子宫颈癌细胞图像的自动筛选

M. Sangworasil, Chayanisa Sukkasem, Suvicha Sasivimolkul, Phitsini Suvarnaphaet, Suejit Pechprasarn, Rujirada Thongchoom, M. Janyasupab
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引用次数: 2

摘要

在泰国,子宫颈癌是最常见的女性癌症类型,也是第二大死因。子宫颈癌的人数每年都在增加,尽管它可以通过早期发现的筛查来预防。最流行的筛查方法是所谓的巴氏涂片检查,通过检查宫颈细胞的形态变化。本研究的目的是实现一种通过计算细胞核与细胞质面积比对巴氏涂片细胞图像进行分类的图像处理算法。对核进行分类的算法通过k-均值聚类进行数学计算。利用几何旋转法从细胞质边缘轮廓计算细胞质面积。最后,利用核质比面积对异常细胞进行分割,检测准确率为79%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Screening of Cervical Cancer Cell Images
Cervical cancer is the first-most common type of female cancer and the second leading cause of death in Thailand. The number of cervical cancer is increasing in every year, even though it is preventable by the screening in early detection. The most popular method for the screening is so-called Pap smear test via examining morphology change in cervix cells. The aim of this research is to implement an image processing algorithm for classifying Pap smear cell images by calculating nucleus-to-cytoplasm area ratio. The algorithm used to classify the nucleus was mathematically calculated through k-mean clustering. The cytoplasm area was calculated from its edge profile relating to geometrical rotation method. Finally, the abnormal cells can be segmented using the area of nucleus-to-cytoplasm ratio with the accuracy of detection at 79%.
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