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Entropy Guided Unsupervised Domain Adaptation for Cross-Center Hip Cartilage Segmentation from MRI

机译:熵引导了MRI的交叉中心髋关节软骨细分的无监督域适应

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Hip cartilage damage is a major predictor of the clinical outcome of surgical correction for femoroacetabular impingement (FAI) and hip dysplasia. Automatic segmentation for hip cartilage is an essential prior step in assessing cartilage damage status. Deep Convolutional Neural Networks have shown great success in various automated medical image segmentations, but testing on domain-shifted datasets (e.g. images obtained from different centers) can lead to severe performance losses. Creating annotations for each center is particularly expensive. Unsupervised Domain Adaptation (UDA) addresses this challenge by transferring knowledge from a domain with labels (source domain) to a domain without labels (target domain). In this paper, we propose an entropy-guided domain adaptation method to address this challenge. Specifically, we first trained our model with supervised loss on the source domain, which enables low-entropy predictions on source-like images. Two discriminators were then used to minimize the gap between source and target domain with respect to the alignment of feature and entropy distribution: the feature map discriminator D_F and the entropy map discriminator D_E. D_F aligns the feature map of different domains, while De matches the target segmentation to low-entropy predictions like those from the source domain. The results of comprehensive experiments on cross-center MRI hip cartilage segmentation show the effectiveness of this method.
机译:髋关节软骨损伤是股骨旁撞击(FAI)和髋关节发育不良的外科矫正临床结果的主要预测因子。髋关节软骨的自动分割是评估软骨损伤状态的必要前一步。深度卷积神经网络在各种自动化的医学图像分割中表现出巨大的成功,但是在域移位数据集(例如,从不同中心获得的图像)可能导致严重的性能损失。为每个中心创建注释特别昂贵。无监督的域适应(UDA)通过将知识从带有标签(源域)的域传输到没有标签(目标域)的域来解决这一挑战。在本文中,我们提出了一种熵导域适应方法来解决这一挑战。具体而言,我们首先在源域上的监督损失训练了我们的模型,它可以在源源域上进行低熵预测。然后,使用两个判别器来最小化相对于特征和熵分布的对准的源域和目标域之间的间隙:特征图鉴别器D_F和熵图鉴别器D_E。 d_f对齐不同域的特征映射,而de将目标分段与源域的低熵预测匹配。交叉中心MRI髋关节软骨分段综合实验结果表明了该方法的有效性。

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