Detection of Clusters of Microcalcifications in Mammograms: A Multi Classifier Approach

C. D'Elia, C. Marrocco, M. Molinara, F. Tortorella
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引用次数: 13

Abstract

Mammography is a not invasive diagnostic technique widely used for early cancer detection in women breast. A particularly significant clue of such disease is the presence of clusters of microcalcifications. The automatic detection and classification of such clusters is a very difficult task because of the small size of the microcalcifications and of the poor quality of the digital mammograms. In literature, all the proposed methods for the automatic detection focus on the single microcalcification. In this paper, an approach that moves the final decision on the regions identified by the segmentation in the phase of clustering is proposed. To this aim, the output of a classifier on the single microcalcifications is used as input data in a clustering algorithms which produce the detected clusters. As final output the system highlights the suspicious clusters, leaving to the specialist the diagnosis responsibility. The approach has been successfully tested on a standard database of 40 mammographic images, publicly available.
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乳房x光片中微钙化簇的检测:一种多分类方法
乳房x线照相术是一种非侵入性的诊断技术,广泛用于女性乳房早期癌症的检测。这种疾病的一个特别重要的线索是微钙化团的存在。由于微钙化的小尺寸和数字乳房x光片的低质量,自动检测和分类这些簇是一项非常困难的任务。在文献中,所有提出的自动检测方法都集中在单个微钙化上。本文提出了一种在聚类阶段对分割识别的区域进行最终决策的方法。为此,分类器对单个微钙化的输出被用作聚类算法的输入数据,从而产生检测到的聚类。作为最后的输出,系统突出可疑的集群,留给专家诊断的责任。这种方法已经在一个包含40张公开乳房x光照片的标准数据库中成功地进行了测试。
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