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Fine-Tuning ResNet for Breast Cancer Classification from Mammography

机译:从乳房X线照相术对乳腺癌分类的微调ResNet

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Breast cancer classification from mammography is significant for treatment decisions and assessments of prognosis. However, the traditional classification method is not efficient due to the need for professional domain knowledge, time-consuming, and difficult in extracting high-quality features. Therefore, this paper proposed an automatic classification method based on convolutional neural network (CNN). In this paper, the fine-tuning residual network (ResNet) has been introduced to have good performance, reduce training time, and automatically extract features. Then, a data augmentation policy was adopted to expand training data which can reduce the probability of overfitting caused by small training set. The main contribution of this paper is to introduce transfer learning and data augmentation to construct an automatic mammography classification, which has high prediction performance. Experiments were conducted on a public data set CBIS-DDSM which contains 2620 scanned film mammography studies. The proposed method obtains desirable performances on accuracy, specificity, sensitivity, AUC, and loss, corresponding to 93.15, 92.17, 93.83%, 0.95, and 0.15. The proposed method is of good robustness and generalization.
机译:乳腺摄影对乳腺癌的分类对于治疗决策和评估预后具有重要意义。然而,由于需要专业领域知识,费时且难以提取高质量特征,因此传统分类方法效率不高。因此,本文提出了一种基于卷积神经网络的自动分类方法。在本文中,引入了微调残差网络(ResNet)以具有良好的性能,减少训练时间并自动提取特征。然后,采用了一种数据扩充策略来扩展训练数据,这可以减少由小训练集引起的过拟合的可能性。本文的主要贡献是介绍转移学习和数据扩充,以构建具有较高预测性能的自动乳腺X射线摄影分类。实验是在一个公共数据集CBIS-DDSM上进行的,该数据集包含2620个扫描的胶片X线摄影术研究。所提出的方法在准确性,特异性,敏感性,AUC和损失上获得了理想的性能,分别对应于93.15、92.17、93.83%,0.95和0.15。该方法具有良好的鲁棒性和通用性。

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