Department of Health Sciences Research, Division of Epidemiology, Mayo Clinic, 200 First St. SW, Rochester, MN 55905, USA.
J Natl Cancer Inst. 2012 Jul 3;104(13):1028-37. doi: 10.1093/jnci/djs254.
Mammographic breast density is a strong breast cancer risk factor but is not used in the clinical setting, partly because of a lack of standardization and automation. We developed an automated and objective measurement of the grayscale value variation within a mammogram, evaluated its association with breast cancer, and compared its performance with that of percent density (PD).
Three clinic-based studies were included: a case-cohort study of 217 breast cancer case subjects and 2094 non-case subjects and two case-control studies comprising 928 case subjects and 1039 control subjects and 246 case subjects and 516 control subjects, respectively. Percent density was estimated from digitized mammograms using the computer-assisted Cumulus thresholding program, and variation was estimated from an automated algorithm. We estimated hazards ratios (HRs), odds ratios (ORs), the area under the receiver operating characteristic curve (AUC), and 95% confidence intervals (CIs) using Cox proportional hazards models for the cohort and logistic regression for case-control studies, with adjustment for age and body mass index. We performed a meta-analysis using random study effects to obtain pooled estimates of the associations between the two mammographic measures and breast cancer. All statistical tests were two-sided.
The variation measure was statistically significantly associated with the risk of breast cancer in all three studies (highest vs lowest quartile: HR = 2.0 [95% CI = 1.3 to 3.1]; OR = 2.7 [95% CI = 2.1 to 3.6]; OR = 2.4 [95% CI = 1.4 to 3.9]; [corrected] all P (trend) < .001). [corrected]. The risk estimates and AUCs for the variation measure were similar to [corrected] those for percent density (AUCs for variation = 0.60-0.62 and [corrected] AUCs for percent density = 0.61-0.65). [corrected]. A meta-analysis of the three studies demonstrated similar associations [corrected] between variation and breast cancer (highest vs lowest quartile: RR = 1.8, 95% CI = 1.4 to 2.3) and [corrected] percent density and breast cancer (highest vs lowest quartile: RR = 2.3, 95% CI = 1.9 to 2.9).
The association between the automated variation measure and the risk of breast cancer is at least as strong as that for percent density. Efforts to further evaluate and translate the variation measure to the clinical setting are warranted.
乳腺密度是乳腺癌的一个重要危险因素,但并未在临床实践中应用,部分原因是缺乏标准化和自动化。我们开发了一种乳腺 X 线照片灰度值变化的自动客观测量方法,评估了其与乳腺癌的相关性,并比较了其与百分密度(PD)的性能。
包括三项临床研究:一项 217 例乳腺癌病例和 2094 例非病例的病例-队列研究,以及两项病例对照研究,分别包括 928 例病例和 1039 例对照以及 246 例病例和 516 例对照。使用计算机辅助 Cumulus 阈值程序从数字化乳腺 X 线照片中估计 PD,使用自动算法估计变化。我们使用队列的 Cox 比例风险模型和病例对照研究的 logistic 回归模型,对年龄和体重指数进行调整,估计了风险比(HR)、优势比(OR)、受试者工作特征曲线下面积(AUC)和 95%置信区间(CI)。我们使用随机研究效应进行荟萃分析,以获得两种乳腺 X 线摄影测量方法与乳腺癌之间关联的汇总估计值。所有统计检验均为双侧。
在所有三项研究中,变化测量值与乳腺癌风险呈统计学显著相关(最高四分位与最低四分位:HR = 2.0 [95%CI = 1.3 至 3.1];OR = 2.7 [95%CI = 2.1 至 3.6];OR = 2.4 [95%CI = 1.4 至 3.9];[校正]所有 P(趋势)<0.001)。[校正]。变化测量值的风险估计值和 AUC 与 PD 相似(变化的 AUC 值为 0.60-0.62,PD 的 AUC 值为 0.61-0.65)。[校正]。三项研究的荟萃分析表明,变化与乳腺癌之间存在相似的关联(最高四分位与最低四分位:RR = 1.8,95%CI = 1.4 至 2.3)和 PD 与乳腺癌之间的关联(最高四分位与最低四分位:RR = 2.3,95%CI = 1.9 至 2.9)。
自动变化测量值与乳腺癌风险的相关性至少与 PD 一样强。进一步评估和将变化测量值转化为临床环境是值得的。