有创冠状动脉造影的半监督冠状血管分割与连接保持功能

Haorui He, Abhirup Banerjee, M. Beetz, R. Choudhury, V. Grau
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引用次数: 1

摘要

在有创冠状动脉造影中对动脉进行分割是建立定量模型和提高心血管疾病诊断的必要条件。标准分割算法由于缺乏完全注释的数据集而受到影响,并且倾向于返回断开的血管。因此,我们探索一种半监督分割框架来解决这些问题。具体来说,我们使用学生模型和教师模型作为主要框架,并使用嵌套U-Nets (UNet++)作为其骨干。学生模型通过最小化输出和基本事实之间的分割损失以及由不确定性信息引导的一致性损失来学习。此外,还采用了一种基于弹性相互作用的特殊损失函数来提高动脉分支的连通性。我们在42个标记和60个未标记的样本上证明了我们提出的技术的有效性,并发现与U-Net相比,Dice得分和Betti数的相对提高了5.59%和69.99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Supervised Coronary Vessels Segmentation from Invasive Coronary Angiography with Connectivity-Preserving Loss Function
The segmentation of arteries in invasive coronary angiography is necessary to build quantitative models and eventually improve the diagnosis of cardiovascular diseases. Standard segmentation algorithms suffer due to the lack of fully annotated datasets and tend to return disconnected vessels. Thus, we explore a semi-supervised segmentation framework to address these issues. Specifically, we use a student model and a teacher model as the main framework with Nested U-Nets (UNet++) as their backbones. The student model learns by minimizing a segmentation loss between the output and the ground truth, and a consistency loss guided by the uncertainty information. Additionally, a special loss function based on elastic interaction is used to improve the connectivity of arterial branches. We demonstrate the effectiveness of our proposed techniques over 42 labeled and 60 unlabeled samples and find relative improvement of 5.59% for Dice score and 69.99% for Betti number compared to a U-Net.
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