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Association between Mammogram Density and Background Parenchymal Enhancement of Breast MRI

机译:乳房X线图密度与背景实质增强乳腺MRI之间的关联

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Breast density has been widely considered as an important risk factor for breast cancer. The purpose of this study is to examine the association between mammogram density results and background parenchymal enhancement (BPE) of breast MRI. A dataset involving breast MR images was acquired from 65 high-risk women. Based on mammography density (BIRADS) results, the dataset was divided into two groups of low and high breast density cases. The Low-Density group has 15 cases with mammographic density (BIRADS 1 and 2), while the High-density group includes 50 cases, which were rated by radiologists as mammographic density BIRADS 3 and 4. A computer-aided detection (CAD) scheme was applied to segment and register breast regions depicted on sequential images of breast MRI scans. CAD scheme computed 20 global BPE features from the entire two breast regions, separately from the left and right breast region, as well as from the bilateral difference between left and right breast regions. An image feature selection method namely, CFS method, was applied to remove the most redundant features and select optimal features from the initial feature pool. Then, a logistic regression classifier was built using the optimal features to predict the mammogram density from the BPE features. Using a leave-one-case-out validation method, the classifier yields the accuracy of 82% and area under ROC curve, AUC=0.81±0.09. Also, the box-plot based analysis shows a negative association between mammogram density results and BPE features in the MRI images. This study demonstrated a negative association between mammogram density and BPE of breast MRI images.
机译:乳房密度被广泛认为是乳腺癌的重要危险因素。本研究的目的是检查乳房MRI的乳房X线图密度结果和背景实质增强(BPE)之间的关联。涉及乳房MR图像的数据集是从65名高危女性获得。基于乳房X线摄影密度(Birads)结果,将数据集分为两组低乳房密度案例。低密度组有15例乳房X线乳腺X线(Birads 1和2),而高密度组包括50例,其被放射池归类为乳房X光密度Birad 3和4。计算机辅助检测(CAD)方案应用于乳腺MRI扫描的顺序图像中描绘的段和寄存器乳房区域。 CAD方案20计算全球BPE从整个两个胸区域设有,分别从左右乳房区域,以及从左右乳房区域之间的双边差。图像特征选择方法即CFS方法,应用于删除最冗余的功能,并从初始功能池中选择最佳功能。然后,使用最佳功能构建逻辑回归分类器以预测来自BPE特征的乳房X线图密度。使用休假一例验证方法,分类器产生82%和ROC曲线区域的精度,AUC = 0.81±0.09。此外,基于盒子图谱的分析显示了MRI图像中的乳房X线图密度结果和BPE特征之间的负关联。该研究表明了乳腺MRI图像乳房X线图密度和BPE之间的负关联。

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