A U-Shaped Network Based on Multi-level Feature and Dual-Attention Coordination Mechanism for Coronary Artery Segmentation of CCTA Images.

IF 1.6 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS Cardiovascular Engineering and Technology Pub Date : 2023-06-01 DOI:10.1007/s13239-023-00659-1
Peng Hong, Yong Du, Dongming Chen, Chengbao Peng, Benqiang Yang, Lisheng Xu
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Abstract

Purpose: Computed tomography coronary angiography (CCTA) images provide optimal visualization of coronary arteries to aid in diagnosing coronary heart disease (CHD). With the deep convolutional neural network, this work aims to develop an intelligent and lightweight coronary artery segmentation algorithm that can be deployed in hospital systems to assist clinicians in quantitatively analyzing CHD.

Methods: With the multi-level feature fusion, we proposed Dual-Attention Coordination U-Net (DAC-UNet) that achieves automated coronary artery segmentation in 2D CCTA images. The coronary artery occupies a small region, and the foreground and background are extremely unbalanced. For this reason, the more original information can be retained by fusing related features between adjacent layers, which is conducive to recovering the small coronary artery area. The dual-attention coordination mechanism can select valid information and filter redundant information. Moreover, the complementation and coordination of double attention factors can enhance the integrity of features of coronary arteries, reduce the interference of non-coronary arteries, and prevent over-learning. With gradual learning, the balanced character of double attention factors promotes the generalization ability of the model to enhance coronary artery localization and contour detail segmentation.

Results: Compared with existing related segmentation methods, our method achieves a certain degree of improvement in 2D CCTA images for the segmentation accuracy of coronary arteries with a mean Dice index of 0.7920. Furthermore, the method can obtain relatively accurate results even in a small sample dataset and is easy to implement and deploy, which is promising. The code is available at: https://github.com/windfly666/Segmentation .

Conclusion: Our method can capture the coronary artery structure end-to-end, which can be used as a fundamental means for automatic detection of coronary artery stenosis, blood flow reserve fraction analysis, and assisting clinicians in diagnosing CHD.

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基于多层次特征和双注意协调机制的u型网络CCTA图像冠状动脉分割
目的:计算机断层冠状动脉造影(CCTA)图像提供最佳的冠状动脉可视化,帮助诊断冠心病(CHD)。利用深度卷积神经网络,本研究旨在开发一种智能且轻量级的冠状动脉分割算法,该算法可部署在医院系统中,以帮助临床医生定量分析冠心病。方法:通过多层次特征融合,提出双注意协调U-Net (Dual-Attention Coordination U-Net, DAC-UNet)算法,实现二维CCTA图像的冠状动脉自动分割。冠状动脉占据很小的区域,前景和背景极不平衡。因此,通过融合相邻层之间的相关特征,可以保留更多的原始信息,有利于恢复冠状动脉小区域。双注意协调机制可以选择有效信息和过滤冗余信息。此外,双注意因素的互补和协调可以增强冠状动脉特征的完整性,减少非冠状动脉的干扰,防止过度学习。随着学习的逐步深入,双注意因子的均衡性提升了模型的泛化能力,增强了冠状动脉定位和轮廓细节分割的能力。结果:与现有的相关分割方法相比,我们的方法在二维CCTA图像上对冠状动脉的分割精度有一定的提高,平均Dice指数为0.7920。此外,该方法即使在小样本数据集上也能获得相对准确的结果,并且易于实现和部署,具有很好的应用前景。结论:该方法可以端到端捕获冠状动脉结构,可作为冠状动脉狭窄自动检测、血流储备分数分析、辅助临床医生诊断冠心病的基本手段。
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来源期刊
Cardiovascular Engineering and Technology
Cardiovascular Engineering and Technology Engineering-Biomedical Engineering
CiteScore
4.00
自引率
0.00%
发文量
51
期刊介绍: Cardiovascular Engineering and Technology is a journal publishing the spectrum of basic to translational research in all aspects of cardiovascular physiology and medical treatment. It is the forum for academic and industrial investigators to disseminate research that utilizes engineering principles and methods to advance fundamental knowledge and technological solutions related to the cardiovascular system. Manuscripts spanning from subcellular to systems level topics are invited, including but not limited to implantable medical devices, hemodynamics and tissue biomechanics, functional imaging, surgical devices, electrophysiology, tissue engineering and regenerative medicine, diagnostic instruments, transport and delivery of biologics, and sensors. In addition to manuscripts describing the original publication of research, manuscripts reviewing developments in these topics or their state-of-art are also invited.
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