...
首页> 外文期刊>Acta polytechnica >Automated Classification of Analysis- and Reference Cells for Cancer Diagnostics in Microscopic Images of Epithelial Cells from the Oral Mucosa
【24h】

Automated Classification of Analysis- and Reference Cells for Cancer Diagnostics in Microscopic Images of Epithelial Cells from the Oral Mucosa

机译:自动分析和参考细胞的分类,用于口腔黏膜上皮细胞显微图像中的癌症诊断

获取原文
           

摘要

To get the best possible chance of healing, cancer has to be detected as early as possible. As cancer starts within a single cell, cytopathological methods offer the possibility of early detection. One such method is standardized DNA image cytometry. For this, the diagnostically relevant cells have to be found within each specimen, which is currently performed manually. Since this is a time-consuming process, a preselection of diagnostically relevant cells has to be performed automatically. For specimens of the oral mucosa this involves distinguishing between undoubted healthy epithelial cells and possibly cancerous epithelial cells. Based on cell images from a brightfield light microscope, a set of morphological and textural features was implemented. To identify highly distinctive feature subsets the sequential forward floating search method is used. For these feature sets k-nearest neighbor and fuzzy k-nearest neighbor classifiers as well as support vector machines were trained. On a validation set of? cells it could be shown that normal and possibly cancerous cells can be distinguished at overall rates above 95.5 % for different classifiers, enabling us to choose the support vector machine with a set of two features only as the classifier with the lowest computational costs.?
机译:为了获得最佳的治愈机会,必须尽早发现癌症。随着癌症在单个细胞内开始,细胞病理学方法提供了早期发现的可能性。一种这样的方法是标准化的DNA图像细胞术。为此,必须在每个样本中找到与诊断相关的细胞,这目前是手动执行的。由于这是一个耗时的过程,因此必须自动执行诊断相关单元的预选。对于口腔粘膜标本,这涉及区分毫无疑问的健康上皮细胞和可能的癌性上皮细胞。基于明场光学显微镜的细胞图像,实现了一组形态和纹理特征。为了识别高度不同的特征子集,使用了顺序前向浮动搜索方法。对于这些特征集,训练了k最近邻和模糊k最近邻分类器以及支持向量机。在验证集上?可以证明,对于不同的分类器,正常细胞和可能的癌细胞的总体识别率可以达到95.5%以上,这使我们能够选择具有两个特征的支持向量机作为仅具有最低计算成本的分类器。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号