论文标题

使用深度学习的医学图像分割:调查

Medical Image Segmentation Using Deep Learning: A Survey

论文作者

Wang, Risheng, Lei, Tao, Cui, Ruixia, Zhang, Bingtao, Meng, Hongying, Nandi, Asoke K.

论文摘要

深度学习已被广​​泛用于医学图像细分,并介绍了大量论文,记录了该领域的深度学习成功。在本文中,我们使用深度学习技术进行了有关医疗图像细分的全面主题调查。本文做出了两个原始贡献。首先,与将医学图像细分深度学习的文献直接分为许多小组并详细介绍每个小组的文献相比,我们根据从粗糙到细微的多层结构对当前流行的文献进行了分类。其次,本文着重于监督和弱监督的学习方法,而没有包括无监督的方法,因为它们是在许多旧调查中引入的,目前并不受欢迎。对于有监督的学习方法,我们分析了三个方面的文献:骨干网络的选择,网络块的设计以及损失功能的改善。对于弱监督的学习方法,我们分别根据数据增强,转移学习和互动分段研究文献。与现有调查相比,这项调查对文献的分类与以前的分类非常不同,并且对于读者来说更方便地了解相关的理由,并将指导他们根据深度学习方法考虑对医学图像细分的适当改进。

Deep learning has been widely used for medical image segmentation and a large number of papers has been presented recording the success of deep learning in the field. In this paper, we present a comprehensive thematic survey on medical image segmentation using deep learning techniques. This paper makes two original contributions. Firstly, compared to traditional surveys that directly divide literatures of deep learning on medical image segmentation into many groups and introduce literatures in detail for each group, we classify currently popular literatures according to a multi-level structure from coarse to fine. Secondly, this paper focuses on supervised and weakly supervised learning approaches, without including unsupervised approaches since they have been introduced in many old surveys and they are not popular currently. For supervised learning approaches, we analyze literatures in three aspects: the selection of backbone networks, the design of network blocks, and the improvement of loss functions. For weakly supervised learning approaches, we investigate literature according to data augmentation, transfer learning, and interactive segmentation, separately. Compared to existing surveys, this survey classifies the literatures very differently from before and is more convenient for readers to understand the relevant rationale and will guide them to think of appropriate improvements in medical image segmentation based on deep learning approaches.

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