Diabetic Retinopathy (DR) is a leading cause of vision loss in the world, and early DR detection is necessary to prevent vision loss and support an appropriate treatment. In this work, we leverage interactive machine learning and introduce a joint learning framework, termed DRG-Net, to effectively learn both disease grading and multi-lesion segmentation. Our DRG-Net consists of two modules: (i) DRG-AI-System to classify DR Grading, localize lesion areas, and provide visual explanations; (ii) DRG-Expert-Interaction to receive feedback from user-expert and improve the DRG-AI-System. To deal with sparse data, we utilize transfer learning mechanisms to extract invariant feature representations by using Wasserstein distance and adversarial learning-based entropy minimization. Besides, we propose a novel attention strategy at both low- and high-level features to automatically select the most significant lesion information and provide explainable properties. In terms of human interaction, we further develop DRG-Net as a tool that enables expert users to correct the system's predictions, which may then be used to update the system as a whole. Moreover, thanks to the attention mechanism and loss functions constraint between lesion features and classification features, our approach can be robust given a certain level of noise in the feedback of users. We have benchmarked DRG-Net on the two largest DR datasets, i.e., IDRID and FGADR, and compared it to various state-of-the-art deep learning networks. In addition to outperforming other SOTA approaches, DRG-Net is effectively updated using user feedback, even in a weakly-supervised manner.
翻译:DRG-AI-System (DDR) 是造成全世界视力丧失的主要原因, 早期DRD检测对于预防视力丧失和帮助适当治疗十分必要。 在这项工作中, 我们利用互动机器学习, 并引入一个名为 DRG- Net 的联合学习框架, 以有效学习疾病分级和多偏离分化。 我们的DRG- Net 由两个模块组成:(i) DRG- AI- System 将DRG- AI- System 分类, 本地化偏差区域, 并提供直观解释解释;(ii) DRG- 探索- 互动, 以接收用户专家专家的反馈, 改善 DRG- AI- System 。 为了处理稀少的数据, 我们利用传输机制来提取差异性特征, 通过使用瓦瑟斯坦的远程和对抗性学习最小性能最小性能最小性能。 此外, 我们提出一个新的关注战略, 自动选择最显著的DRG- dreg- develop lad eral eral eral eral- er- lax- lax- lax- lax- lax- lax- lax- lax- lax- lax- lax- lax