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High-throughput mammographic-density measurement: a tool for risk prediction of breast cancer

机译:高通量乳腺密度测量:乳腺癌风险预测的工具

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IntroductionMammographic density (MD) is a strong, independent risk factor for breast cancer, but measuring MD is time consuming and reader dependent. Objective MD measurement in a high-throughput fashion would enable its wider use as a biomarker for breast cancer. We use a public domain image-processing software for the fully automated analysis of MD and penalized regression to construct a measure that mimics a well-established semiautomated measure (Cumulus). We also describe measures that incorporate additional features of mammographic images for improving the risk associations of MD and breast cancer risk.MethodsWe randomly partitioned our dataset into a training set for model building (733 cases, 748 controls) and a test set for model assessment (765 cases, 747 controls). The Pearson product-moment correlation coefficient (r) was used to compare the MD measurements by Cumulus and our automated measure, which mimics Cumulus. The likelihood ratio test was used to validate the performance of logistic regression models for breast cancer risk, which included our measure capturing additional information in mammographic images.ResultsWe observed a high correlation between the Cumulus measure and our measure mimicking Cumulus (r = 0.884; 95% CI, 0.872 to 0.894) in an external test set. Adding a variable, which includes extra information to percentage density, significantly improved the fit of the logistic regression model of breast cancer risk (P = 0.0002).ConclusionsOur results demonstrate the potential to facilitate the integration of mammographic density measurements into large-scale research studies and subsequently into clinical practice.
机译:简介乳腺密度(MD)是乳腺癌的重要独立危险因素,但测量MD既费时又取决于读者。以高通量方式进行客观的MD测量将使其更广泛地用作乳腺癌的生物标志物。我们使用公共领域的图像处理软件对MD和惩罚回归进行全自动分析,以构建模仿成熟的半自动化度量(积算)的度量。我们还描述了一些措施,这些措施结合了乳腺X线照片的其他功能,以改善MD和乳腺癌风险之间的关联性。 765个案例,747个控件)。皮尔逊积矩相关系数(r)用于比较Cumulus的MD测量值和我们的模仿Cumulus的自动测量值。似然比检验用于验证Logistic回归模型对乳腺癌风险的性能,其中包括我们的措施在乳腺X线照片中捕获了更多信息。结果我们观察到Cumulus量度与我们模拟Cumulus的量度之间具有高度相关性(r = 0.884; 95) %CI,0.872至0.894)。在变量中增加一个包含额外信息的变量,可以显着改善乳腺癌风险的逻辑回归模型的拟合度(P = 0.0002)。结论我们的结果证明了将乳腺密度测量结果整合到大规模研究中的潜力。随后进入临床实践。

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