论文标题
通过线性依赖性正则化进行医学成像分类的域概括
Domain Generalization for Medical Imaging Classification with Linear-Dependency Regularization
论文作者
论文摘要
最近,我们通过采用深层神经网络,目睹了医学成像分类领域的巨大进展。但是,最近的高级模型仍然需要访问足够大的代表性数据集进行培训,这在临床上现实的环境中通常是不可行的。当在有限的数据集中接受培训时,深层神经网络缺乏泛化能力,因为训练有素的深度神经网络在某个分布中的数据(例如,某个设备供应商或患者人群捕获的数据)可能无法通过其他分布来推广到数据。 在本文中,我们引入了一种简单但有效的方法,以提高医学成像分类领域中深神经网络的概括能力。通过观察到医疗图像的域变异性在某种程度上是紧凑的,我们建议通过使用新颖的线性依赖性正则化项来学习代表性特征空间,以在不同域收集的医疗数据中捕获可共享的信息。结果,训练有素的神经网络有望使“看不见”的医疗数据更好地概括能力。对两个具有挑战性的医学成像分类任务的实验结果表明,与最先进的基线相比,我们的方法可以实现更好的跨域泛化能力。
Recently, we have witnessed great progress in the field of medical imaging classification by adopting deep neural networks. However, the recent advanced models still require accessing sufficiently large and representative datasets for training, which is often unfeasible in clinically realistic environments. When trained on limited datasets, the deep neural network is lack of generalization capability, as the trained deep neural network on data within a certain distribution (e.g. the data captured by a certain device vendor or patient population) may not be able to generalize to the data with another distribution. In this paper, we introduce a simple but effective approach to improve the generalization capability of deep neural networks in the field of medical imaging classification. Motivated by the observation that the domain variability of the medical images is to some extent compact, we propose to learn a representative feature space through variational encoding with a novel linear-dependency regularization term to capture the shareable information among medical data collected from different domains. As a result, the trained neural network is expected to equip with better generalization capability to the "unseen" medical data. Experimental results on two challenging medical imaging classification tasks indicate that our method can achieve better cross-domain generalization capability compared with state-of-the-art baselines.