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Classification of Whole Mammogram and Tomosynthesis Images Using Deep Convolutional Neural Networks

机译:使用深度卷积神经网络对整个乳房X光照片和断层合成图像进行分类

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摘要

Mammography is the most popular technology used for the early detection of breast cancer. Manual classification of mammogram images is a hard task because of the variability of the tumor. It yields a noteworthy number of patients being called back to perform biopsies, ensuring no missing diagnosis. The convolutional neural network (CNN) has succeeded in a lot of image classification challenges during the recent years. In this paper, we proposed an approach of mammogram and tomosynthesis classification based on CNNs. We had acquired more than 3000 mammograms and tomosynthesis data with approval from an institutional review board at the University of Kentucky. Different models of CNNs were built to classify both the 2-D mammograms and 3-D tomosynthesis, and every classifier was assessed with respect to truth-values generated by histology results from the biopsy and two-year negative mammogram follow-up confirmed by expert radiologists. Our outcomes demonstrated that CNN-based models we had built and optimized utilizing transfer learning and data augmentation have good potential for automatic breast cancer detection based on the mammograms and tomosynthesis data.
机译:乳房X线照相术是用于早期发现乳腺癌的最流行的技术。由于肿瘤的可变性,乳房X线照片图像的人工分类是一项艰巨的任务。它产生了大量值得注意的患者,这些患者被召回进行活组织检查,确保没有漏诊。近年来,卷积神经网络(CNN)成功应对了许多图像分类挑战。在本文中,我们提出了一种基于CNN的乳房X线照片和断层合成分类方法。在肯塔基大学的机构审查委员会的批准下,我们已经获取了3000多个乳房X线照片和断层合成数据。建立了不同的CNN模型以对2-D乳房X线照片和3-D断层合成进行分类,并且对每个分类器根据活检的组织学结果产生的真值和专家确认的两年阴性X线照片进行评估。放射科医生。我们的结果表明,我们利用转移学习和数据增强功能建立和优化的基于CNN的模型在基于乳房X线照片和断层合成数据的自动乳腺癌检测中具有良好的潜力。

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