Li Hui, Giger Maryellen L, Huo Zhimin, Olopade Olufunmilayo I, Lan Li, Weber Barbara L, Bonta Ioana
Department of Radiology, The University of Chicago, Chicago, Illinois 60637, USA.
Med Phys. 2004 Mar;31(3):549-55. doi: 10.1118/1.1644514.
The long-term goal of our research is to develop computerized radiographic markers for assessing breast density and parenchymal patterns that may be used together with clinical measures for determining the risk of breast cancer and assessing the response to preventive treatment. In our earlier studies, we found that women at high risk tended to have dense breasts with mammographic patterns that were coarse and low in contrast. With our method, computerized texture analysis is performed on a region of interest (ROI) within the mammographic image. In our current study, we investigate the effect of ROI size and ROI location on the computerized texture features obtained from 90 subjects (30 BRCA1/BRCA2 gene-mutation carriers and 60 age-matched women deemed to be at low risk for breast cancer). Mammograms were digitized at 0.1 mm pixel size and various ROI sizes were extracted from different breast regions in the craniocaudal (CC) view. Seventeen features, which characterize the density and texture of the parenchymal patterns, were extracted from the ROIs on these digitized mammograms. Stepwise feature selection and linear discriminant analysis were applied to identify features that differentiate between the low-risk women and the BRCA1/BRCA2 gene-mutation carriers. ROC analysis was used to assess the performance of the features in the task of distinguishing between these two groups. Our results show that there was a statistically significant decrease in the performance of the computerized texture features, as the ROI location was varied from the central region behind the nipple. However, we failed to show a statistically significant decrease in the performance of the computerized texture features with decreasing ROI size for the range studied.
我们研究的长期目标是开发计算机化的放射学标记物,用于评估乳腺密度和实质模式,这些标记物可与临床测量方法一起用于确定乳腺癌风险和评估预防治疗的效果。在我们早期的研究中,我们发现高危女性往往乳房密度较高,乳房X线摄影模式粗糙且对比度低。使用我们的方法,对乳房X线图像中的感兴趣区域(ROI)进行计算机化纹理分析。在我们当前的研究中,我们调查了ROI大小和ROI位置对从90名受试者(30名BRCA1/BRCA2基因突变携带者和60名年龄匹配的被认为乳腺癌低风险女性)获得的计算机化纹理特征的影响。乳房X线照片以0.1毫米像素大小数字化,并在头尾位(CC)视图中从不同乳房区域提取各种ROI大小。从这些数字化乳房X线照片上的ROI中提取了17个表征实质模式密度和纹理的特征。应用逐步特征选择和线性判别分析来识别区分低风险女性和BRCA1/BRCA2基因突变携带者的特征。ROC分析用于评估这些特征在区分这两组任务中的性能。我们的结果表明,当ROI位置从乳头后方的中央区域变化时,计算机化纹理特征的性能在统计学上有显著下降。然而,在所研究的范围内,随着ROI大小减小,我们未能显示计算机化纹理特征的性能在统计学上有显著下降。