Department of Radiology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, 19104, USA.
Sci Rep. 2018 Nov 30;8(1):17489. doi: 10.1038/s41598-018-35929-9.
We retrospectively analyzed negative screening digital mammograms from 115 women who developed unilateral breast cancer at least one year later and 460 matched controls. Texture features were estimated in multiple breast regions defined by an anatomically-oriented polar grid, and were weighted by their position and underlying dense versus fatty tissue composition. Elastic net regression with cross-validation was performed and area under the curve (AUC) of the receiver operating characteristic (ROC) was used to evaluate ability to predict breast cancer. We also compared our anatomy-augmented features to current state-of-the-art in which parenchymal texture was assessed without considering breast anatomy and evaluated the added value of the extracted features to breast density, body-mass-index (BMI) and age as baseline predictors. Our anatomy-augmented texture features resulted in higher discriminatory capacity (AUC = 0.63 vs. AUC = 0.59) when breast anatomy was not considered (p = 0.021), with dense tissue regions and the central breast quadrant being more heavily weighted. Texture also improved baseline models (from AUC = 0.62 to AUC = 0.67, p = 0.029). Our findings suggest that incorporating breast anatomy information could augment imaging markers of breast cancer risk with the potential to improve personalized breast cancer risk assessment.
我们回顾性分析了 115 名至少一年后单侧乳腺癌发病的女性和 460 名匹配对照者的阴性筛查数字乳房 X 线照片。在解剖定向极坐标网格定义的多个乳房区域中估计纹理特征,并根据其位置和潜在的致密与脂肪组织成分对其进行加权。采用交叉验证的弹性网回归,并使用接收者操作特性(ROC)曲线下面积(AUC)来评估预测乳腺癌的能力。我们还将我们的解剖增强特征与目前的最新技术进行了比较,在这种技术中,不考虑乳房解剖结构来评估实质纹理,并评估提取特征对乳腺密度、体重指数(BMI)和年龄作为基线预测因素的附加值。当不考虑乳房解剖结构时,我们的解剖增强纹理特征具有更高的判别能力(AUC=0.63 与 AUC=0.59,p=0.021),致密组织区域和乳房中央象限的权重更大。纹理也改善了基线模型(从 AUC=0.62 到 AUC=0.67,p=0.029)。我们的研究结果表明,纳入乳房解剖结构信息可以增强乳腺癌风险的影像学标志物,从而有可能改善个性化乳腺癌风险评估。