Krishnan Kavitha, Baglietto Laura, Stone Jennifer, Simpson Julie A, Severi Gianluca, Evans Christopher F, MacInnis Robert J, Giles Graham G, Apicella Carmel, Hopper John L
Centre for Epidemiology and Biostatistics, Melbourne School of Population and Global Health, The University of Melbourne, Victoria, Australia.
Cancer Epidemiology Centre, Cancer Council Victoria, Melbourne, Australia.
Cancer Epidemiol Biomarkers Prev. 2017 Apr;26(4):651-660. doi: 10.1158/1055-9965.EPI-16-0499. Epub 2017 Jan 6.
After adjusting for age and body mass index (BMI), mammographic measures-dense area (DA), percent dense area (PDA), and nondense area (NDA)-are associated with breast cancer risk. Our aim was to use longitudinal data to estimate the extent to which these risk-predicting measures track over time. We collected 4,320 mammograms (age range, 24-83 years) from 970 women in the Melbourne Collaborative Cohort Study and the Australian Breast Cancer Family Registry. Women had on average 4.5 mammograms (range, 1-14). DA, PDA, and NDA were measured using the Cumulus software and normalized using the Box-Cox method. Correlations in the normalized risk-predicting measures over time intervals of different lengths were estimated using nonlinear mixed-effects modeling of Gompertz curves. Mean normalized DA and PDA were constant with age to the early 40s, decreased over the next two decades, and were almost constant from the mid-60s onward. Mean normalized NDA increased nonlinearly with age. After adjusting for age and BMI, the within-woman correlation estimates for normalized DA were 0.94, 0.93, 0.91, 0.91, and 0.91 for mammograms taken 2, 4, 6, 8, and 10 years apart, respectively. Similar correlations were estimated for the age- and BMI-adjusted normalized PDA and NDA. The mammographic measures that predict breast cancer risk are highly correlated over time. This has implications for etiologic research and clinical management whereby women at increased risk could be identified at a young age (e.g., early 40s or even younger) and recommended appropriate screening and prevention strategies. .
在对年龄和体重指数(BMI)进行调整后,乳房X线摄影测量指标——致密区域(DA)、致密区域百分比(PDA)和非致密区域(NDA)——与乳腺癌风险相关。我们的目的是利用纵向数据来估计这些风险预测指标随时间变化的跟踪程度。我们从墨尔本协作队列研究和澳大利亚乳腺癌家族登记处的970名女性中收集了4320张乳房X线照片(年龄范围为24 - 83岁)。女性平均有4.5张乳房X线照片(范围为1 - 14张)。使用Cumulus软件测量DA、PDA和NDA,并使用Box - Cox方法进行标准化。使用Gompertz曲线的非线性混合效应模型估计不同长度时间间隔内标准化风险预测指标的相关性。平均标准化DA和PDA在40岁出头之前随年龄保持恒定,在接下来的二十年中下降,从60年代中期开始几乎保持恒定。平均标准化NDA随年龄呈非线性增加。在对年龄和BMI进行调整后,对于间隔2年、4年、6年、8年和10年拍摄的乳房X线照片,女性体内标准化DA的相关性估计分别为0.94、0.93、0.91、0.91和0.91。对年龄和BMI调整后的标准化PDA和NDA也估计了类似的相关性。预测乳腺癌风险的乳房X线摄影测量指标随时间高度相关。这对病因学研究和临床管理具有重要意义,据此可以在年轻时(例如40岁出头甚至更年轻)识别出风险增加的女性,并推荐适当的筛查和预防策略。