Class imbalance is a common problem in medical diagnosis, causing a standard classifier to be biased towards the common classes and perform poorly on the rare classes. This is especially true for dermatology, a specialty with thousands of skin conditions but many of which have rare prevalence in the real world. Motivated by recent advances, we explore few-shot learning methods as well as conventional class imbalance techniques for the skin condition recognition problem and propose an evaluation setup to fairly assess the real-world utility of such approaches. When compared to conventional class imbalance techniques, we find that few-shot learning methods are not as performant as those conventional methods, but combining the two approaches using a novel ensemble leads to improvement in model performance, especially for rare classes. We conclude that the ensemble can be useful to address the class imbalance problem, yet progress here can further be accelerated by the use of real-world evaluation setups for benchmarking new methods.
翻译:阶级不平衡是医学诊断中常见的一个问题,导致标准分类师偏向普通班级,在稀有班级表现不佳。对于皮肤科来说尤其如此,皮肤科有数千种皮肤病,但许多皮肤病在现实世界中非常普遍。受最近进展的驱动,我们探索了微弱的学习方法以及传统班级不平衡技术,以研究皮肤状况识别问题,并提出了公平评估这类方法在现实世界中的效用的评价设置。与传统班级不平衡技术相比,我们发现少见的学习方法不如这些常规方法,而是将两种方法结合起来,使用新颖的组合,可以改善模型性能,特别是稀有班级的模型性能。我们的结论是,由于使用现实世界评估设置来为新方法制定基准,可以有助于解决阶级不平衡问题,但通过使用现实世界评估设置来进一步加快在这方面的进展。