Electronic Information School, Wuhan University, Wuhan, China.
Department of Ultrasound, Zhongnan Hospital of Wuhan University, Wuhan, China.
Front Public Health. 2023 Mar 8;11:1055815. doi: 10.3389/fpubh.2023.1055815. eCollection 2023.
Recent years have seen remarkable progress of learning-based methods on Ultrasound Thyroid Nodules segmentation. However, with very limited annotations, the multi-site training data from different domains makes the task remain challenging. Due to domain shift, the existing methods cannot be well generalized to the out-of-set data, which limits the practical application of deep learning in the field of medical imaging. In this work, we propose an effective domain adaptation framework which consists of a bidirectional image translation module and two symmetrical image segmentation modules. The framework improves the generalization ability of deep neural networks in medical image segmentation. The image translation module conducts the mutual conversion between the source domain and the target domain, while the symmetrical image segmentation modules perform image segmentation tasks in both domains. Besides, we utilize adversarial constraint to further bridge the domain gap in feature space. Meanwhile, a consistency loss is also utilized to make the training process more stable and efficient. Experiments on a multi-site ultrasound thyroid nodule dataset achieve 96.22% for PA and 87.06% for DSC in average, demonstrating that our method performs competitively in cross-domain generalization ability with state-of-the-art segmentation methods.
近年来,基于学习的方法在超声甲状腺结节分割方面取得了显著进展。然而,由于注释非常有限,来自不同领域的多站点训练数据使得该任务仍然具有挑战性。由于域转移,现有的方法不能很好地推广到集合外的数据,这限制了深度学习在医学成像领域的实际应用。在这项工作中,我们提出了一种有效的域自适应框架,它由一个双向图像翻译模块和两个对称的图像分割模块组成。该框架提高了深度神经网络在医学图像分割中的泛化能力。图像翻译模块在源域和目标域之间进行相互转换,而对称的图像分割模块则在两个域中执行图像分割任务。此外,我们利用对抗约束进一步缩小特征空间中的域差距。同时,还利用一致性损失使训练过程更加稳定和高效。在一个多站点超声甲状腺结节数据集上的实验实现了 PA 平均 96.22%和 DSC 平均 87.06%的结果,表明我们的方法在跨域泛化能力方面具有竞争力,优于最先进的分割方法。