论文标题
通过医学图像分割的形状建模适应无监督的域
Unsupervised Domain Adaptation through Shape Modeling for Medical Image Segmentation
论文作者
论文摘要
形状信息是在医学图像中细分器官分割的强大而有价值的。但是,当前大多数基于深度学习的细分算法尚未考虑形状信息,这可能导致对纹理的偏见。我们旨在明确地对形状进行建模并使用它来帮助医疗图像分割。先前的方法提出了基于变异的自动编码器(VAE)模型,以了解特定器官的形状分布,并通过将其拟合到学习的形状分布中来自动评估分割预测的质量。我们旨在将VAE纳入当前的分割管道。具体而言,我们提出了一种基于伪损失和在教师学习范式下的VAE重建损失的新的无监督域适应管道。两种损失均同时优化,作为回报,提高了细分任务性能。对三个公共胰腺细分数据集以及两个内部胰腺细分数据集进行了广泛的实验,在骰子分数中至少有2.8分的增益显示了一致的改进,这表明了我们方法在挑战无监督的域适应域对医学图像分割的适应方案。我们希望这项工作能够在医学成像中提高形状分析和几何学习。
Shape information is a strong and valuable prior in segmenting organs in medical images. However, most current deep learning based segmentation algorithms have not taken shape information into consideration, which can lead to bias towards texture. We aim at modeling shape explicitly and using it to help medical image segmentation. Previous methods proposed Variational Autoencoder (VAE) based models to learn the distribution of shape for a particular organ and used it to automatically evaluate the quality of a segmentation prediction by fitting it into the learned shape distribution. Based on which we aim at incorporating VAE into current segmentation pipelines. Specifically, we propose a new unsupervised domain adaptation pipeline based on a pseudo loss and a VAE reconstruction loss under a teacher-student learning paradigm. Both losses are optimized simultaneously and, in return, boost the segmentation task performance. Extensive experiments on three public Pancreas segmentation datasets as well as two in-house Pancreas segmentation datasets show consistent improvements with at least 2.8 points gain in the Dice score, demonstrating the effectiveness of our method in challenging unsupervised domain adaptation scenarios for medical image segmentation. We hope this work will advance shape analysis and geometric learning in medical imaging.