The annotation of disease severity for medical image datasets often relies on collaborative decisions from multiple human graders. The intra-observer variability derived from individual differences always persists in this process, yet the influence is often underestimated. In this paper, we cast the intra-observer variability as an uncertainty problem and incorporate the label uncertainty information as guidance into the disease screening model to improve the final decision. The main idea is dividing the images into simple and hard cases by uncertainty information, and then developing a multi-stream network to deal with different cases separately. Particularly, for hard cases, we strengthen the network's capacity in capturing the correct disease features and resisting the interference of uncertainty. Experiments on a fundus image-based glaucoma screening case study show that the proposed model outperforms several baselines, especially in screening hard cases.
翻译:医学图像数据集的疾病严重性说明往往依赖于多个人类分级者的协同决定。在这一过程中,单个差异产生的观察者内部变异性始终存在,但影响往往被低估。在本文中,我们将观察者内部变异性作为一个不确定性问题,并将标签不确定性信息作为指导纳入疾病筛查模型,以改进最终决定。主要想法是通过不确定性信息将图像分为简单和困难案例,然后开发一个多流网络,分别处理不同案例。特别是对于困难案例,我们加强了网络捕捉正确疾病特征和抵抗不确定性干扰的能力。对基于Fundus图像的格劳科马筛查案例研究的实验显示,拟议的模型超越了几个基线,特别是在筛选硬案例时。