IEEE J Biomed Health Inform. 2023 May;27(5):2399-2410. doi: 10.1109/JBHI.2023.3251380. Epub 2023 May 4.
Recently, there has been significant progress in medical image segmentation utilizing deep learning techniques. However, these achievements largely rely on the supposition that the source and target domain data are identically distributed, and the direct application of related methods without addressing the distribution shift results in dramatic degradation in realistic clinical environments. Current approaches concerning the distribution shift either require the target domain data in advance for adaptation, or focus only on the distribution shift across domains while ignoring the intra-domain data variation. This paper proposes a domain-aware dual attention network for the generalized medical image segmentation task on unseen target domains. To alleviate the severe distribution shift between the source and target domains, an Extrinsic Attention (EA) module is designed to learn image features with knowledge originating from multi-source domains. Moreover, an Intrinsic Attention (IA) module is also proposed to handle the intra-domain variation by individually modeling the pixel-region relations derived from an image. The EA and IA modules complement each other well in terms of modeling the extrinsic and intrinsic domain relationships, respectively. To validate the model effectiveness, comprehensive experiments are conducted on various benchmark datasets, including the prostate segmentation in magnetic resonance imaging (MRI) scans and the optic cup/disc segmentation in fundus images. The experimental results demonstrate that our proposed model effectively generalizes to unseen domains and exceeds the existing advanced approaches.
最近,利用深度学习技术进行医学图像分割取得了重大进展。然而,这些成果在很大程度上依赖于源域和目标域数据具有相同分布的假设,而直接应用相关方法而不解决分布偏移问题会导致在现实临床环境中性能急剧下降。当前涉及分布偏移的方法要么需要事先获得目标域数据进行适应,要么只关注跨域的分布偏移,而忽略了域内数据变化。本文提出了一种用于在未见目标域上进行广义医学图像分割任务的有监督双注意网络。为了缓解源域和目标域之间的严重分布偏移,设计了一种外部注意(EA)模块,以利用来自多源域的知识学习图像特征。此外,还提出了一种内部注意(IA)模块,通过对从图像中提取的像素区域关系进行单独建模来处理域内变化。EA 和 IA 模块在建模外部和内部域关系方面相互补充。为了验证模型的有效性,在各种基准数据集上进行了全面的实验,包括磁共振成像(MRI)扫描中的前列腺分割和眼底图像中的视杯/盘分割。实验结果表明,我们提出的模型能够有效地推广到未见的领域,并超过了现有的先进方法。