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Does the prediction of breast cancer improve using a combination of mammographic density measures compared to individual measures alone?

机译:单独使用乳房X线监测密度测量的组合,对乳腺癌的预测是改善的吗?

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High mammographic density is associated with an increased risk of breast cancer, however whether the association is stronger when there is agreement across measures is unclear. This study investigates whether a combination of density measures is a better predictor of breast cancer risk than individual methods alone. Women recruited to the Predicting Risk of Cancer At Screening (PROCAS) study and with mammographic density assessed using three different methods were included (n=33,304). Density was assessed visually using Visual Analogue Scales (VAS) and by two fully automated methods, Quantra and Volpara. Percentage breast density was divided into (high, medium and low) and combinations of measures were used to further categorise individuals (e.g. 'all high'). A total of 667 breast cancers were identified and logistic regression was used to determine the relationship between breast density and breast cancer risk. In total, 44% of individuals were in the same tertile for all three measures, 8.6% were in non-adjacent (high and low) or mixed categories (high, medium and low). For individual methods the strongest association with breast cancer risk was for medium and high tertiles of VAS with odds ratios (OR) adjusted for age and BMI of 1.63 (95% CI 1.31-2.03) and 2.33 (1.87-2.90) respectively. For the combination of density methods the strongest association was for 'all high' (OR 2.42, 1.77-3.31) followed by "two high" (OR 1.90, 1.35-3.31) and "two medium" (OR 1.88, 1.40-2.52). Combining density measures did not affect the magnitude of risk compared to using individual methods.
机译:高乳房X线监测密度与乳腺癌的风险增加有关,但是当违法行为达成协议时,联系是否更强大。本研究调查了密度措施的组合是否是乳腺癌风险的更好预测因子,而不是单独的单独方法。包括使用三种不同方法评估的筛查(ProCAS)研究和使用三种不同方法评估的癌症(ProCAS)研究预测癌症的患者(n = 33,304)。使用视觉模拟尺度(VAS)和两个全自动方法,QUANTRA和VOLPA,在视觉上评估密度。百分比乳房密度分为(高,中,低),使用措施的组合来进一步分类个体(例如'全部高')。鉴定了667个乳腺癌,并使用逻辑回归来确定乳腺密度和乳腺癌风险之间的关系。总共44%的人在所有三项措施中均为同样的效果,8.6%是非相邻(高低)或混合类别(高,中低)。对于个体方法,与乳腺癌风险的最强关联是对VAS的中高截头,其年龄和BMI调整为1.63(95%CI 1.31-2.03)和2.33(1.87-2.90)。对于密度方法的组合,最强的关联是“所有高”(或2.42,1.77-3.31),然后是“两个高”(或1.90,1.35-31)和“两种培养基”(或1.88,1.40-2.52) 。与使用单独的方法相比,相结合的密度措施不会影响风险的严重程度。

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