Prototype-Guided Graph Reasoning Network for Few-Shot Medical Image Segmentation

Wendong Huang;Jinwu Hu;Junhao Xiao;Yang Wei;Xiuli Bi;Bin Xiao
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Abstract

Few-shot semantic segmentation (FSS) is of tremendous potential for data-scarce scenarios, particularly in medical segmentation tasks with merely a few labeled data. Most of the existing FSS methods typically distinguish query objects with the guidance of support prototypes. However, the variances in appearance and scale between support and query objects from the same anatomical class are often exceedingly considerable in practical clinical scenarios, thus resulting in undesirable query segmentation masks. To tackle the aforementioned challenge, we propose a novel prototype-guided graph reasoning network (PGRNet) to explicitly explore potential contextual relationships in structured query images. Specifically, a prototype-guided graph reasoning module is proposed to perform information interaction on the query graph under the guidance of support prototypes to fully exploit the structural properties of query images to overcome intra-class variances. Moreover, instead of fixed support prototypes, a dynamic prototype generation mechanism is devised to yield a collection of dynamic support prototypes by mining rich contextual information from support images to further boost the efficiency of information interaction between support and query branches. Equipped with the proposed two components, PGRNet can learn abundant contextual representations for query images and is therefore more resilient to object variations. We validate our method on three publicly available medical segmentation datasets, namely CHAOS-T2, MS-CMRSeg, and Synapse. Experiments indicate that the proposed PGRNet outperforms previous FSS methods by a considerable margin and establishes a new state-of-the-art performance.
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原型引导的图推理网络用于少量医疗图像分割
少镜头语义分割(FSS)在数据稀缺的情况下具有巨大的潜力,特别是在只有少量标记数据的医疗分割任务中。现有的FSS方法大多在支持原型的指导下区分查询对象。然而,在实际的临床场景中,来自同一解剖类的支持对象和查询对象在外观和规模上的差异往往非常大,从而导致不希望的查询分割掩码。为了解决上述挑战,我们提出了一种新的原型引导图推理网络(PGRNet)来明确地探索结构化查询图像中潜在的上下文关系。具体而言,提出了一个原型引导图推理模块,在支持原型的指导下对查询图进行信息交互,充分利用查询图像的结构属性,克服类内方差。此外,设计了一种动态原型生成机制,通过从支持图像中挖掘丰富的上下文信息,生成动态支持原型集合,从而提高了支持分支与查询分支之间信息交互的效率。结合这两个组件,PGRNet可以学习到查询图像的丰富的上下文表示,因此对对象变化具有更强的弹性。我们在三个公开可用的医疗分割数据集上验证了我们的方法,即CHAOS-T2, MS-CMRSeg和Synapse。实验表明,所提出的PGRNet在很大程度上优于以前的FSS方法,并建立了新的最先进的性能。
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