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用于乳腺癌风险评估的乳腺X线实质模式的计算机分析:特征选择

Computerized analysis of mammographic parenchymal patterns for breast cancer risk assessment: feature selection.

作者信息

Huo Z, Giger M L, Wolverton D E, Zhong W, Cumming S, Olopade O I

机构信息

Department of Radiology, The University of Chicago, Illinois 60637, USA.

出版信息

Med Phys. 2000 Jan;27(1):4-12. doi: 10.1118/1.598851.

Abstract

Our purpose in this study was to identify computer-extracted, mammographic parenchymal patterns that are associated with breast cancer risk. We extracted 14 features from the central breast region on digitized mammograms to characterize the mammographic parenchymal patterns of women at different risk levels. Two different approaches were employed to relate these mammographic features to breast cancer risk. In one approach, the features were used to distinguish mammographic patterns seen in low-risk women from those who inherited a mutated form of the BRCA1/BRCA2 gene, which confers a very high risk of developing breast cancer. In another approach, the features were related to risk as determined from existing clinical models (Gail and Claus models), which use well-known epidemiological factors such as a woman's age, her family history of breast cancer, reproductive history, etc. Stepwise linear discriminant analysis was employed to identify features that were useful in differentiating between "low-risk" women and BRCA1/BRCA2-mutation carriers. Stepwise linear regression analysis was employed to identify useful features in predicting the risk, as estimated from the Gail and Claus models. Similar computer-extracted mammographic features were identified in the two approaches. Results show that women at high risk tend to have dense breasts and their mammographic patterns tend to be coarse and low in contrast.

摘要

我们开展这项研究的目的是识别与乳腺癌风险相关的计算机提取的乳腺X线实质模式。我们从数字化乳腺X线片中的乳腺中央区域提取了14个特征,以表征不同风险水平女性的乳腺X线实质模式。采用了两种不同的方法将这些乳腺X线特征与乳腺癌风险联系起来。在一种方法中,这些特征用于区分低风险女性与携带BRCA1/BRCA2基因突变形式的女性的乳腺X线模式,携带该基因突变会带来非常高的患乳腺癌风险。在另一种方法中,这些特征与根据现有临床模型(盖尔模型和克劳斯模型)确定的风险相关,这些模型使用女性年龄、乳腺癌家族史、生育史等众所周知的流行病学因素。采用逐步线性判别分析来识别有助于区分“低风险”女性和BRCA1/BRCA2基因突变携带者的特征。采用逐步线性回归分析来识别在预测盖尔模型和克劳斯模型所估计的风险方面有用的特征。在这两种方法中识别出了相似的计算机提取的乳腺X线特征。结果显示,高风险女性往往乳房致密,其乳腺X线模式往往粗糙且对比度低。

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