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Automated assessment of breast tissue density in non-contrast 3D CT images without image segmentation based on a deep CNN

机译:基于深层CNN的图像分割,自动评估非对比度3D CT图像中的乳房组织密度

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This paper describes a novel approach for the automatic assessment of breast density in non-contrast three-dimensional computed tomography (3D CT) images. The proposed approach trains and uses a deep convolutional neural network (CNN) from scratch to classify breast tissue density directly from CT images without segmenting the anatomical structures, which creates a bottleneck in conventional approaches. Our scheme determines breast density in a 3D breast region by decomposing the 3D region into several radial 2D-sections from the nipple, and measuring the distribution of breast tissue densities on each 2D section from different orientations. The whole scheme is designed as a compact network without the need for post-processing and provides high robustness and computational efficiency in clinical settings. We applied this scheme to a dataset of 463 non-contrast CT scans obtained from 30- to 45-year-old-women in Japan. The density of breast tissue in each CT scan was assigned to one of four categories (glandular tissue within the breast <25%, 25%-50%, 50%-75%, and >75%) by a radiologist as ground truth. We used 405 CT scans for training a deep CNN and the remaining 58 CT scans for testing the performance. The experimental results demonstrated that the findings of the proposed approach and those of the radiologist were the same in 72% of the CT scans among the training samples and 76% among the testing samples. These results demonstrate the potential use of deep CNN for assessing breast tissue density in non-contrast 3D CT images.
机译:本文介绍了一种新的方法,用于自动评估非对比三维计算断层扫描(3D CT)图像中的乳收密度。所提出的方法列车并利用从头划痕使用深度卷积神经网络(CNN),直接从CT图像分类乳房组织密度而不分割解剖结构,这在传统方法中产生瓶颈。我们的方案通过将3D区域分解为来自乳头的几个径向2D部分,测定来自乳头的几个径向2D部分的3D乳房区域中的乳房密度,并测量来自不同取向的每个2D部分上的乳房组织密度的分布。整个方案设计为紧凑的网络,无需后处理,并在临床环境中提供高稳健性和计算效率。我们将此计划应用于日本30年至45岁女性的463个非对比度CT扫描的数据集。每个CT扫描中的乳腺组织密度被放射科医生分配给四类中的四个类别(乳腺组织中的腺体组织<25%,25%-50%,50%-75%,50%-75%,50%-75%)。我们使用了405 CT扫描来训练一个深入的CNN和剩下的58 CT扫描,用于测试性能。实验结果表明,所提出的方法和放射科学家的结果在训练样本中的72%的CT扫描中的同样是相同的,并且测试样品中的76%。这些结果证明了深度CNN用于评估非对比度3D CT图像中的乳房组织密度的潜在使用。

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