Hampe Nils, van Velzen Sanne G M, Wolterink Jelmer M, Collet Carlos, Henriques José P S, Planken Nils, Išgum Ivana
Amsterdam University Medical Center location University of Amsterdam, Department of Biomedical Engineering and Physics, Amsterdam, The Netherlands.
Amsterdam Cardiovascular Sciences, Amsterdam, The Netherlands.
J Med Imaging (Bellingham). 2024 May;11(3):034001. doi: 10.1117/1.JMI.11.3.034001. Epub 2024 May 15.
Automatic comprehensive reporting of coronary artery disease (CAD) requires anatomical localization of the coronary artery pathologies. To address this, we propose a fully automatic method for extraction and anatomical labeling of the coronary artery tree using deep learning.
We include coronary CT angiography (CCTA) scans of 104 patients from two hospitals. Reference annotations of coronary artery tree centerlines and labels of coronary artery segments were assigned to 10 segment classes following the American Heart Association guidelines. Our automatic method first extracts the coronary artery tree from CCTA, automatically placing a large number of seed points and simultaneous tracking of vessel-like structures from these points. Thereafter, the extracted tree is refined to retain coronary arteries only, which are subsequently labeled with a multi-resolution ensemble of graph convolutional neural networks that combine geometrical and image intensity information from adjacent segments.
The method is evaluated on its ability to extract the coronary tree and to label its segments, by comparing the automatically derived and the reference labels. A separate assessment of tree extraction yielded an score of 0.85. Evaluation of our combined method leads to an average score of 0.74.
The results demonstrate that our method enables fully automatic extraction and anatomical labeling of coronary artery trees from CCTA scans. Therefore, it has the potential to facilitate detailed automatic reporting of CAD.
冠状动脉疾病(CAD)的自动综合报告需要对冠状动脉病变进行解剖定位。为解决这一问题,我们提出一种使用深度学习对冠状动脉树进行提取和解剖标记的全自动方法。
我们纳入了来自两家医院的104例患者的冠状动脉CT血管造影(CCTA)扫描图像。根据美国心脏协会指南,将冠状动脉树中心线的参考注释和冠状动脉节段的标签分为10个节段类别。我们的自动方法首先从CCTA中提取冠状动脉树,自动放置大量种子点并从这些点开始同时追踪血管样结构。此后,对提取的树进行细化以仅保留冠状动脉,随后使用结合相邻节段几何和图像强度信息的图卷积神经网络的多分辨率集成对其进行标记。
通过比较自动得出的标签和参考标签,对该方法提取冠状动脉树及其节段标记的能力进行评估。对树提取的单独评估得出的Dice分数为0.85。对我们的组合方法的评估得出平均Dice分数为0.74。
结果表明,我们的方法能够从CCTA扫描中全自动提取冠状动脉树并进行解剖标记。因此,它有潜力促进CAD的详细自动报告。