Semantic labeling of coronary arterial segments in invasive coronary angiography (ICA) is important for automated assessment and report generation of coronary artery stenosis in the computer-aided diagnosis of coronary artery disease (CAD). Inspired by the training procedure of interventional cardiologists for interpreting the structure of coronary arteries, we propose an association graph-based graph matching network (AGMN) for coronary arterial semantic labeling. We first extract the vascular tree from invasive coronary angiography (ICA) and convert it into multiple individual graphs. Then, an association graph is constructed from two individual graphs where each vertex represents the relationship between two arterial segments. Using the association graph, the AGMN extracts the vertex features by the embedding module, aggregates the features from adjacent vertices and edges by graph convolution network, and decodes the features to generate the semantic mappings between arteries. By learning the mapping of arterial branches between two individual graphs, the unlabeled arterial segments are classified by the labeled segments to achieve semantic labeling. A dataset containing 263 ICAs was employed to train and validate the proposed model, and a five-fold cross-validation scheme was performed. Our AGMN model achieved an average accuracy of 0.8264, an average precision of 0.8276, an average recall of 0.8264, and an average F1-score of 0.8262, which significantly outperformed existing coronary artery semantic labeling methods. In conclusion, we have developed and validated a new algorithm with high accuracy, interpretability, and robustness for coronary artery semantic labeling on ICAs.
翻译:在对冠动脉疾病进行计算机辅助诊断(CAD)的过程中,对侵入性冠动脉动脉(ICA)中的冠状动脉部分进行静脉标记,对于自动评估和报告冠动脉动脉动脉动脉动脉动脉动脉动脉动的生成十分重要。在干预性心动科医生为解释冠动脉动脉动动脉动结构结构而开展的培训程序的启发下,我们提议为冠动动动脉动脉动动脉动动脉动动脉动的标签,我们首先从入侵性冠动脉动动动脉动动动脉动动脉动树(ICA)中提取并转换成多个单个图形。随后,从两个单个图中构建了一个组合图,其中每个头动脉动动动脉动动动动动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉动脉