Junlin Yang, Nicha C Dvornek, Fan Zhang, Juntang Zhuang, Julius Chapiro, MingDe Lin, James S Duncan
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We validated and compared our model with state-of-the-art methods, including CycleGAN, Task Driven Generative Adversarial Network (TD-GAN), and Domain Adaptation via Disentangled Representations (DADR). For the DA task, our DALACE model outperformed CycleGAN, TD-GAN, and DADR with DSC of 0.847 compared to 0.721, 0.793 and 0.806. For the DAL task, our model improved the performance with DSC of 0.794 from 0.522, 0.719 and 0.742 by CycleGAN, TD-GAN, and DADR. Further, we visualized the success of disentanglement, which added human interpretability of the learned meaningful representations. Through ablation analysis, we specifically showed the concrete benefits of disentanglement for downstream tasks and the role of supervision for better disentangled representation with segmentation consistency to be invariant to domains with the proposed Domain-Agnostic Module (DAM) and to preserve anatomical information with the proposed Anatomy-Preserving Module (APM).</p>","PeriodicalId":72022,"journal":{"name":"... IEEE International Conference on Computer Vision workshops. 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引用次数: 0
摘要
领域适应(DA)有可能极大地帮助深度学习模型的泛化。然而,目前的文献通常假设将源领域的知识转移到特定的已知目标领域。领域不可知学习(DAL)提出了一项新任务,即把源领域的知识转移到来自多个异构目标领域的数据中。在这项工作中,我们提出了具有解剖学一致性嵌入(Analatomy-Consistent Embedding,DALACE)的领域不可知论学习框架(Domain-Agnostic Learning framework with Anatomy-Consistent Embedding),该框架同时适用于领域转移和任务转移,以学习一种分离表征,其目的不仅是对不同模态保持不变,而且还为跨模态肝脏分割中的 DA 和 DAL 任务保留解剖学结构。我们将我们的模型与最先进的方法进行了验证和比较,其中包括 CycleGAN、任务驱动生成对抗网络(TD-GAN)和通过分解表示的领域适应(DADR)。在 DA 任务中,我们的 DALACE 模型表现优于 CycleGAN、TD-GAN 和 DADR,DSC 为 0.847,而 CycleGAN、TD-GAN 和 DADR 的 DSC 分别为 0.721、0.793 和 0.806。在 DAL 任务中,我们的模型提高了性能,DSC 为 0.794,而 CycleGAN、TD-GAN 和 DADR 的 DSC 分别为 0.522、0.719 和 0.742。此外,我们还可视化了解缠的成功率,这增加了所学有意义表征的人性化可解释性。通过消融分析,我们具体展示了解缠对下游任务的具体益处,以及监督对更好的解缠表示法的作用,这种表示法具有分割一致性,可通过所提议的领域诊断模块(DAM)实现领域不变性,并通过所提议的解剖保留模块(APM)保留解剖信息。
Domain-Agnostic Learning with Anatomy-Consistent Embedding for Cross-Modality Liver Segmentation.
Domain Adaptation (DA) has the potential to greatly help the generalization of deep learning models. However, the current literature usually assumes to transfer the knowledge from the source domain to a specific known target domain. Domain Agnostic Learning (DAL) proposes a new task of transferring knowledge from the source domain to data from multiple heterogeneous target domains. In this work, we propose the Domain-Agnostic Learning framework with Anatomy-Consistent Embedding (DALACE) that works on both domain-transfer and task-transfer to learn a disentangled representation, aiming to not only be invariant to different modalities but also preserve anatomical structures for the DA and DAL tasks in cross-modality liver segmentation. We validated and compared our model with state-of-the-art methods, including CycleGAN, Task Driven Generative Adversarial Network (TD-GAN), and Domain Adaptation via Disentangled Representations (DADR). For the DA task, our DALACE model outperformed CycleGAN, TD-GAN, and DADR with DSC of 0.847 compared to 0.721, 0.793 and 0.806. For the DAL task, our model improved the performance with DSC of 0.794 from 0.522, 0.719 and 0.742 by CycleGAN, TD-GAN, and DADR. Further, we visualized the success of disentanglement, which added human interpretability of the learned meaningful representations. Through ablation analysis, we specifically showed the concrete benefits of disentanglement for downstream tasks and the role of supervision for better disentangled representation with segmentation consistency to be invariant to domains with the proposed Domain-Agnostic Module (DAM) and to preserve anatomical information with the proposed Anatomy-Preserving Module (APM).