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IDensity: An automatic Gabor filter-based algorithm for breast density assessment

机译:IDensity:基于Gabor滤波器的自动算法,用于乳房密度评估

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Although many semi-automated and automated algorithms for breast density assessment have been recently proposed, none of these have been widely accepted. In this study a novel automated algorithm, named iDensity, inspired by the human visual system is proposed for classifying mammograms into four breast density categories corresponding to the Breast Imaging Reporting and Data System (BI-RADS). For each BI-RADS category 80 cases were taken from the normal volumes of the Digital Database for Screening Mammography (DDSM). For each case only the left mediolateral oblique was utilized. After image calibration using the provided tables of each scanner in the DDSM, the pectoral muscle and background were removed. Images were filtered by a median filter and down sampled. Images were then filtered by a filter bank consisting of Gabor filters in six orientations and 3 scales, as well as a Gaussian filter. Three gray level histogram-based features and three second order statistics features were extracted from each filtered image. Using the extracted features, mammograms were separated initially separated into two groups, low or high density, then in a second stage, the low density group was subdivided into BI-RADS Ⅰ or Ⅱ, and the high density group into BI-RADS Ⅲ or Ⅳ. The algorithm achieved a sensitivity of 95% and specificity of 94% in the first stage, sensitivity of 89% and specificity of 95% when classifying BI-RADS Ⅰ or Ⅱ cases, and a sensitivity of 88% and 91% specificity when classifying BI-RADS Ⅲ or Ⅳ.
机译:尽管最近提出了许多半自动和自动的乳腺密度评估算法,但这些算法均未被广泛接受。在这项研究中,提出了一种新颖的自动算法,名为iDensity,其灵感来自人类的视觉系统,用于将乳房X光照片分为与乳房成像报告和数据系统(BI-RADS)相对应的四个乳房密度类别。对于每个BI-RADS类别,从乳腺X线筛查数字数据库(DDSM)的正常卷中抽取80例。对于每种情况,仅使用左中外侧斜肌。使用DDSM中每个扫描仪提供的表格进行图像校准后,去除了胸肌和背景。图像由中值滤镜过滤并向下采样。然后,图像由包含六个方向和3个比例的Gabor滤波器以及高斯滤波器组成的滤波器组进行滤波。从每个滤波图像中提取了三个基于灰度直方图的特征和三个二阶统计特征。利用提取的特征,乳房X线照片首先被分为低密度或高密度两组,然后在第二阶段,将低密度组细分为BI-RADSⅠ或Ⅱ,将高密度组细分为BI-RADSⅢ或。 Ⅳ。该算法在第一阶段的敏感性为95%,特异性为94%,对BI-RADSⅠ或Ⅱ病例进行分类时,敏感性为89%,特异性为95%,对BI进行分类时,特异性为88%和91% -RADSⅢ或Ⅳ。

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