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Elastic deformations for data augmentation in breast cancer mass detection

机译:乳腺癌质量检测中数据增强的弹性变形

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Two limitations hamper performance of deep architectures for classification and/or detection in medical imaging: (i) the small amount of available data, and (ii) the class imbalance scenario. While millions of labeled images are available today to build classification tools for natural scenes, the amount of available annotated data for automatic breast cancer screening is limited to a few thousand images, at best. We address these limitations with a method for data augmentation, based on the introduction of random elastic deformations on images of mammograms. We validate this method on three publicly available datasets. Our proposed Convolutional Neural Network (CNN) architecture is trained for mass classification - in a conventional way -, and then used in the more interesting problem of mass detection in full mammograms by transforming the CNN into a Fully Convolutional Network (FCN).
机译:医学成像中分类和/或检测的深层架构的两个限制散热性能:(i)少量可用数据,(ii)类别不平衡情景。虽然今天有数百万标记的图像可以为自然场景构建分类工具,但最佳的自动乳腺癌筛选的可用注释数据的数量有限于几千个图像。基于在乳房X线照片图像图像上引入随机弹性变形,通过对数据增强的方法来解决这些限制。我们在三个公共数据集上验证此方法。我们所提出的卷积神经网络(CNN)架构训练以以常规方式进行质量分类 - 然后通过将CNN转换为完全卷积的网络(FCN)来用于全乳房X线图中的质量检测的更有趣问题。

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