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Multi-sequence Cardiac MR Segmentation with Adversarial Domain Adaptation Network

机译:对抗域自适应网络的多序列心脏MR分割

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Automatic and accurate segmentation of the ventricles and myocardium from multi-sequence cardiac MRI (CMR) is crucial for the diagnosis and treatment management for patients suffering from myocardial infarction (MI). However, due to the existence of domain shift among different modalities of datasets, the performance of deep neural networks drops significantly when the training and testing datasets are distinct. In this paper, we propose an unsupervised domain alignment method to explicitly alleviate the domain shifts among different modalities of CMR sequences, e.g., bSSFP, LGE, and T2-weighted. Our segmentation network is attention U-Net with pyramid pooling module, where multilevel feature space and output space adversarial learning are proposed to transfer discriminative domain knowledge across different datasets. Moreover, we further introduce a group-wise feature recalibration module to enforce the fine-grained semantic-level feature alignment that matching features from different networks but with the same class label. We evaluate our method on the multi-sequence cardiac MR Segmentation Challenge 2019 datasets, which contain three different modalities of MRI sequences. Extensive experimental results show that the proposed methods can obtain significant segmentation improvements compared with the baseline models.
机译:通过多序列心脏MRI(CMR)自动准确地分割心室和心肌,对于患有心肌梗塞(MI)的患者的诊断和治疗管理至关重要。但是,由于在数据集的不同模式之间存在域移位,当训练和测试数据集不同时,深度神经网络的性能会显着下降。在本文中,我们提出了一种无监督域比对方法,以显着缓解CMR序列不同模式(例如bSSFP,LGE和T2加权)之间的域移位。我们的分割网络是带有金字塔池模块的注意力U-Net,其中提出了多级特征空间和输出空间对抗性学习,以在不同数据集之间传递判别性领域知识。此外,我们进一步引入了逐组特征重新校准模块,以实施细粒度的语义级特征对齐,以匹配来自不同网络但具有相同类别标签的特征。我们在多序列心脏MR分割挑战2019数据集上评估了我们的方法,该数据集包含MRI序列的三种不同形式。大量的实验结果表明,与基线模型相比,所提出的方法可以显着提高分割效果。

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