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A Novel Deep Learning-based Approach to High Accuracy Breast Density Estimation in Digital Mammography

机译:一种基于深度学习的新型方法,用于数字乳腺X线摄影中的高精度乳房密度估计

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Mammographic breast density is a well-established marker for breast cancer risk. However, accurate measurement of dense tissue is a difficult task due to faint contrast and significant variations in background fatty tissue. This study presents a novel method for automated mammographic density estimation based on Convolutional Neural Network (CNN). A total of 397 full-field digital mammograms were selected from Seoul National University Hospital. Among them, 297 mammograms were randomly selected as a training set and the rest 100 mammograms were used for a test set. We designed a CNN architecture suitable to learn the imaging characteristic from a multitudes of sub-images and classify them into dense and fatty tissues. To train the CNN, not only local statistics but also global statistics extracted from an image set were used. The image set was composed of original mammogram and eigen-image which was able to capture the X-ray characteristics in despite of the fact that CNN is well known to effectively extract features on original image. The 100 test images which was not used in training the CNN was used to validate the performance. The correlation coefficient between the breast estimates by the CNN and those by the expert's manual measurement was 0.96. Our study demonstrated the feasibility of incorporating the deep learning technology into radiology practice, especially for breast density estimation. The proposed method has a potential to be used as an automated and quantitative assessment tool for mammographic breast density in routine practice.
机译:乳腺钼靶X线密度是公认的罹患乳腺癌风险的标志。然而,由于背景脂肪组织的对比度差和明显变化,致密组织的准确测量是一项艰巨的任务。这项研究提出了一种基于卷积神经网络(CNN)的自动乳房X线密度估计的新方法。从首尔国立大学医院选择了总共397个全视野乳腺X线照片。其中,随机选择297个乳房X线照片作为训练集,其余100个乳房X线照片用作测试集。我们设计了一种CNN体系结构,适用于从众多子图像中学习成像特征并将其分类为密集和脂肪组织。为了训练CNN,不仅使用了本地统计信息,还使用了从图像集中提取的全局统计信息。该图像集由原始的乳房X线照片和本征图像组成,尽管众所周知,CNN可以有效地提取原始图像上的特征,但本征图像可以捕获X射线特征。未用于训练CNN的100张测试图像用于验证性能。 CNN和专家手动测量得出的乳房估计值之间的相关系数为0.96。我们的研究证明了将深度学习技术纳入放射学实践的可行性,尤其是对于乳腺密度的估计。所提出的方法有可能在常规实践中用作乳房X光检查乳房密度的自动化和定量评估工具。

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