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Suspicion Map - An Unsupervised Middleware for Analyzing Digital Mammograms

机译:怀疑地图 - 用于分析数字乳房X光图的无监督中的中间件

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Identifying "suspicious" regions is an essential process for clinical assessment of digital mammograms in breast cancer screening. Traditional solutions attempt to model malignant lesions directly, necessitating segmentations/annotations for training machine learning models. In this paper, we present a novel approach to identify a suspicion map - a middleware preserving only the suspicious regions in digital mammograms to effectively narrow down the image search space. Our unsupervised method is implemented by modeling normal breast tissue and subsequently identifying tissue abnormal to the model as suspicious. Our method consists of three main components: superpixel-based breast tissue patch generation, deep learning-based feature extraction from normal tissue patches, and breast density-guided one-class modeling of normal patches using the extracted features. Our machine learning approach is able to safely eliminate normal regions of tissue in a digital mammogram. Our normal tissue models were learned from 2,602 normal mammogram images and tested on 180 images (including 90 normal screening mammogram images and an independent set of 90 mammogram images with breast cancer diagnoses). Initial experiments showed that our proposed method can eliminate 97% of normal regions in the normal testing mammograms and 96% of normal regions in the malignant testing mammograms. Our method, based on modeling normal breast tissue, provides a novel and unsupervised scheme to more effectively analyze digital mammogram images towards identifying suspicious regions, and has the potential to benefit a variety of downstream applications for computer-aided detection, diagnosis, and triage of breast cancer in mammogram images.
机译:识别“可疑”地区是乳腺癌筛选中数字乳房X线图临床评估的重要过程。传统解决方案试图直接模拟恶性病变,需要进行培训机器学习模型的分段/注释。在本文中,我们提出了一种识别怀疑地图的新方法 - 仅保留数字乳房X光图中的可疑区域以有效缩小图像搜索空间。我们的无监督方法是通过对普通乳房组织进行建模并随后将组织异常识别到模型中可疑的组织来实现。我们的方法包括三个主要成分:基于超棒的乳房组织斑块,基于深度学习的特征从正常组织贴片中提取,以及使用提取的特征的正常贴片的乳房密度引导的一类建模。我们的机器学习方法能够安全地消除数字乳房X光检查中的普通组织区域。我们的正常组织模型从2,602个正常乳房X线照片图像中学到,并在180张图像(包括90个正常筛选乳房图像图像和具有乳腺癌诊断的独立90个乳房图象)。初步实验表明,我们所提出的方法可以消除正常检测乳房X线照片中的97%的正常区域,并在恶性测试乳房X线照片中的96%的正常区域。我们的方法基于模型正常乳腺组织,提供了一种新颖和无监督的方案,以更有效地分析数字乳房X光图像朝着识别可疑地区,并且有可能使多种下游应用能够为计算机辅助检测,诊断和分类受益乳腺癌乳腺癌图像。

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