基于多任务和课程学习的医学图像分割半监督框架。

IF 6.6 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
International Journal of Neural Systems Pub Date : 2022-09-01 Epub Date: 2022-07-30 DOI:10.1142/S0129065722500435
Kaiping Wang, Yan Wang, Bo Zhan, Yujie Yang, Chen Zu, Xi Wu, Jiliu Zhou, Dong Nie, Luping Zhou
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引用次数: 7

摘要

有监督深度学习医学图像分割的一个实际问题是缺乏标记数据,而标记数据的获取既昂贵又耗时。相比之下,在临床中有相当数量的未标记数据。为了更好地利用未标记数据,提高有限标记数据的泛化能力,本文提出了一种基于多任务课程学习的半监督分割方法。这里的课程学习是指在训练网络时,优先学习较简单的知识,以辅助较难的知识的学习。具体来说,我们的框架包括一个主分割任务和两个辅助任务,即特征回归任务和目标检测任务。这两个辅助任务预测一些相对简单的图像级属性和边界框作为主分割任务的伪标签,强制像素级分割结果匹配这些伪标签的分布。此外,为了解决图像中的类不平衡问题,嵌入了基于边界盒的关注(BBA)模块,使分割网络更多地关注目标区域而不是背景。此外,为了减轻伪标签可能产生偏差所带来的不利影响,在辅助任务中还采用了容错机制,包括不等式约束和边界盒放大。我们的方法在ACDC2017和PROMISE12数据集上进行了验证。实验结果表明,与完全监督方法和最先进的半监督方法相比,我们的方法在小标记数据集上产生了更好的分割性能。代码可从https://github.com/DeepMedLab/MTCL获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Semi-Supervised Framework with Multi-Task and Curriculum Learning for Medical Image Segmentation.

A practical problem in supervised deep learning for medical image segmentation is the lack of labeled data which is expensive and time-consuming to acquire. In contrast, there is a considerable amount of unlabeled data available in the clinic. To make better use of the unlabeled data and improve the generalization on limited labeled data, in this paper, a novel semi-supervised segmentation method via multi-task curriculum learning is presented. Here, curriculum learning means that when training the network, simpler knowledge is preferentially learned to assist the learning of more difficult knowledge. Concretely, our framework consists of a main segmentation task and two auxiliary tasks, i.e. the feature regression task and target detection task. The two auxiliary tasks predict some relatively simpler image-level attributes and bounding boxes as the pseudo labels for the main segmentation task, enforcing the pixel-level segmentation result to match the distribution of these pseudo labels. In addition, to solve the problem of class imbalance in the images, a bounding-box-based attention (BBA) module is embedded, enabling the segmentation network to concern more about the target region rather than the background. Furthermore, to alleviate the adverse effects caused by the possible deviation of pseudo labels, error tolerance mechanisms are also adopted in the auxiliary tasks, including inequality constraint and bounding-box amplification. Our method is validated on ACDC2017 and PROMISE12 datasets. Experimental results demonstrate that compared with the full supervision method and state-of-the-art semi-supervised methods, our method yields a much better segmentation performance on a small labeled dataset. Code is available at https://github.com/DeepMedLab/MTCL.

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来源期刊
International Journal of Neural Systems
International Journal of Neural Systems 工程技术-计算机:人工智能
CiteScore
11.30
自引率
28.80%
发文量
116
审稿时长
24 months
期刊介绍: The International Journal of Neural Systems is a monthly, rigorously peer-reviewed transdisciplinary journal focusing on information processing in both natural and artificial neural systems. Special interests include machine learning, computational neuroscience and neurology. The journal prioritizes innovative, high-impact articles spanning multiple fields, including neurosciences and computer science and engineering. It adopts an open-minded approach to this multidisciplinary field, serving as a platform for novel ideas and enhanced understanding of collective and cooperative phenomena in computationally capable systems.
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