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Conditional Infilling GANs for Data Augmentation in Mammogram Classification

机译:有条件填充GAN用于乳房X线照片分类中的数据增强

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摘要

Deep learning approaches to breast cancer detection in mammograms have recently shown promising results. However, such models are constrained by the limited size of publicly available mammography datasets, in large part due to privacy concerns and the high cost of generating expert annotations. Limited dataset size is further exacerbated by substantial class imbalance since "normal" images dramatically outnumber those with findings. Given the rapid progress of generative models in synthesizing realistic images, and the known effectiveness of simple data augmentation techniques (e.g. horizontal flipping), we ask if it is possible to synthetically augment mammogram datasets using generative adversarial networks (GANs). We train a class-conditional GAN to perform contextual in-filling, which we then use to synthesize lesions onto healthy screening mammograms. First, we show that GANs are capable of generating high-resolution synthetic mammogram patches. Next, we experimentally evaluate using the augmented dataset to improve breast cancer classification performance. We observe that a ResNet-50 classifier trained with GAN-augmented training data produces a higher AUROC compared to the same model trained only on traditionally augmented data, demonstrating the potential of our approach.
机译:最近在乳腺X线照片中检测乳腺癌的深度学习方法已显示出令人鼓舞的结果。但是,此类模型受到公众可获得的乳房X射线照片数据集大小有限的限制,这在很大程度上是由于隐私问题和生成专家注释的高昂费用。大量的类不平衡进一步加剧了有限的数据集大小,因为“正常”图像大大超过了具有发现结果的图像。鉴于生成模型在合成逼真的图像方面的快速进步以及简单数据增强技术(例如水平翻转)的已知有效性,我们询问是否有可能使用生成对抗网络(GAN)来合成增强乳房X线照片数据集。我们训练一个有条件的GAN来执行上下文填充,然后将其用于将病变合成到健康的筛查乳房X线照片上。首先,我们证明GAN能够生成高分辨率的合成乳房X线照片。接下来,我们通过实验评估使用增强数据集来改善乳腺癌分类性能。我们观察到,使用GAN增强训练数据训练的ResNet-50分类器与仅使用传统增强数据训练的同一模型相比,产生了更高的AUROC,证明了我们方法的潜力。

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  • 来源
  • 会议地点 Granada(ES)
  • 作者单位

    Harvard University, Cambridge, MA, USA,DeepHealth, Inc., Boston, MA, USA;

    Harvard University, Cambridge, MA, USA,DeepHealth, Inc., Boston, MA, USA;

    Harvard University, Cambridge, MA, USA;

    Harvard University, Cambridge, MA, USA,DeepHealth, Inc., Boston, MA, USA;

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  • 正文语种 eng
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