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Using mammographic density to predict breast cancer risk: dense area or percentage dense area

机译:使用乳房X线照相术密度预测乳腺癌风险:密集区或密集区百分比

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IntroductionMammographic density (MD) is one of the strongest risk factors for breast cancer. It is not clear whether this association is best expressed in terms of absolute dense area or percentage dense area (PDA).MethodsWe measured MD, including nondense area (here a surrogate for weight), in the mediolateral oblique (MLO) mammogram using a computer-assisted thresholding technique for 634 cases and 1,880 age-matched controls from the Cambridge and Norwich Breast Screening programs. Conditional logistic regression was used to estimate the risk of breast cancer, and fits of the models were compared using likelihood ratio tests and the Bayesian information criteria (BIC). All P values were two-sided.ResultsSquare-root dense area was the best single predictor (for example, χ12 = 53.2 versus 44.4 for PDA). Addition of PDA and/or square-root nondense area did not improve the fit (both P > 0.3). Addition of nondense area improved the fit of the model with PDA (χ12 = 11.6; P < 0.001). According to the BIC, the PDA and nondense area model did not provide a better fit than the dense area alone model. The fitted values of the two models were highly correlated (r = 0.97). When a measure of body size is included with PDA, the predicted risk is almost identical to that from fitting dense area alone.ConclusionsAs a single parameter, dense area provides more information than PDA on breast cancer risk.
机译:简介乳腺密度(MD)是乳腺癌的最强危险因素之一。目前尚不清楚以绝对致密面积或百分比致密面积(PDA)的方式来最好地表达这种关联。方法我们使用计算机测量了中斜肌(MLO)乳房X光照片中的MD,包括非致密面积(此处是体重的替代物)剑桥和诺里奇乳房筛查计划的634例病例和1,880个年龄匹配的对照的辅助阈值技术。使用条件逻辑回归来估计乳腺癌的风险,并使用似然比检验和贝叶斯信息标准(BIC)比较模型的拟合度。所有P值都是双向的。结果平方根密集区域是最佳的单个预测变量(例如χ12= 53.2,而PDA为44.4)。增加PDA和/或平方根非密集区域并不能改善拟合度(均P> 0.3)。增加非密集区域可提高模型与PDA的拟合度(χ12= 11.6; P <0.001)。根据BIC,PDA和非密集区域模型没有提供比单独的密集区域模型更好的拟合度。两个模型的拟合值高度相关(r = 0.97)。当PDA包含测量身体大小的指标时,预测的风险几乎与单独安装致密区域的风险相同。结论作为一个参数,致密区域比PDA提供了更多的乳腺癌风险信息。

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