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Assessment of Global and Local Region-based Bilateral Mammographic Feature Asymmetry to Predict Short-Term Breast Cancer Risk

机译:评估基于全球和局部区域的双边乳房X线摄影特征不对称性以预测短期乳腺癌风险

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摘要

This study aims to develop and test a new imaging marker-based short-term breast cancer risk prediction model. An age-matched dataset of 566 screening mammography cases was used. All “prior” images acquired in the two screening series were negative, while in the “current” screening images, 283 cases were positive for cancer and 283 cases remained negative. For each case, two bilateral cranio-caudal view mammograms acquired from the “prior” negative screenings were selected and processed by a computer-aided image processing scheme, which segmented the entire breast area into 9 strip-based local regions, extracted the element regions using difference of Gaussian filters, and computed both global- and local-based bilateral asymmetrical image features. An initial feature pool included 190 features related to the spatial distribution and structural similarity of grayscale values, as well as of the magnitude and phase responses of multidirectional Gabor filters. Next, a short-term breast cancer risk prediction model based on a generalized linear model (GLM) was built using an embedded stepwise regression analysis method to select features and a leave-one-case-out cross-validation method to predict the likelihood of each woman having image-detectable cancer in the next sequential mammography screening. The area under the receiver operating characteristic curve (AUC) values significantly increased from 0.5863±0.0237 to 0.6870±0.0220 when the model trained by the image features extracted from global regions and by features extracted from both the global and the matched local regions(p=0.0001). The odds ratios values monotonically increased from 1.00 to 8.11 with a significantly increasing trend in slope (p=0.0028) as the model-generated risk score increased. In addition, the AUC values were 0.6555±0.0437, 0.6958±0.0290 and 0.7054±0.0529 for the 3 age groups of 37-49, 50-65 and 66-87 years old, respectively. AUC values of 0.6529±0.1100, 0.6820±0.0353, 0.6836±0.0302 and 0.8043±0.1067 were yielded for the 4 mammography density sub-groups (BIRADS from 1 to 4), respectively. This study demonstrated that bilateral asymmetry features extracted from local regions combined with the global region in bilateral negative mammograms could be used as a new imaging marker to assist in the prediction of short-term breast cancer risk.
机译:这项研究旨在开发和测试一种新的基于影像学标记物的短期乳腺癌风险预测模型。使用年龄匹配的566个乳房X线筛查病例的数据集。在两个筛查系列中获得的所有“先前”图像均为阴性,而在“当前”筛查图像中,有283例癌症呈阳性,而283例仍呈阴性。对于每种情况,选择两个从“先前”阴性筛查中获得的双侧颅尾段乳房X线照片,并通过计算机辅助图像处理方案进行处理,该方案将整个乳房区域分割成9个基于带状的局部区域,提取出元素区域使用高斯滤波器的差异,并计算了基于全局和基于局部的双边不对称图像特征。初始特征池包括190个与灰度值的空间分布和结构相似性以及多向Gabor滤波器的幅度和相位响应有关的特征。接下来,使用嵌入式逐步回归分析方法选择特征,并使用留一事例交叉验证方法建立基于广义线性模型(GLM)的短期乳腺癌风险预测模型。在接下来的乳房X线摄影筛查中,每位女性都有可检测图像的癌症。当模型从全局区域提取的图像特征以及从全局区域和匹配的局部区域提取的特征训练的模型训练时,接收器工作特性曲线(AUC)值下的面积从0.5863±0.0237显着增加到0.6870±0.0220(p = 0.0001)。随着模型生成的风险评分的增加,优势比值从1.00单调增加到8.11,并且斜率显着增加(p = 0.0028)。此外,三个年龄组的37-49岁,50-65岁和66-87岁的AUC值分别为0.6555±0.0437、0.6958±0.0290和0.7054±0.0529。对于4个乳腺X射线摄影密度子组(BIRADS从1到4),AUC值分别为0.6529±0.1100、0.6820±0.0353、0.6836±0.0302和0.8043±0.1067。这项研究表明,从局部区域提取的双侧不对称特征与双侧负乳腺X线照片中的全局区域相结合,可以用作新的影像学标志物,以协助预测短期乳腺癌风险。

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