SS-CADA: A Semi-Supervised Cross-Anatomy Domain Adaptation for Coronary Artery Segmentation

Jingyang Zhang, Ran Gu, Guotai Wang, Hongzhi Xie, Lixu Gu
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引用次数: 5

Abstract

The segmentation of coronary arteries by convolutional neural network is promising yet requires a large amount of labor-intensive manual annotations. Transferring knowledge from retinal vessels in widely-available public labeled fundus images (FIs) has a potential to reduce the annotation requirement for coronary artery segmentation in X-ray angiograms (XAs) due to their common tubular structures. However, it is challenged by the cross-anatomy domain shift due to the intrinsically different vesselness characteristics in different anatomical regions under even different imaging protocols. To solve this problem, we propose a Semi-Supervised Cross-Anatomy Domain Adaptation (SS-CADA) which requires only limited annotations for coronary arteries in $\text{X}\text{A}\text{s}$. With the supervision from a small number of labeled XAs and publicly available labeled $\text{F}\text{I}\text{s}$, we propose a vesselness-specific batch normalization (VSBN) to individually normalize feature maps for them considering their different cross-anatomic vesselness characteristics. In addition, to further facilitate the annotation efficiency, we employ a self-ensembling mean-teacher (SE-MT) to exploit abundant unlabeled XAs by imposing a prediction consistency constraint. Extensive experiments show that our SS-CADA is able to solve the challenging cross-anatomy domain shift, achieving accurate segmentation for coronary arteries given only a small number of labeled $\text{X}\text{A}\text{s}$.
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SS-CADA:冠状动脉分割的半监督跨解剖域适应
卷积神经网络分割冠状动脉是一种很有前途的方法,但需要大量的人工标注。从广泛可用的公共标记眼底图像(fi)中转移视网膜血管的知识有可能减少x射线血管图(XAs)中冠状动脉分割的注释要求,因为它们具有共同的管状结构。然而,由于在不同的成像方案下,不同解剖区域的血管特性本质上是不同的,因此它受到了跨解剖域移位的挑战。为了解决这个问题,我们提出了一种半监督跨解剖域自适应(SS-CADA)方法,它只需要在$\text{X}\text{a}\text{s}$中对冠状动脉进行有限的注释。在少量标记的xa和公开可用的标记$\text{F}\text{I}\text{s}$的监督下,考虑到它们不同的跨解剖血管性特征,我们提出了一种针对血管性的批处理归一化(VSBN),为它们单独归一化特征映射。此外,为了进一步提高标注效率,我们通过施加预测一致性约束,采用自集成平均教师(SE-MT)来利用大量未标记的xa。大量实验表明,我们的SS-CADA能够解决具有挑战性的跨解剖域转移问题,仅在少量标记为$\text{X}\text{a}\text{s}$的情况下实现对冠状动脉的准确分割。
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