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Assessment of a fully automated, high-throughput mammographic density measurement tool for use with processed digital mammograms

机译:评估用于处理后的数字乳房X光图的全自动,高通量乳房X光密度测量工具

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Purpose: The ImageJ model is a recently developed automated breast density measurement tool based on analysis of Cumulus outcomes. It has been validated on digitized film-screen mammograms. In this study, the ImageJ model was assessed on processed full-field digital mammograms and correlated with the Breast Imaging Reporting and Data System (BI-RADS) density classification. Also, the association with breast cancer risk factors is observed. Methods: Women with mammographies between 2001 and 2011 at the University Medical Center Utrecht, The Netherlands were included. We composed a training set, read with Cumulus, for building the ImageJ model [n = 100 women, 331 images; craniocaudal (CC) and mediolateral oblique (MLO) views, left and right] and a validation set for model assessment and correlation with the BI-RADS classification [n = 530 women, 1,977 images; average of available CC and MLO views, left and right]. Pearson product-moment correlation coefficient was used to compare Cumulus with ImageJ, Spearman correlation coefficient for ImageJ with BI-RADS density, and generalized linear models for association with breast cancer risk factors. Results: The correlation between ImageJ and Cumulus in the training set was 0.90 [95 % confidence interval (CI) 0.86-0.93]. After application to the validation set, we observed a high correlation between ImageJ and the BI-RADS readings (Spearman r = 0.86, 95 % CI 0.84-0.88). Women with higher density were significantly younger, more often premenopausal, had lower parity, more often a benign breast lesion or family history of breast cancer. Conclusions: The ImageJ model can be used on processed digital mammograms. The measurements strongly correlate with Cumulus, the BI-RADS density classification, and breast cancer risk factors.
机译:目的:imagej模型是最近开发的自动乳房密度测量工具,基于积云结果分析。它已在数字化薄膜屏幕乳房X光线照片上验证。在本研究中,在处理的全场数字乳房X光图上评估了Imagej模型,并与乳房成像报告和数据系统(Bi-Rads)密度分类相关。此外,观察到与乳腺癌危险因素的关系。方法:荷兰大学医疗中心2001年至2011年,荷兰的妇女在2001年至2011年之间。我们组成了一个训练集,用积云读取,用于构建imagej模型[n = 100女性,331图像; Craniocaudal(CC)和MIDIOLATELATEL倾斜(MLO)视图,左右]和与模型评估和与BI-RADS分类相关的验证集[n = 530名女性,1,977张图片;可用CC和MLO视图的平均值,左右]。 Pearson产品矩相关系数用于将巨积与imagej,Spearman相关系数与乳腺癌危险因素相关联的Imagej,以及普遍的线性模型。结果:训练集中的ImageJ和积云之间的相关性为0.90 [95%置信区间(CI)0.86-0.93]。在应用到验证集之后,我们观察到ImageJ和Bi-Rads读数之间的高相关(Spearman R = 0.86,95%CI 0.84-0.88)。密度较高的女性较年轻,更常见的前辈,均较低,更常见的是良性乳腺病变或乳腺癌的家族史。结论:imagej模型可用于处理的数字乳房X光图。测量与积云强烈关联,Bi-rads密度分类和乳腺癌风险因素。

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