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Transfer Learning and Fine Tuning in Mammogram BI-RADS Classification

机译:乳房X光检查BI-RADS分类中的转移学习和微调

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The BI-RADS report system is widely used by radiologists and clinicians to document relevant findings in the mammogram exam by using a 6 category final assessment. Deep learning has achieved a high level of accuracy in multi category classification of natural images. Because of that, it is of interest to address the mammography malignancy classification according to the established BI-RADS categories. In this work, we use transfer learning on NASNet Mobile and fine tuning on VGG16 and VGG19 to classify mammogram images according to the BI-RADS scale on the INbreast dataset. Our proposed methodology achieved an accuracy (ACC) of 90.9% and a macro averaged area under the receiver operating characteristic curve (AUC) of 99.0%; outperforming some of the similar works found in the literature review.
机译:放射科医生和临床医生广泛使用BI-RADS报告系统,通过使用6类最终评估来记录乳房X光检查中的相关发现。在自然图像的多类别分类中,深度学习已达到很高的准确性。因此,根据已建立的BI-RADS类别解决乳房X线摄影的恶性分类是很有意义的。在这项工作中,我们在NASNet Mobile上使用转移学习,并对VGG16和VGG19进行微调,以根据INbreast数据集上的BI-RADS尺度对乳房X线照片进行分类。我们提出的方法实现了90.9%的准确度(ACC)和99.0%的接收器工作特性曲线(AUC)下的宏观平均面积;表现优于文献综述中的一些类似作品。

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