计算机检测双侧乳腺片中的乳腺组织不对称:乳腺风险分层的初步研究。
Computerized detection of breast tissue asymmetry depicted on bilateral mammograms: a preliminary study of breast risk stratification.
机构信息
Department of Radiology, University of Pittsburgh, Pittsburgh, PA 15213, USA.
出版信息
Acad Radiol. 2010 Oct;17(10):1234-41. doi: 10.1016/j.acra.2010.05.016.
RATIONALE AND OBJECTIVES
Assessment of the breast tissue pattern asymmetry depicted on bilateral mammograms is routinely used by radiologists when reading and interpreting mammograms. The purpose of this study is to develop an automated scheme to detect breast tissue asymmetry depicted on bilateral mammograms and use the computed asymmetric features to predict the likelihood (or the risk) of women having or developing breast abnormalities or cancer.
MATERIALS AND METHODS
A testing dataset was selected from a large and diverse full-field digital mammography image database, which includes 100 randomly selected negative cases (not recalled during the screening) and 100 positive cases for having or developing breast abnormalities or cancer. Among these positive cases 40 were recalled (biopsy) because of suspicious findings in which 8 were determined as high risk with the lesions surgically removed and the remaining were proven to be benign, and 60 cases were acquired from examinations that were interpreted as negative (without dominant masses or microcalcifications) but the cancers were detected 6-18 months later. A computerized scheme was developed to detect asymmetry of mammographic tissue density represented by the related feature differences computed from bilateral images. Initially, each of 20 features was tested to classify between the positive and the negative cases. To further improve the classification performance, a genetic algorithm (GA) was applied to select a set of optimal features and build an artificial neural network (ANN). The leave-one-case-out validation method was used to evaluate the ANN classification performance.
RESULTS
Using a single feature, the maximum classification performance level measured by the area under the receiver operating characteristic curve (AUC) was 0.681 ± 0.038. Using the GA-optimized ANN, the classification performance level increased to an AUC = 0.754 ± 0.024. At 90% specificity, the ANN classifier yielded 42% sensitivity, in which 42 positive cases were correctly identified. Among them, 30 were the "prior" examinations of the cancer cases and 12 were recalled benign cases, which represent 50% and 30% sensitivity levels in these two subgroups, respectively.
CONCLUSIONS
This study demonstrated that using the computerized detected feature differences related to the bilateral mammographic breast tissue asymmetry, an automated scheme is able to classify a set of testing cases into the two groups of positive or negative of having or developing breast abnormalities or cancer. Hence, further development and optimization of this automated method may eventually help radiologists identify a fraction of women at high risk of developing breast cancer and ultimately detect cancer at an early stage.
背景与目的
放射科医生在阅读和解释乳房 X 光片时,通常会评估双侧乳房 X 光片中显示的乳房组织模式不对称。本研究的目的是开发一种自动方案来检测双侧乳房 X 光片中显示的乳房组织不对称,并使用计算出的不对称特征来预测女性患有或发展为乳房异常或癌症的可能性(或风险)。
材料与方法
从一个大型、多样化的全数字乳腺 X 线摄影图像数据库中选择了一个测试数据集,其中包括 100 例随机选择的阴性病例(在筛查期间未召回)和 100 例阳性病例,这些病例患有或发展为乳房异常或癌症。在这些阳性病例中,40 例因可疑发现而被召回(活检),其中 8 例被确定为高风险,病变已手术切除,其余均为良性,60 例来自检查,这些检查被解释为阴性(无主导性肿块或微钙化),但在 6-18 个月后发现癌症。开发了一种计算机方案来检测由双侧图像计算得出的相关特征差异表示的乳腺组织密度的不对称性。最初,测试了 20 个特征中的每个特征来对阳性和阴性病例进行分类。为了进一步提高分类性能,应用遗传算法(GA)选择了一组最优特征并构建了人工神经网络(ANN)。采用留一病例验证方法评估 ANN 分类性能。
结果
使用单个特征,接收器工作特征曲线下面积(AUC)测量的最大分类性能水平为 0.681 ± 0.038。使用 GA 优化的 ANN,分类性能水平提高到 AUC = 0.754 ± 0.024。在特异性为 90%时,ANN 分类器的敏感性为 42%,其中 42 例阳性病例被正确识别。其中,30 例为癌症病例的“先前”检查,12 例为召回良性病例,分别代表这两个亚组的 50%和 30%敏感性水平。
结论
本研究表明,使用计算机检测到的与双侧乳腺组织不对称相关的特征差异,自动方案能够将一组测试病例分为阳性或阴性两组,即患有或发展为乳房异常或癌症。因此,这种自动方法的进一步开发和优化可能最终有助于放射科医生识别出患有乳腺癌风险较高的女性,并最终在早期发现癌症。