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Revisiting Rubik's Cube: Self-supervised Learning with Volume-Wise Transformation for 3D Medical Image Segmentation

机译:Revisiting Rubik的立方体:与3D医学图像分割的音量变换进行自我监督

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Deep learning highly relies on the quantity of annotated data. However, the annotations for 3D volumetric medical data require experienced physicians to spend hours or even days for investigation. Self-supervised learning is a potential solution to get rid of the strong requirement of training data by deeply exploiting raw data information. In this paper, we propose a novel self-supervised learning framework for volumetric medical images. Specifically, we propose a context restoration task, i.e., Rubik's cube++, to pre-train 3D neural networks. Different from the existing context-restoration-based approaches, we adopt a volume-wise transformation for context permutation, which encourages network to better exploit the inherent 3D anatomical information of organs. Compared to the strategy of training from scratch, fine-tuning from the Rubik's cube++ pre-trained weight can achieve better performance in various tasks such as pancreas segmentation and brain tissue segmentation. The experimental results show that our self-supervised learning method can significantly improve the accuracy of 3D deep learning networks on volumetric medical datasets without the use of extra data.
机译:深度学习高度依赖于注释数据的数量。但是,3D体积医疗数据的注释需要经验丰富的医生花费几个小时甚至是日子进行调查。自我监督的学习是通过深入利用原始数据信息来摆脱培训数据的强大要求的潜在解决方案。在本文中,我们向体积医学图像提出了一种新颖的自我监督学习框架。具体而言,我们提出了一个上下文恢复任务,即Rubik的立方体++,预先列车3D神经网络。与现有的基于上下文恢复的方法不同,我们采用了对上下文排列的卷变换,这鼓励网络更好地利用器官的固有3D解剖信息。与从头训练训练策略相比,Rubik的立方体++预先训练的重量微调可以在胰腺分段和脑组织细分等各种任务中实现更好的性能。实验结果表明,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显着提高体积医学数据集上的3D深度学习网络的准确性。

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