Centre for Epidemiology and Biostatistics, Melbourne School of Population and Global Health, University of Melbourne, Parkville, Victoria, Australia.
Faculty of Information Technology, Monash University, Clayton, Victoria, Australia.
Int J Cancer. 2021 May 1;148(9):2193-2202. doi: 10.1002/ijc.33396. Epub 2020 Dec 4.
Mammograms contain information that predicts breast cancer risk. We developed two novel mammogram-based breast cancer risk measures based on image brightness (Cirrocumulus) and texture (Cirrus). Their risk prediction when fitted together, and with an established measure of conventional mammographic density (Cumulus), is not known. We used three studies consisting of: 168 interval cases and 498 matched controls; 422 screen-detected cases and 1197 matched controls; and 354 younger-diagnosis cases and 944 controls frequency-matched for age at mammogram. We conducted conditional and unconditional logistic regression analyses of individually- and frequency-matched studies, respectively. We estimated measure-specific risk gradients as the change in odds per standard deviation of controls after adjusting for age and body mass index (OPERA) and calculated the area under the receiver operating characteristic curve (AUC). For interval, screen-detected and younger-diagnosis cancer risks, the best fitting models (OPERAs [95% confidence intervals]) involved: Cumulus (1.81 [1.41-2.31]) and Cirrus (1.72 [1.38-2.14]); Cirrus (1.49 [1.32-1.67]) and Cirrocumulus (1.16 [1.03 to 1.31]); and Cirrus (1.70 [1.48 to 1.94]) and Cirrocumulus (1.46 [1.27-1.68]), respectively. The AUCs were: 0.73 [0.68-0.77], 0.63 [0.60-0.66], and 0.72 [0.69-0.75], respectively. Combined, our new mammogram-based measures have twice the risk gradient for screen-detected and younger-diagnosis breast cancer (P ≤ 10 ), have at least the same discriminatory power as the current polygenic risk score, and are more correlated with causal factors than conventional mammographic density. Discovering more information about breast cancer risk from mammograms could help enable risk-based personalised breast screening.
乳腺 X 光片包含预测乳腺癌风险的信息。我们基于图像亮度(卷积云)和纹理(卷云)开发了两种新的基于乳腺 X 光片的乳腺癌风险测量方法。它们与已建立的常规乳腺 X 光密度测量方法(积云)一起拟合的风险预测尚不清楚。我们使用了三项研究,包括:168 例间隔病例和 498 例匹配对照;422 例筛查发现的病例和 1197 例匹配对照;354 例年轻诊断病例和 944 例年龄匹配的对照。我们分别对个体匹配和频率匹配的研究进行了条件和无条件逻辑回归分析。我们估计了特定于测量的风险梯度,即调整年龄和体重指数后,对照组每标准偏差的几率变化(OPERA),并计算了接收者操作特征曲线下的面积(AUC)。对于间隔、筛查发现和年轻诊断的癌症风险,最佳拟合模型(OPERA[95%置信区间])涉及:积云(1.81[1.41-2.31])和卷云(1.72[1.38-2.14]);卷云(1.49[1.32-1.67])和卷积云(1.16[1.03-1.31]);以及卷云(1.70[1.48-1.94])和卷积云(1.46[1.27-1.68])。AUC 分别为:0.73[0.68-0.77]、0.63[0.60-0.66]和 0.72[0.69-0.75]。总的来说,我们新的基于乳腺 X 光片的测量方法对筛查发现和年轻诊断的乳腺癌的风险梯度增加了一倍(P≤10),其判别能力至少与当前的多基因风险评分相同,并且与常规乳腺 X 光密度相比,与因果因素的相关性更高。从乳腺 X 光片中发现更多关于乳腺癌风险的信息可能有助于实现基于风险的个性化乳腺筛查。