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Comparison of breast percent density estimation from raw versus processed digital mammograms

机译:乳腺百分比从加工数字乳房X线照片的乳房百分比密度估计

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We compared breast percent density (PD%) measures obtained from raw and post-processed digital mammographic (DM) images. Bilateral raw and post-processed medio-lateral oblique (MLO) images from 81 screening studies were retrospectively analyzed. Image acquisition was performed with a GE Healthcare DS full-field DM system. Image post-processing was performed using the PremiumView~(TM) algorithm (GE Healthcare). Area-based breast PD% was estimated by a radiologist using a semi-automated image thresholding technique (Cumulus, Univ. Toronto). Comparison of breast PD% between raw and post-processed DM images was performed using the Pearson correlation (r), linear regression, and Student's t-test. Intra-reader variability was assessed with a repeat read on the same data-set. Our results show that breast PD% measurements from raw and post-processed DM images have a high correlation (r=0.98, R~2=0.95, p<0.001). Paired t-test comparison of breast PD% between the raw and the post-processed images showed a statistically significant difference equal to 1.2% (p = 0.006). Our results suggest that the relatively small magnitude of the absolute difference in PD% between raw and post-processed DM images is unlikely to be clinically significant in breast cancer risk stratification. Therefore, it may be feasible to use post-processed DM images for breast PD% estimation in clinical settings. Since most breast imaging clinics routinely use and store only the post-processed DM images, breast PD% estimation from post-processed data may accelerate the integration of breast density in breast cancer risk assessment models used in clinical practice.
机译:我们比较了从原始和后处理的数字乳房X线照片(DM)图像获得的乳房百分比密度(PD%)测量。回顾性分析了来自81种筛查研究的双边原始和后期地区横向倾斜(MLO)图像。使用GE HealthCare DS全场DM系统执行图像采集。使用PremiumView〜(TM)算法(GE HealthCare)进行图像后处理。区域为基于区域的乳房PD%通过半自动图像阈值技术(Cumulus,Univ。多伦多)估算放射科医师。使用Pearson相关(R),线性回归和学生的T检验进行原始和后处理DM图像之间的乳房PD%的比较。通过在同一数据集上重复读取的重复读取读卡器内变异性。我们的研究结果表明,原始和后处理DM图像的乳房PD%测量具有高相关(r = 0.98,R〜2 = 0.95,P <0.001)。原料和后处理图像之间的乳腺Pd%的成对T检验比较显示出统计学上的显着差异等于1.2%(p = 0.006)。我们的研究结果表明,在乳腺癌风险分层中,原始和后处理的DM图像之间的PD%的绝对差异的绝对差异相对较小。因此,在临床环境中使用用于乳房PD%估计的后处理DM图像可能是可行的。由于大多数乳房成像诊所通常使用并仅存储后处理的DM图像,因此处理后数据的乳房PD%估计可能加速临床实践中使用的乳腺癌风险评估模型中乳腺密度的整合。

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