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Do pre-trained deep learning models improve computer-aided classification of digital mammograms?

机译:做预先接受过的深度学习模式改善了数字乳房X光检查的计算机辅助分类吗?

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Digital mammography screening is an important exam for the early detection of breast cancer and reduction in mortality. False positives leading to high recall rates, however, results in unnecessary negative consequences to patients and health care systems. In order to better aid radiologists, computer-aided tools can be utilized to improve distinction between image classifications and thus potentially reduce false recalls. The emergence of deep learning has shown promising results in the area of biomedical imaging data analysis. This study aimed to investigate deep learning and transfer learning methods that can improve digital mammography classification performance. In particular, we evaluated the effect of pre-training deep learning models with other imaging datasets in order to boost classification performance on a digital mammography dataset. Two types of datasets were used for pre-training: (1) a digitized film mammography dataset, and (2) a very large non-medical imaging dataset. By using either of these datasets to pre-train the network initially, and then fine-tuning with the digital mammography dataset, we found an increase in overall classification performance in comparison to a model without pre-training, with the very large non-medical dataset performing the best in improving the classification accuracy.
机译:数字乳房X线摄影筛选是早期检测乳腺癌和降低死亡率的重要考试。然而,导致高召回率的假阳性会导致对患者和医疗保健系统产生不必要的负面影响。为了更好的辅助放射科医师,可以利用计算机辅助工具来改善图像分类之间的区别,从而潜在地减少错误召回。深度学习的出现表明了生物医学成像数据分析领域的有希望的结果。本研究旨在调查深度学习和转移学习方法,可以改善数字乳房X线摄影分类性能。特别是,我们评估了预训练深度学习模型与其他成像数据集的效果,以便在数字乳房X线识别数据集上提升分类性能。两种类型的数据集用于预训练:(1)数字化胶片乳房数据集数据集,(2)是一个非常大的非医学成像数据集。通过使用这些数据集中的任何一个最初预先列车,然后使用数字乳房X线摄影数据集进行微调,我们发现与模型的整体分类性能的增加,没有预先训练,具有非常大的非医学数据集在提高分类准确性方面表现最佳。

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