Schilling T, Miroslaw L, Glab G, Smereka M
Institute of Artificial Intelligence, Dresden University of Technology, Dresden, Germany.
Int J Gynecol Cancer. 2007 Jan-Feb;17(1):118-26. doi: 10.1111/j.1525-1438.2007.00828.x.
In this paper, a combination of two methods based on texture analysis, contour grouping, and pattern recognition techniques is presented to detect and classify pathologic cells in cervical vaginal smears using the phase-contrast microscopy. The first method applies statistical geometrical features to detect image regions that contain epithelial cells and hide those regions with medium and contamination. Sequential forward floating selection was used to identify the most representative features. A shape of cells was identified by applying an active contour model supported by some postprocessing techniques. The second method applies edge detection, ridge following, contour grouping, and Fisher linear discriminant to detect abnormal nuclei. Evaluation of the algorithms' performance and comparison with alternative approaches show that both methods are reliable and, when combined, improve the classification. By presenting only images or their parts that are diagnostically important, the method unburdens a physician from massive and messy data. It also indicates abnormalities marking atypical nuclei and, in that sense, supports diagnosis of cervical cancer.
本文提出了一种基于纹理分析、轮廓分组和模式识别技术的两种方法相结合的方法,用于使用相差显微镜检测和分类宫颈阴道涂片病理细胞。第一种方法应用统计几何特征来检测包含上皮细胞的图像区域,并隐藏那些中等程度和有污染的区域。使用顺序向前浮动选择来识别最具代表性的特征。通过应用由一些后处理技术支持的主动轮廓模型来识别细胞形状。第二种方法应用边缘检测、脊线跟踪、轮廓分组和Fisher线性判别来检测异常细胞核。对算法性能的评估以及与其他方法的比较表明,这两种方法都是可靠的,并且结合使用时可以提高分类效果。通过仅呈现具有诊断重要性的图像或其部分,该方法减轻了医生处理大量杂乱数据的负担。它还能指示标记非典型细胞核的异常情况,从这个意义上说,支持宫颈癌的诊断。