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Breast Density Analysis Using an Automatic Density Segmentation Algorithm

机译:使用自动密度分割算法的乳房密度分析

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摘要

Breast density is a strong risk factor for breast cancer. In this paper, we present an automated approach for breast density segmentation in mammographic images based on a supervised pixel-based classification and using textural and morphological features. The objective of the paper is not only to show the feasibility of an automatic algorithm for breast density segmentation but also to prove its potential application to the study of breast density evolution in longitudinal studies. The database used here contains three complete screening examinations, acquired 2 years apart, of 130 different patients. The approach was validated by comparing manual expert annotations with automatically obtained estimations. Transversal analysis of the breast density analysis of craniocaudal (CC) and mediolateral oblique (MLO) views of both breasts acquired in the same study showed a correlation coefficient of ρ = 0.96 between the mammographic density percentage for left and right breasts, whereas a comparison of both mammographic views showed a correlation of ρ = 0.95. A longitudinal study of breast density confirmed the trend that dense tissue percentage decreases over time, although we noticed that the decrease in the ratio depends on the initial amount of breast density.
机译:乳房密度是乳腺癌的重要危险因素。在本文中,我们提出了一种基于有监督的基于像素的分类以及使用纹理和形态特征的乳腺X线摄影图像中乳房密度分割的自动方法。本文的目的不仅是展示一种自动算法进行乳房密度分割的可行性,而且还证明了其在纵向研究中研究乳房密度演变的潜在应用。这里使用的数据库包含130位不同患者的三项完整的筛查检查,相隔2年进行一次检查。通过将手动专家注释与自动获得的估计值进行比较来验证该方法。在同一研究中获得的双侧乳房的颅尾角(CC)和中外侧斜(MLO)视图的乳房密度分析的横向分析显示,左右乳房的乳房X线照片密度百分比之间的相关系数为ρ= 0.96,而对两种乳腺X线照片均显示为ρ= 0.95。对乳房密度的纵向研究证实了致密组织百分比随时间降低的趋势,尽管我们注意到比率的降低取决于乳房密度的初始数量。

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