Deep learning for medical imaging suffers from temporal and privacy-related restrictions on data availability. To still obtain viable models, continual learning aims to train in sequential order, as and when data is available. The main challenge that continual learning methods face is to prevent catastrophic forgetting, i.e., a decrease in performance on the data encountered earlier. This issue makes continuous training of segmentation models for medical applications extremely difficult. Yet, often, data from at least two different domains is available which we can exploit to train the model in a way that it disregards domain-specific information. We propose an architecture that leverages the simultaneous availability of two or more datasets to learn a disentanglement between the content and domain in an adversarial fashion. The domain-invariant content representation then lays the base for continual semantic segmentation. Our approach takes inspiration from domain adaptation and combines it with continual learning for hippocampal segmentation in brain MRI. We showcase that our method reduces catastrophic forgetting and outperforms state-of-the-art continual learning methods.
翻译:深入的医学成像学习受到时间和隐私方面对数据可用性的限制。 仍然为了获得可行的模型, 持续学习的目的是在有数据可用时按先后顺序进行培训。 持续学习方法面临的主要挑战是防止灾难性的遗忘, 即早期数据性能下降。 这一问题使得医学应用的分解模型的持续培训极为困难。 然而, 至少有两个不同领域的数据, 我们可以利用这些数据来培训模型, 从而忽视特定领域的信息。 我们提议一个结构, 利用两个或两个以上的数据集同时提供, 以对抗的方式学习内容和领域之间的不和。 域变量内容的表述为连续的分解打基础。 我们的方法从领域适应中汲取灵感, 并结合大脑MRI 的河马运动分化的持续学习。 我们展示了我们的方法可以减少灾难性的遗忘, 并且超越了最先进的持续学习方法。