School of Biological Science and Medical Engineering, Beihang University, Beijing, China.
School of Biological Science and Medical Engineering, Beihang University, Beijing, China; Hefei Innovation Research Institute, Beihang University, Hefei, China; Beijing Advanced Innovation Centre for Biomedical Engineering, Beijing, China.
Artif Intell Med. 2023 Apr;138:102476. doi: 10.1016/j.artmed.2022.102476. Epub 2022 Dec 15.
Medical image segmentation is a fundamental and critical step in many clinical approaches. Semi-supervised learning has been widely applied to medical image segmentation tasks since it alleviates the heavy burden of acquiring expert-examined annotations and takes the advantage of unlabeled data which is much easier to acquire. Although consistency learning has been proven to be an effective approach by enforcing an invariance of predictions under different distributions, existing approaches cannot make full use of region-level shape constraint and boundary-level distance information from unlabeled data. In this paper, we propose a novel uncertainty-guided mutual consistency learning framework to effectively exploit unlabeled data by integrating intra-task consistency learning from up-to-date predictions for self-ensembling and cross-task consistency learning from task-level regularization to exploit geometric shape information. The framework is guided by the estimated segmentation uncertainty of models to select out relatively certain predictions for consistency learning, so as to effectively exploit more reliable information from unlabeled data. Experiments on two publicly available benchmark datasets showed that: (1) Our proposed method can achieve significant performance improvement by leveraging unlabeled data, with up to 4.13% and 9.82% in Dice coefficient compared to supervised baseline on left atrium segmentation and brain tumor segmentation, respectively. (2) Compared with other semi-supervised segmentation methods, our proposed method achieve better segmentation performance under the same backbone network and task settings on both datasets, demonstrating the effectiveness and robustness of our method and potential transferability for other medical image segmentation tasks.
医学图像分割是许多临床方法的基础和关键步骤。由于半监督学习减轻了获取专家审查注释的繁重负担,并利用了更容易获取的未标记数据,因此已广泛应用于医学图像分割任务。尽管一致性学习已被证明是一种有效的方法,通过在不同分布下强制预测不变性,但现有方法无法充分利用未标记数据中的区域级形状约束和边界级距离信息。在本文中,我们提出了一种新颖的不确定性引导的互一致性学习框架,通过整合最新预测的自集成内任务一致性学习和任务级正则化的跨任务一致性学习,有效利用未标记数据来利用几何形状信息。该框架由模型的估计分割不确定性指导,以选择一致性学习的相对确定预测,从而有效地从未标记数据中利用更可靠的信息。在两个公开的基准数据集上的实验表明:(1) 我们的方法可以通过利用未标记数据实现显著的性能提升,与左心房分割和脑肿瘤分割的监督基线相比,分别提高了 4.13%和 9.82%的 Dice 系数。(2) 与其他半监督分割方法相比,我们的方法在两个数据集上的相同骨干网络和任务设置下实现了更好的分割性能,证明了我们方法的有效性和鲁棒性,以及对其他医学图像分割任务的潜在可转移性。