论文标题
高密度乳房乳房X线照片的高分辨率综合:在基于深度学习的质量检测中应用于改善公平性
High-resolution synthesis of high-density breast mammograms: Application to improved fairness in deep learning based mass detection
论文作者
论文摘要
基于深度学习的计算机辅助检测系统在乳腺癌检测中表现出良好的性能。但是,高密度的乳房显示出较差的检测性能,因为密集组织可以掩盖甚至模拟肿块。因此,乳腺癌检测的敏感性可以降低20%以上的乳房。此外,与低密度乳房相比,极度致密的病例报告说患癌症的风险增加。这项研究旨在使用合成高密度的全场数字乳房X线照片(FFDM)作为乳房质量检测模型训练期间的数据增强来提高高密度乳房的质量检测性能。为此,对使用三个FFDM数据集进行了五个周期一致的GAN(CycleGAN)模型,以高分辨率乳房X线照片中的低密度图像翻译进行了培训。训练图像是由乳房密度的Birads类别分开的,几乎是脂肪的脂肪,而双刺则是乳房的乳房。我们的结果表明,提出的数据增强技术提高了经过小型数据集训练的模型中质量检测的敏感性和精度,并改善了经过大型数据库训练的模型的域概括。此外,在一项涉及两名专家放射科医生和一名外科肿瘤学家的读者研究中评估了合成图像的临床现实主义。
Computer-aided detection systems based on deep learning have shown good performance in breast cancer detection. However, high-density breasts show poorer detection performance since dense tissues can mask or even simulate masses. Therefore, the sensitivity of mammography for breast cancer detection can be reduced by more than 20% in dense breasts. Additionally, extremely dense cases reported an increased risk of cancer compared to low-density breasts. This study aims to improve the mass detection performance in highdensity breasts using synthetic high-density full-field digital mammograms (FFDM) as data augmentation during breast mass detection model training. To this end, a total of five cycle-consistent GAN (CycleGAN) models using three FFDM datasets were trained for low-to-high-density image translation in highresolution mammograms. The training images were split by breast density BIRADS categories, being BI-RADS A almost entirely fatty and BI-RADS D extremely dense breasts. Our results showed that the proposed data augmentation technique improved the sensitivity and precision of mass detection in models trained with small datasets and improved the domain generalization of the models trained with large databases. In addition, the clinical realism of the synthetic images was evaluated in a reader study involving two expert radiologists and one surgical oncologist.