Automatic medical image classification is a very important field where the use of AI has the potential to have a real social impact. However, there are still many challenges that act as obstacles to making practically effective solutions. One of those is the fact that most of the medical imaging datasets have a class imbalance problem. This leads to the fact that existing AI techniques, particularly neural network-based deep-learning methodologies, often perform poorly in such scenarios. Thus this makes this area an interesting and active research focus for researchers. In this study, we propose a novel loss function to train neural network models to mitigate this critical issue in this important field. Through rigorous experiments on three independently collected datasets of three different medical imaging domains, we empirically show that our proposed loss function consistently performs well with an improvement between 2%-10% macro f1 when compared to the baseline models. We hope that our work will precipitate new research toward a more generalized approach to medical image classification.
翻译:自动医学图像分类是一个非常重要的领域,使用人工智能有可能产生真正的社会影响。然而,仍然存在许多挑战,阻碍采取切实有效的解决办法。其中之一是大多数医学成像数据集存在阶级不平衡问题。这导致现有的人工智能技术,特别是神经网络深造方法在这类假设中往往表现不佳。这使得这一领域成为研究人员一个令人感兴趣和积极的研究焦点。在这个研究中,我们提议一种新的损失功能来培训神经网络模型,以缓解这一重要领域的这一关键问题。通过对三个不同医学成像领域独立收集的数据集进行严格的试验,我们从经验上表明,我们拟议的损失功能在与基线模型相比2%-10%的宏观f1之间不断得到改进。我们希望我们的工作将激发新的研究,以更普遍的方式进行医学图像分类。