Developing a deep learning method for medical segmentation tasks heavily relies on a large amount of labeled data. However, the annotations require professional knowledge and are limited in number. Recently, semi-supervised learning has demonstrated great potential in medical segmentation tasks. Most existing methods related to cardiac magnetic resonance images only focus on regular images with similar domains and high image quality. A semi-supervised domain generalization method was developed in [2], which enhances the quality of pseudo labels on varied datasets. In this paper, we follow the strategy in [2] and present a domain generalization method for semi-supervised medical segmentation. Our main goal is to improve the quality of pseudo labels under extreme MRI Analysis with various domains. We perform Fourier transformation on input images to learn low-level statistics and cross-domain information. Then we feed the augmented images as input to the double cross pseudo supervision networks to calculate the variance among pseudo labels. We evaluate our method on the CMRxMotion dataset [1]. With only partially labeled data and without domain labels, our approach consistently generates accurate segmentation results of cardiac magnetic resonance images with different respiratory motions. Code will be available after the conference.
翻译:为医疗分解任务开发深度学习方法在很大程度上依赖大量贴标签的数据。然而,说明需要专业知识,数量有限。最近,半监督的学习在医疗分解任务中显示出巨大的潜力。大多数与心脏磁共振图像有关的现有方法仅侧重于具有类似领域和高图像质量的常规图像。在[2]中开发了半监督的域通用方法,该方法提高了不同数据集的假标签质量。在本文中,我们遵循了[2]的战略,并提出了半监督医疗分解的域通用方法。我们的主要目标是提高不同领域极端磁共振分析下的假标签的质量。我们用输入图像进行四面式转换,学习低层次的统计数据和跨面信息。然后,我们将增强的图像作为输入双面跨面监督网络,以计算伪标签的差异。我们评估了CMRxmotion数据集[1]的方法。我们仅使用部分标签,没有域标签,因此我们的方法将持续生成具有不同呼吸道运动的心磁共振图像的准确分解结果。