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Self-supervised Feature Learning for 3D Medical Images by Playing a Rubik's Cube

机译:通过玩魔方对3D医学图像进行自我监督的特征学习

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Witnessed the development of deep learning, increasing number of studies try to build computer aided diagnosis systems for 3D volumetric medical data. However, as the annotations of 3D medical data are difficult to acquire, the number of annotated 3D medical images is often not enough to well train the deep learning networks. The self-supervised learning deeply exploiting the information of raw data is one of the potential solutions to loose the requirement of training data. In this paper, we propose a self-supervised learning framework for the volumetric medical images. A novel proxy task, i.e., Rubik's cube recovery, is formulated to pre-train 3D neural networks. The proxy task involves two operations, i.e., cube rearrangement and cube rotation, which enforce networks to learn translational and rotational invariant features from raw 3D data. Compared to the train-from-scratch strategy, fine-tuning from the pre-trained network leads to a better accuracy on various tasks, e.g., brain hemorrhage classification and brain tumor segmentation. We show that our self-supervised learning approach can substantially boost the accuracies of 3D deep learning networks on the volumetric medical datasets without using extra data. To our best knowledge, this is the first work focusing on the self-supervised learning of 3D neural networks.
机译:见证了深度学习的发展,越来越多的研究试图为3D体量医学数据构建计算机辅助诊断系统。但是,由于难以获取3D医学数据的注释,因此,带注释的3D医学图像的数量通常不足以很好地训练深度学习网络。深入利用原始数据信息进行自我监督学习是放松训练数据需求的潜在解决方案之一。在本文中,我们为体积医学图像提出了一种自我监督的学习框架。制定了一种新颖的代理任务,即Rubik的多维数据集恢复,以对3D神经网络进行预训练。代理任务涉及两个操作,即立方体重排和立方体旋转,它们强制网络从原始3D数据中学习平移和旋转不变特征。与从头开始训练策略相比,从预先训练的网络中进行微调可以提高各种任务的准确性,例如脑出血分类和脑肿瘤分割。我们表明,我们的自我监督学习方法可以在不使用额外数据的情况下,大大提高体积医学数据集上3D深度学习网络的准确性。据我们所知,这是专注于3D神经网络自我监督学习的第一项工作。

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