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Continual Learning for Domain Adaptation in Chest X-ray Classification

机译:胸部X射线分类中的域适应持续学习

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Over the last years, Deep Learning has been successfully applied to a broad range of medical applications. Especially in the context of chest X-ray classification, results have been reported which are on par, or even superior to experienced radiologists. Despite this success in controlled experimental environments, it has been noted that the ability of Deep Learning models to generalize to data from a new domain (with potentially different tasks) is often limited. In order to address this challenge, we investigate techniques from the field of {em Continual Learning} (CL) including Joint Training (JT), Elastic Weight Consolidation (EWC) and Learning Without Forgetting (LWF). Using the ChestX-ray14 and the MIMIC-CXR datasets, we demonstrate empirically that these methods provide promising options to improve the performance of Deep Learning models on a target domain and to mitigate effectively {em catastrophic forgetting} for the source domain. To this end, the best overall performance was obtained using JT, while for LWF competitive results could be achieved - even without accessing data from the source domain.
机译:在过去几年中,深入学习已成功应用于广泛的医疗应用。特别是在胸部X射线分类的背景下,已经报道了结果,这是对经验丰富的放射科医师的标准。尽管在受控实验环境中取得了这一成功,但已经注意到深度学习模型概括到来自新域(具有潜在不同任务)的数据的能力通常是有限的。为了解决这一挑战,我们调查来自{ EM持续学习}(CL)领域的技术,包括联合培训(JT),弹性重量整合(EWC)和学习而不会忘记(LWF)。使用CHETX-RAY14和模拟CXR数据集,我们经验证明了这些方法提供了提高目标域上深度学习模型的性能的有希望的选择,并有效地减轻源域的{ EM灾难性遗忘}。为此,使用JT获得最佳整体性能,而对于LWF竞争结果,也可以实现 - 即使不访问来自源域的数据。

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