MAPSeg: Unified Unsupervised Domain Adaptation for Heterogeneous Medical Image Segmentation Based on 3D Masked Autoencoding and Pseudo-Labeling.

Xuzhe Zhang, Yuhao Wu, Elsa Angelini, Ang Li, Jia Guo, Jerod M Rasmussen, Thomas G O'Connor, Pathik D Wadhwa, Andrea Parolin Jackowski, Hai Li, Jonathan Posner, Andrew F Laine, Yun Wang
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Abstract

Robust segmentation is critical for deriving quantitative measures from large-scale, multi-center, and longitudinal medical scans. Manually annotating medical scans, however, is expensive and labor-intensive and may not always be available in every domain. Unsupervised domain adaptation (UDA) is a well-studied technique that alleviates this label-scarcity problem by leveraging available labels from another domain. In this study, we introduce Masked Autoencoding and Pseudo-Labeling Segmentation (MAPSeg), a unified UDA framework with great versatility and superior performance for heterogeneous and volumetric medical image segmentation. To the best of our knowledge, this is the first study that systematically reviews and develops a framework to tackle four different domain shifts in medical image segmentation. More importantly, MAPSeg is the first framework that can be applied to centralized, federated, and test-time UDA while maintaining comparable performance. We compare MAPSeg with previous state-of-the-art methods on a private infant brain MRI dataset and a public cardiac CT-MRI dataset, and MAPSeg outperforms others by a large margin (10.5 Dice improvement on the private MRI dataset and 5.7 on the public CT-MRI dataset). MAPSeg poses great practical value and can be applied to real-world problems. GitHub: https://github.com/Xuzhez/MAPSeg/.

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MAPSeg:基于三维屏蔽自动编码和伪标签的统一无监督领域适应性异构医学图像分割。
稳健的分割对于从大规模、多中心和纵向医学扫描中得出定量测量结果至关重要。然而,手动标注医学扫描图像既昂贵又耗费人力,而且并非每个领域都能提供。无监督领域适配(UDA)是一种经过充分研究的技术,它通过利用另一领域的可用标签来缓解标签稀缺问题。在本研究中,我们介绍了掩码自动编码和伪标签分割(MAPSeg),这是一种统一的 UDA 框架,具有很强的通用性和卓越的性能,适用于异构和容积医学图像分割。据我们所知,这是第一项系统回顾和开发用于解决医学图像分割中四个不同领域转变的框架的研究。更重要的是,MAPSeg 是第一个可以应用于集中式、联合式和测试时间 UDA 的框架,同时还能保持可比的性能。我们将 MAPSeg 与之前在私人婴儿脑部 MRI 数据集和公共心脏 CT-MRI 数据集上使用的最先进方法进行了比较,结果发现 MAPSeg 远远优于其他方法(在私人 MRI 数据集上提高了 10.5 Dice,在公共 CT-MRI 数据集上提高了 5.7 Dice)。MAPSeg 具有极大的实用价值,可应用于现实世界的问题。GitHub: https://github.com/Xuzhez/MAPSeg/.
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MAPSeg: Unified Unsupervised Domain Adaptation for Heterogeneous Medical Image Segmentation Based on 3D Masked Autoencoding and Pseudo-Labeling. Learned representation-guided diffusion models for large-image generation. SI-MIL: Taming Deep MIL for Self-Interpretability in Gigapixel Histopathology. Calibrating Multi-modal Representations: A Pursuit of Group Robustness without Annotations. Representing Part-Whole Hierarchies in Foundation Models by Learning Localizability, Composability, and Decomposability from Anatomy via Self-Supervision.
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