Medical image classification is often challenging for two reasons: a lack of labelled examples due to expensive and time-consuming annotation protocols, and imbalanced class labels due to the relative scarcity of disease-positive individuals in the wider population. Semi-supervised learning (SSL) methods exist for dealing with a lack of labels, but they generally do not address the problem of class imbalance. In this study we propose Adaptive Blended Consistency Loss (ABCL), a drop-in replacement for consistency loss in perturbation-based SSL methods. ABCL counteracts data skew by adaptively mixing the target class distribution of the consistency loss in accordance with class frequency. Our experiments with ABCL reveal improvements to unweighted average recall on two different imbalanced medical image classification datasets when compared with existing consistency losses that are not designed to counteract class imbalance.
翻译:医学形象分类往往由于两个原因具有挑战性:由于昂贵和费时的批注程序,缺少贴上标签的例子;由于较广大人口中疾病阳性者相对稀少,等级标签不平衡;在处理缺乏标签的问题上,存在半监督的学习方法,但通常没有解决阶级不平衡问题;在本研究报告中,我们提出了适应性混合相容性损失(ABCL),这是用来取代以扰动为基础的SSL方法中一致性损失的一种滴入式替代。ABCL通过适应性地将一致性损失的目标类别分布与分类频率混合来抵消数据扭曲。我们对ABCL的实验显示,在与现有不旨在抵消阶级不平衡现象的一致损失相比,在两种不平衡的医疗图像分类数据集方面,对非加权平均数的回顾有所改进。