人工智能
分割
计算机科学
模态(人机交互)
特征(语言学)
图像分割
基本事实
模式识别(心理学)
特征学习
代表(政治)
医学影像学
计算机视觉
模式
政治
语言学
政治学
社会科学
法学
社会学
哲学
作者
Xu Chen,Chunfeng Lian,Li Wang,Han Deng,Tianshu Kuang,Steve H. Fung,Jaime Gateño,Pew‐Thian Yap,James J. Xia,Dinggang Shen
标识
DOI:10.1109/tmi.2020.3025133
摘要
An increasing number of studies are leveraging unsupervised cross-modality synthesis to mitigate the limited label problem in training medical image segmentation models. They typically transfer ground truth annotations from a label-rich imaging modality to a label-lacking imaging modality, under an assumption that different modalities share the same anatomical structure information. However, since these methods commonly use voxel/pixel-wise cycle-consistency to regularize the mappings between modalities, high-level semantic information is not necessarily preserved. In this paper, we propose a novel anatomy-regularized representation learning approach for segmentation-oriented cross-modality image synthesis. It learns a common feature encoding across different modalities to form a shared latent space, where 1) the input and its synthesis present consistent anatomical structure information, and 2) the transformation between two images in one domain is preserved by their syntheses in another domain. We applied our method to the tasks of cross-modality skull segmentation and cardiac substructure segmentation. Experimental results demonstrate the superiority of our method in comparison with state-of-the-art cross-modality medical image segmentation methods.
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