Recently, ultra-widefield (UWF) 200-degree fundus imaging by Optos cameras has gradually been introduced because of its broader insights for detecting more information on the fundus than regular 30-degree - 60-degree fundus cameras. Compared with UWF fundus images, regular fundus images contain a large amount of high-quality and well-annotated data. Due to the domain gap, models trained by regular fundus images to recognize UWF fundus images perform poorly. Hence, given that annotating medical data is labor intensive and time consuming, in this paper, we explore how to leverage regular fundus images to improve the limited UWF fundus data and annotations for more efficient training. We propose the use of a modified cycle generative adversarial network (CycleGAN) model to bridge the gap between regular and UWF fundus and generate additional UWF fundus images for training. A consistency regularization term is proposed in the loss of the GAN to improve and regulate the quality of the generated data. Our method does not require that images from the two domains be paired or even that the semantic labels be the same, which provides great convenience for data collection. Furthermore, we show that our method is robust to noise and errors introduced by the generated unlabeled data with the pseudo-labeling technique. We evaluated the effectiveness of our methods on several common fundus diseases and tasks, such as diabetic retinopathy (DR) classification, lesion detection and tessellated fundus segmentation. The experimental results demonstrate that our proposed method simultaneously achieves superior generalizability of the learned representations and performance improvements in multiple tasks.


翻译:最近,通过Optos相机对超广域(UWF)200度基金进行成像的Optos摄像机逐渐采用超广域(UWF)200度基金图象,因为其用于探测关于基金的信息比常规30度-60度基金照相机更多。与UWFfundus图像相比,经常基金图象包含大量高质量和附加说明的数据。由于领域差距,由定期基金图象培训的模型对UWFFundus图像进行识别的模型表现不佳。因此,鉴于注解的医疗数据是劳动密集和消耗时间的,本文中我们探索如何利用定期基金图象来改善基金有限的多度数据和说明,以提高培训效率。我们提议使用经修改的循环基因对抗网络(CycleGAN)模型来弥合经常基金与基金基金图象之间的差距,并生成更多的UWFF基金图象图象。在GAN损失GAN来改进和管理所生成的数据的质量时,我们的方法并不要求两个领域的图象相互匹配,甚至连称基金图象是用于更有效率的多级的比值的比值。我们一般的比值的比值。我们用来评估我们通常的比值的比值的比值和比值的比值的比值的比值的比值。

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