Medical image classification has been widely adopted in medical image analysis. However, due to the difficulty of collecting and labeling data in the medical area, medical image datasets are usually highly-imbalanced. To address this problem, previous works utilized class samples as prior for re-weighting or re-sampling but the feature representation is usually still not discriminative enough. In this paper, we adopt the contrastive learning to tackle the long-tailed medical imbalance problem. Specifically, we first propose the category prototype and adversarial proto-instance to generate representative contrastive pairs. Then, the prototype recalibration strategy is proposed to address the highly imbalanced data distribution. Finally, a unified proto-loss is designed to train our framework. The overall framework, namely as Prototype-aware Contrastive learning (ProCo), is unified as a single-stage pipeline in an end-to-end manner to alleviate the imbalanced problem in medical image classification, which is also a distinct progress than existing works as they follow the traditional two-stage pipeline. Extensive experiments on two highly-imbalanced medical image classification datasets demonstrate that our method outperforms the existing state-of-the-art methods by a large margin.
翻译:医学图像分类在医学图像分析中被广泛采用,然而,由于在医学领域收集和标签数据方面困难重重,医学图像数据集通常高度平衡。为了解决这一问题,以前曾用过分类样本来重新加权或再抽样,但特征描述通常仍然不够具有歧视性。在本文中,我们采用对比学习方法来解决长期的医学不平衡问题。具体地说,我们首先建议采用分类原型和对抗性先质,以产生具有代表性的对比性对子。然后,提出原型重新校正战略,以解决高度不平衡的数据分布。最后,设计了统一的原型损失,以培训我们的框架。总体框架,即原型自觉反对立学习(ProCo),以端到端的方式统一为单一阶段的管道,以缓解医学图像分类中的不平衡问题,这也比传统的两阶段管道的现有工程有明显的进展。在两种高度平衡的医疗图像分类方法上进行了广泛的实验,表明我们的方法超越了现有的大比例。