Disease severity regression by a convolutional neural network (CNN) for medical images requires a sufficient number of image samples labeled with severity levels. Conditional generative adversarial network (cGAN)-based data augmentation (DA) is a possible solution, but it encounters two issues. The first issue is that existing cGANs cannot deal with real-valued severity levels as their conditions, and the second is that the severity of the generated images is not fully reliable. We propose continuous DA as a solution to the two issues. Our method uses continuous severity GAN to generate images at real-valued severity levels and dataset-disjoint multi-objective optimization to deal with the second issue. Our method was evaluated for estimating ulcerative colitis (UC) severity of endoscopic images and achieved higher classification performance than conventional DA methods.
翻译:医学图像需要足够数量的标注严重程度的图像样本。有条件的基因对抗网络(cGAN)基于数据增强(DA)是一个可能的解决方案,但遇到两个问题。第一个问题是,现有的cGAN不能按病情处理实际价值严重性水平,第二个问题是,生成图像的强度不完全可靠。我们建议持续DA作为这两个问题的解决方案。我们的方法是使用持续严重性GAN来生成实际价值严重性水平的图像,用数据集脱节的多目标优化来处理第二个问题。我们的方法是为了估计内分泌镜像的摄氏性严重性,并实现了比常规DA方法更高的分类性能。</s>