医学图像分割中单域泛化的对抗一致性。

Yanwu Xu, Shaoan Xie, Maxwell Reynolds, Matthew Ragoza, Mingming Gong, Kayhan Batmanghelich
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引用次数: 0

摘要

一种能够泛化到未知对比度和扫描仪设置的器官分割方法,可以大大减少深度学习模型的再训练需求。领域泛化(DG)旨在实现这一目标。然而,大多数用于分割的 DG 方法在训练过程中都需要来自多个领域的训练数据。我们提出了一种新颖的对抗性领域泛化方法,用于在单个领域的数据基础上训练器官分割。我们通过学习对抗性域合成器(ADS)来合成新域,并假定合成域覆盖足够大的可信分布区域,这样就可以从合成域插值出未见过的域。我们提出了一个互信息正则器,以加强合成域图像之间的语义一致性,这可以通过补丁级对比学习来估计。我们对我们的方法进行了评估,该方法适用于各种未知模式、扫描协议和扫描仪部位的器官分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial Consistency for Single Domain Generalization in Medical Image Segmentation.

An organ segmentation method that can generalize to unseen contrasts and scanner settings can significantly reduce the need for retraining of deep learning models. Domain Generalization (DG) aims to achieve this goal. However, most DG methods for segmentation require training data from multiple domains during training. We propose a novel adversarial domain generalization method for organ segmentation trained on data from a single domain. We synthesize the new domains via learning an adversarial domain synthesizer (ADS) and presume that the synthetic domains cover a large enough area of plausible distributions so that unseen domains can be interpolated from synthetic domains. We propose a mutual information regularizer to enforce the semantic consistency between images from the synthetic domains, which can be estimated by patch-level contrastive learning. We evaluate our method for various organ segmentation for unseen modalities, scanning protocols, and scanner sites.

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