COVID-19 classification using chest Computed Tomography (CT) has been found pragmatically useful by several studies. Due to the lack of annotated samples, these studies recommend transfer learning and explore the choices of pre-trained models and data augmentation. However, it is still unknown if there are better strategies than vanilla transfer learning for more accurate COVID-19 classification with limited CT data. This paper provides an affirmative answer, devising a novel `model' augmentation technique that allows a considerable performance boost to transfer learning for the task. Our method systematically reduces the distributional shift between the source and target domains and considers augmenting deep learning with complementary representation learning techniques. We establish the efficacy of our method with publicly available datasets and models, along with identifying contrasting observations in the previous studies.
翻译:几项研究发现,利用胸腔成像学(CT)的COVID-19分类是实用的,由于缺乏附加说明的样本,这些研究建议转让学习,并探索培训前模型和数据扩增的选择,然而,尚不清楚是否有比香草转移学习更好的战略,以比较准确的COVID-19分类,并掌握有限的CT数据。本文提供了肯定的答案,设计了一种新型的“模范”增强技术,能够大大促进工作转移学习。我们的方法系统地减少了源和目标领域之间的分布转移,并考虑利用补充代表性学习技术扩大深层学习。我们用公开的数据集和模型来确定我们的方法的有效性,同时查明以往研究中的对比意见。