Self-Supervised Representation Learning for Ultrasound Video.

Jianbo Jiao, Richard Droste, Lior Drukker, Aris T Papageorghiou, J Alison Noble
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引用次数: 41

Abstract

Recent advances in deep learning have achieved promising performance for medical image analysis, while in most cases ground-truth annotations from human experts are necessary to train the deep model. In practice, such annotations are expensive to collect and can be scarce for medical imaging applications. Therefore, there is significant interest in learning representations from unlabelled raw data. In this paper, we propose a self-supervised learning approach to learn meaningful and transferable representations from medical imaging video without any type of human annotation. We assume that in order to learn such a representation, the model should identify anatomical structures from the unlabelled data. Therefore we force the model to address anatomy-aware tasks with free supervision from the data itself. Specifically, the model is designed to correct the order of a reshuffled video clip and at the same time predict the geometric transformation applied to the video clip. Experiments on fetal ultrasound video show that the proposed approach can effectively learn meaningful and strong representations, which transfer well to downstream tasks like standard plane detection and saliency prediction.

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超声视频的自监督表示学习。
深度学习的最新进展已经在医学图像分析中取得了很好的表现,而在大多数情况下,来自人类专家的真值注释是训练深度模型所必需的。在实践中,这种注释的收集成本很高,而且对于医学成像应用程序来说可能很少。因此,人们对从未标记的原始数据中学习表示非常感兴趣。在本文中,我们提出了一种自监督学习方法,从医学成像视频中学习有意义和可转移的表征,而无需任何类型的人类注释。我们假设为了学习这种表示,模型应该从未标记的数据中识别解剖结构。因此,我们迫使模型在数据本身的自由监督下解决解剖学感知任务。具体来说,该模型旨在纠正重新洗牌的视频片段的顺序,同时预测应用于视频片段的几何变换。胎儿超声视频实验表明,该方法可以有效地学习有意义的强表征,并能很好地转移到标准平面检测和显著性预测等下游任务中。
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