Title
Direct Quantification of Coronary Artery Stenosis Through Hierarchical Attentive Multi-View Learning
Abstract
Quantification of coronary artery stenosis on X-ray angiography (XRA) images is of great importance during the intraoperative treatment of coronary artery disease. It serves to quantify the coronary artery stenosis by estimating the clinical morphological indices, which are essential in clinical decision making. However, stenosis quantification is still a challenging task due to the overlapping, diversity and small-size region of the stenosis in the XRA images. While efforts have been devoted to stenosis quantification through low-level features, these methods have difficulty in learning the real mapping from these features to the stenosis indices. These methods are still cumbersome and unreliable for the intraoperative procedures due to their two-phase quantification, which depends on the results of segmentation or reconstruction of the coronary artery. In this work, we are proposing a hierarchical attentive multi-view learning model (HEAL) to achieve a direct quantification of coronary artery stenosis, without the intermediate segmentation or reconstruction. We have designed a multi-view learning model to learn more complementary information of the stenosis from different views. For this purpose, an intra-view hierarchical attentive block is proposed to learn the discriminative information of stenosis. Additionally, a stenosis representation learning module is developed to extract the multi-scale features from the keyframe perspective for considering the clinical workflow. Finally, the morphological indices are directly estimated based on the multi-view feature embedding. Extensive experiment studies on clinical multi-manufacturer dataset consisting of 228 subjects show the superiority of our HEAL against nine comparing methods, including direct quantification methods and multi-view learning methods. The experimental results demonstrate the better clinical agreement between the ground truth and the prediction, which endows our proposed method with a great potential for the efficient intraoperative treatment of coronary artery disease.
Year
DOI
Venue
2020
10.1109/TMI.2020.3017275
IEEE Transactions on Medical Imaging
Keywords
DocType
Volume
Coronary Artery Disease,Coronary Stenosis,Deep Learning,Humans
Journal
39
Issue
ISSN
Citations 
12
0278-0062
0
PageRank 
References 
Authors
0.34
0
6
Name
Order
Citations
PageRank
Dong Zhang112517.08
Guang Yang2747.91
Shu Zhao39321.21
Yangping Zhang400.34
Dhanjoo Ghista500.34
Shuo Li610927.59