap smear images is a challenging issue with several aspects. The accurate segmentation of the structuring elements of each cell is a crucial procedure which entails in the correct identification of pathological situations. However, the extended cell overlapping in Pap smear slides complicates the automated analysis of these cytological images. In this work, we propose an efficient algorithm for the separation of the cytoplasm area of overlapping cells. The proposed method is based on the fact that in isolated cells the pixels of the cytoplasm exhibit similar features and the cytoplasm area is homogeneous. Thus, the observation of intensity changes in extended subareas of the cytoplasm indicates the existence of overlapping cells. In the first step of the proposed method, the image is tesselated into perceptually meaningful individual regions using a superpixel algorithm. In a second step, these areas are merged into regions exhibiting the same characteristics, resulting in the identification of each cytoplasm area and the corresponding nuclei. The area of overlap is then detected using an algorithm that specifies faint changes in the intensity of the cytoplasm of each cell. The method has been evaluated on cytological images of conventional Pap smears, and the results are very promising.
利用超像素间的强度变化分割巴氏涂片图像中的细胞簇
巴氏涂片图像的自动解释是一个具有挑战性的问题,有几个方面。准确分割每个细胞的结构元素是一个关键的程序,需要在病理情况的正确识别。然而,扩展细胞重叠在巴氏涂片复杂的自动分析这些细胞学图像。在这项工作中,我们提出了一种有效的分离重叠细胞细胞质区域的算法。提出的方法是基于这样一个事实,即在分离的细胞中,细胞质像素表现出相似的特征和细胞质面积是均匀的。因此,观察到细胞质扩展亚区的强度变化表明存在重叠细胞。在该方法的第一步中,使用超像素算法将图像镶嵌成具有感知意义的单个区域。在第二步中,将这些区域合并为具有相同特征的区域,从而识别每个细胞质区域和相应的细胞核。然后使用一种算法检测重叠区域,该算法指定每个细胞细胞质强度的微弱变化。该方法已在常规巴氏涂片细胞学图像上进行了评估,结果非常有希望。
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