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Analysis of the Cluster Prominence Feature for Detecting Calcifications in Mammograms

机译:乳腺X线照片钙化的聚类突出特征分析

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摘要

In mammograms, a calcification is represented as small but brilliant white region of the digital image. Earlier detection of malignant calcifications in patients provides high expectation of surviving to this disease. Nevertheless, white regions are difficult to see by visual inspection because a mammogram is a gray-scale image of the breast. To help radiologists in detecting abnormal calcification, computer-inspection methods of mammograms have been proposed; however, it remains an open important issue. In this context, we propose a strategy for detecting calcifications in mammograms based on the analysis of the cluster prominence (cp) feature histogram. The highest frequencies of the cp histogram describe the calcifications on the mammography. Therefore, we obtain a function that models the behaviour of the cp histogram using the Vandermonde interpolation twice. The first interpolation yields a global representation, and the second models the highest frequencies of the histogram. A weak classifier is used for obtaining a final classification of the mammography, that is, with or without calcifications. Experimental results are compared with real DICOM images and their corresponding diagnosis provided by expert radiologists, showing that the cp feature is highly discriminative.
机译:在乳房X光照片中,钙化表示为数字图像的小而明亮的白色区域。较早发现患者的恶性钙化对这种疾病的存活率具有很高的期望。但是,由于乳房X线照片是乳房的灰度图像,因此通过肉眼检查很难看到白色区域。为了帮助放射科医生检测钙化异常,已经提出了计算机检查乳房X线照片的方法。但是,这仍然是一个悬而未决的重要问题。在这种情况下,我们提出了一种基于聚类突出(cp)特征直方图的分析来检测乳房X线照片中钙化的策略。 cp直方图的最高频率描述了乳房X线照片上的钙化。因此,我们获得了使用范德蒙德插值两次对cp直方图的行为进行建模的函数。第一个插值产生全局表示,第二个插值模拟直方图的最高频率。弱分类器用于获得乳腺X线照片的最终分类,即有无钙化。将实验结果与真实的DICOM图像进行比较,并由放射专家提供相应的诊断,表明cp功能具有很高的判别力。

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