Multimodal Continual Learning with Sonographer Eye-Tracking in Fetal Ultrasound.

Arijit Patra, Yifan Cai, Pierre Chatelain, Harshita Sharma, Lior Drukker, Aris T Papageorghiou, J Alison Noble
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Abstract

Deep networks have been shown to achieve impressive accuracy for some medical image analysis tasks where large datasets and annotations are available. However, tasks involving learning over new sets of classes arriving over extended time is a different and difficult challenge due to the tendency of reduction in performance over old classes while adapting to new ones. Controlling such a 'forgetting' is vital for deployed algorithms to evolve with new arrivals of data incrementally. Usually, incremental learning approaches rely on expert knowledge in the form of manual annotations or active feedback. In this paper, we explore the role that other forms of expert knowledge might play in making deep networks in medical image analysis immune to forgetting over extended time. We introduce a novel framework for mitigation of this forgetting effect in deep networks considering the case of combining ultrasound video with point-of-gaze tracked for expert sonographers during model training. This is used along with a novel weighted distillation strategy to reduce the propagation of effects due to class imbalance.

超声仪眼动在胎儿超声中的多模态持续学习。
深度网络已被证明在一些医学图像分析任务中取得了令人印象深刻的准确性,这些任务需要大量数据集和注释。然而,涉及学习新课程的任务是一个不同的和困难的挑战,因为在适应新课程的过程中,学生的表现往往会比老课程有所下降。控制这种“遗忘”对于部署的算法随着新数据的到来而逐步发展是至关重要的。通常,增量学习方法依赖于手工注释或主动反馈形式的专家知识。在本文中,我们探讨了其他形式的专家知识可能在医学图像分析中的深度网络中发挥的作用,使其不受长时间遗忘的影响。我们引入了一种新的框架来缓解深度网络中的这种遗忘效应,考虑到在模型训练期间将超声视频与专家超声医师的注视点跟踪相结合的情况。这与一种新的加权蒸馏策略一起使用,以减少由于类不平衡造成的影响的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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