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Neural networks model based on an automated multi-scale method for mammogram classification

机译:基于自动化多尺度方法的乳房X线图分类的神经网络模型

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摘要

Breast cancer is the most commonly diagnosed cancer among women. Convolutional neural networks (CNN)-based mammogram classification plays a vital role in early breast cancer detection. However, it pays too much attention to the lesions of mammograms and ignores the global characteristics of the breast. In the process of diagnosis, doctors not only pay attention to the features of local lesions but also combine with the comparison to the global characteristics of breasts. Mammogram images have a visible characteristic, which is that the original image is large, while the lesions are relatively small. It means that the lesions are easy to overlook. This paper proposes an automated multi-scale end-to-end deep neural networks model for mammogram classification, that only requires mammogram images and class labels (without ROI annotations). The proposed model generated three scales of feature maps that make the classifier combine global information with the local lesions for classification. Moreover, the images processed by our method contain fewer non-breast pixels and retain the small lesions information as much as possible, which is helpful for the model to focus on the small lesions. The performance of our method is verified on the INbreast dataset. Compared to other state-of-the-art mammogram classification algorithms, our model performs the best. Moreover, the multi-scale method is applied to the networks with fewer parameters that can achieve comparable performance, while saving 60% of the computing resources. It shows that the multi-scale method can work for both performance and computational efficiency. (C) 2020 Elsevier B.V. All rights reserved.
机译:乳腺癌是女性中最常见的癌症。卷积神经网络(CNN)基础的乳房X线照片分类在早期乳腺癌检测中起着至关重要的作用。但是,它会关注乳房X光检查的病变并忽略乳房的全球特征。在诊断过程中,医生不仅关注当地病变的特征,而且还结合了与乳房的全球特征的比较。乳房X线照片图像具有可见特性,即原始图像大,而病变相对较小。这意味着病变很容易忽略。本文提出了一种用于乳房X光检查的自动多尺度端到端深度神经网络模型,只需要乳房X线图和类标签(没有ROI注释)。所提出的模型生成了三个特征映射的比例,使分类器与本地病变组合全局信息以进行分类。此外,由我们的方法处理的图像包含较少的非乳房像素并尽可能地保留小病变信息,这有助于模型聚焦在小病变上。我们的方法的性能在Breast DataSet上验证。与其他最先进的乳房X线照片分类算法相比,我们的模型表现了最佳状态。此外,多尺度方法应用于具有较少参数的网络,可以实现可比性的性能,同时节省60%的计算资源。它表明,多尺度方法可以用于性能和计算效率。 (c)2020 Elsevier B.v.保留所有权利。

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