TauMed:深度学习在医学诊断中的测试增强

Yunhan Hou, Jiawei Liu, Daiwei Wang, Jiawei He, Chunrong Fang, Zhenyu Chen
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引用次数: 4

摘要

深度学习在医学诊断方面取得了很大进展。然而,由于数据标准化和隐私性的限制,阻碍了医学图像数据的采集和共享,导致一些智能医疗诊断模型的准确率难以接受。另一个问题是数据质量。如果使用数量不足、质量不高的数据进行医学诊断模型的训练和测试,可能会造成严重的医疗事故。我们通常采用数据增强的方法来处理,其中最具代表性的一种方法是通过突变关系。然而,常用的突变方法虽然可以增加医学数据量,但由于医学图像的特殊性,无法保证图像的质量。因此,我们结合医学图像的特点,提出了基于一系列突变规则和领域语义的医学数据集增强技术TauMed,以生成足够的高质量图像。此外,我们选择了ResNet-50模型对增强数据集进行实验,并将结果与两种主要流行的突变工具进行了比较。实验结果表明,TauMed可以有效地提高模型的分类精度,增强图像的质量高于其他两种工具。它的视频在https://www.youtube.com/watch?v=O8W8I7U_eqk上,TauMed可以在http://121.196.124.158:9500/上使用。
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TauMed: test augmentation of deep learning in medical diagnosis
Deep learning has made great progress in medical diagnosis. However, due to data standardization and privacy restriction, the acquisition and sharing of medical image data have been hindered, leading to the unacceptable accuracy of some intelligent medical diagnosis models. Another concern is data quality. If insufficient quantity and low-quality data are used for training and testing medical diagnosis models, it may cause serious medical accidents. We always use data augmentation to deal with it, and one of the most representative ways is through mutation relation. However, although common mutation methods can increase the amount of medical data, the quality of the image cannot be guaranteed due to the particularity of medical image. Therefore, combined with the characteristics of medical images, we propose TauMed, which implements augmentation techniques based on a series of mutation rules and domain semantics on medical datasets to generate sufficient and high-quality images. Moreover, we chose the ResNet-50 model to experiment with the augmented dataset and compared the results with two main popular mutation tools. The experimental result indicates that TauMed can improve the classification accuracy of the model effectively, and the quality of augmented images is higher than the other two tools. Its video is at https://www.youtube.com/watch?v=O8W8I7U_eqk and TauMed can be used at http://121.196.124.158:9500/.
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