Cahn R L, Poulsen R S, Toussaint G
J Histochem Cytochem. 1977 Jul;25(7):681-8. doi: 10.1177/25.7.330721.
A major problem in the automation of cervical cytology screening is the segmentation of cell images. This paper describes various standard segmentation methods plus one which determines a segmentation threshold based on the stability of the perimeter of the cell as the threshold is varied. As well as contour, certain structural information is used to decide upon the threshold which separates cytoplasm from the background. Once the cytoplasm threshold is found, cytoplasm and nucleus are separated by simple clustering into three groups, cytoplasm, folded cytoplasm and nucleus. These techniques have been tested on 1500 cervical cells that belong to one of eight normal classes and five abnormal classes. A minimum Mahalanobis distance classifier was used to compare results. Manually thresholded cells were classified correctly 66.0% of the time for the 13 class problem and 95.2% of the time on the two (normal-abnormal) class problem. The contour tracing technique was 52.9% and 90.0% correct, respectively.
宫颈细胞学筛查自动化中的一个主要问题是细胞图像的分割。本文介绍了各种标准分割方法,以及一种基于细胞周长随阈值变化的稳定性来确定分割阈值的方法。除了轮廓,还利用某些结构信息来确定将细胞质与背景分开的阈值。一旦找到细胞质阈值,就通过简单聚类将细胞质和细胞核分为三组:细胞质、折叠细胞质和细胞核。这些技术已在1500个宫颈细胞上进行了测试,这些细胞属于八个正常类别和五个异常类别之一。使用最小马氏距离分类器来比较结果。对于13类问题,手动阈值化的细胞分类正确的时间为66.0%,对于两类(正常-异常)问题,正确的时间为95.2%。轮廓追踪技术的正确率分别为52.9%和90.0%。