Contour-Aware Multi-Expert Model for Ambiguous Medical Image Segmentation

Jiangnan Wang;Caixia Zhou;Yaping Huang
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Abstract

Medical image segmentation is highly challenging due to the uncertainties caused by the inherent ambiguous regions and expert knowledge variations. Some recent works explore the uncertainties and produce multiple outputs to obtain more robust results. However, the quality of the boundary areas remains unsatisfactory. Unfortunately, the key differences among experts usually lie in these boundary areas, which are more critical in practical diagnosis. To tackle the above issues, different from previous pixel-wise segmentation approaches, we present a new perspective and formulate the task as a contour-based regression problem, and further propose a novel Contour-aware Multi-expert Segmentor, named ContourMS, which can provide diverse segmentation results with rich boundary details in a coarse-to-fine manner. Specifically, in the coarse stage, we use a SegmentNet to predict a region mask by leveraging the knowledge of multiple experts, and then the mask is converted to an initial contour shared by all experts. In the fine stage, we design a LatentNet to learn the expert-level latent space and a ContourNet to refine each expert contour, where the deformation guided by the expert style can gradually adjust the contour to match different annotations. Extensive experiments demonstrate that the proposed method can generate diverse segment variants and achieve competitive performance on multiple public multi-expert medical segmentation datasets.
轮廓感知的多专家模糊医学图像分割模型
由于医学图像固有的模糊区域和专家知识的差异所带来的不确定性,医学图像分割具有很高的挑战性。最近的一些研究探索了不确定性,并产生了多个输出,以获得更稳健的结果。然而,边界地区的质量仍然令人不满意。不幸的是,专家之间的关键差异通常在于这些边界区域,这些边界区域在实际诊断中更为关键。为了解决上述问题,与以往的逐像素分割方法不同,我们提出了一个新的视角,并将任务表述为基于轮廓的回归问题,并进一步提出了一种新的轮廓感知多专家分割器ContourMS,该方法可以以粗到细的方式提供丰富边界细节的多样化分割结果。具体而言,在粗糙阶段,我们利用SegmentNet利用多个专家的知识来预测区域掩码,然后将掩码转换为所有专家共享的初始轮廓。在精细阶段,我们设计了一个LatentNet来学习专家级潜在空间,设计了一个ContourNet来细化每个专家轮廓,在专家风格引导下的变形可以逐渐调整轮廓以匹配不同的注释。大量的实验表明,该方法可以在多个公共的多专家医学分割数据集上生成不同的分割变量,并取得具有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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