The success of deep learning methods in medical image segmentation tasks usually requires a large amount of labeled data. However, obtaining reliable annotations is expensive and time-consuming. Semi-supervised learning has attracted much attention in medical image segmentation by taking the advantage of unlabeled data which is much easier to acquire. In this paper, we propose a novel dual-task mutual learning framework for semi-supervised medical image segmentation. Our framework can be formulated as an integration of two individual segmentation networks based on two tasks: learning region-based shape constraint and learning boundary-based surface mismatch. Different from the one-way transfer between teacher and student networks, an ensemble of dual-task students can learn collaboratively and implicitly explore useful knowledge from each other during the training process. By jointly learning the segmentation probability maps and signed distance maps of targets, our framework can enforce the geometric shape constraint and learn more reliable information. Experimental results demonstrate that our method achieves performance gains by leveraging unlabeled data and outperforms the state-of-the-art semi-supervised segmentation methods.
翻译:在医学图像分割任务中,深层学习方法的成功通常需要大量贴标签的数据。然而,获得可靠的说明是昂贵和费时的。半监督的学习通过利用更容易获得的未贴标签数据,在医学图像分割方面引起了很大的注意。在本文中,我们提议为半监督的医疗图像分割工作建立一个新型的双重任务相互学习框架。我们的框架可以作为两个个体分割网络的整合,基于两个任务:学习基于区域的形状限制和学习基于边界的表面不匹配。与教师和学生网络的单向传输不同,在培训过程中,一组双任务学生可以合作学习并隐含地探索彼此之间的有用知识。通过共同学习分解概率图和签署的目标远程地图,我们的框架可以执行几何形状限制并学习更可靠的信息。实验结果表明,我们的方法通过利用未贴标签的数据和超越了状态的半监督分解方法,取得了绩效收益。