论文标题
高敏性乳腺癌检测器
A Hypersensitive Breast Cancer Detector
论文作者
论文摘要
通过乳房X线摄影对乳腺癌的早期检测,存活率增加了20-35%。但是,没有足够的放射科医生为越来越多的寻求乳房X线摄影的妇女提供服务。尽管商用计算机辅助检测(CADE)软件已向放射科医生使用数十年,但由于其对发现的频谱的敏感性较低,因此它未能改善全场数字乳房摄影(FFDM)图像的解释。在这项工作中,我们利用了大量的FFDM图像,上面有乳房X线显着的发现的宽松边界盒,以训练具有极高敏感性的深度学习探测器。在沙漏架构的工作基础上,我们训练了一种模型,该模型生产具有高空间分辨率的分割样图像,目的是生产以地面真相盒为中心的2D高斯斑点。我们用弱者的损失代替了像素的$ L_2 $规范,旨在实现高灵敏度,不对称地惩罚误报和假否定性,同时通过允许在错误的预测中允许公差来软化松散的边界盒的噪音。所得系统对0.99的恶性发现具有敏感性,每个图像仅为4.8个假阳性标记。当在CADE系统中使用时,该模型可以实现新颖的工作流程,放射科医生只能在模型提出的位置,加快解释过程并引起人们对可能遗漏的潜在发现的关注。由于其几乎完美的灵敏度,该提出的检测器也可以用作两阶段检测系统中的高性能提案发生器。
Early detection of breast cancer through screening mammography yields a 20-35% increase in survival rate; however, there are not enough radiologists to serve the growing population of women seeking screening mammography. Although commercial computer aided detection (CADe) software has been available to radiologists for decades, it has failed to improve the interpretation of full-field digital mammography (FFDM) images due to its low sensitivity over the spectrum of findings. In this work, we leverage a large set of FFDM images with loose bounding boxes of mammographically significant findings to train a deep learning detector with extreme sensitivity. Building upon work from the Hourglass architecture, we train a model that produces segmentation-like images with high spatial resolution, with the aim of producing 2D Gaussian blobs centered on ground-truth boxes. We replace the pixel-wise $L_2$ norm with a weak-supervision loss designed to achieve high sensitivity, asymmetrically penalizing false positives and false negatives while softening the noise of the loose bounding boxes by permitting a tolerance in misaligned predictions. The resulting system achieves a sensitivity for malignant findings of 0.99 with only 4.8 false positive markers per image. When utilized in a CADe system, this model could enable a novel workflow where radiologists can focus their attention with trust on only the locations proposed by the model, expediting the interpretation process and bringing attention to potential findings that could otherwise have been missed. Due to its nearly perfect sensitivity, the proposed detector can also be used as a high-performance proposal generator in two-stage detection systems.