Eschen Christian Kim, Banasik Karina, Dahl Anders Bjorholm, Chmura Piotr Jaroslaw, Bruun-Rasmussen Peter, Pedersen Frants, Køber Lars, Engstrøm Thomas, Bøttcher Morten, Winther Simon, Christensen Alex Hørby, Bundgaard Henning, Brunak Søren
Novo Nordisk Foundation Center for Protein Research, Faculty of Health and Medical Sciences, University of Copenhagen, Copenhagen, Denmark.
Section for Visual Computing, Department of Applied Mathematics and Computer Science, Technical University of Denmark, Lyngby, Denmark.
Int J Cardiovasc Imaging. 2025 Mar;41(3):441-452. doi: 10.1007/s10554-025-03324-x. Epub 2025 Jan 9.
The initial evaluation of stenosis during coronary angiography is typically performed by visual assessment. Visual assessment has limited accuracy compared to fractional flow reserve and quantitative coronary angiography, which are more time-consuming and costly. Applying deep learning might yield a faster and more accurate stenosis assessment. We developed a deep learning model to classify cine loops into left or right coronary artery (LCA/RCA) or "other". Data were obtained by manual annotation. Using these classifications, cine loops before revascularization were identified and curated automatically. Separate deep learning models for LCA and RCA were developed to estimate stenosis using these identified cine loops. From a cohort of 19,414 patients and 332,582 cine loops, we identified cine loops for 13,480 patients for model development and 5056 for internal testing. External testing was conducted using automated identified cine loops from 608 patients. For identification of significant stenosis (visual assessment of diameter stenosis > 70%), our model obtained a receiver operator characteristic (ROC) area under the curve (ROC-AUC) of 0.903 (95% CI: 0.900-0.906) on the internal test. The performance was evaluated on the external test set against visual assessment, 3D quantitative coronary angiography, and fractional flow reserve (≤ 0.80), obtaining ROC AUC values of 0.833 (95% CI: 0.814-0.852), 0.798 (95% CI: 0.741-0.842), and 0.780 (95% CI: 0.743-0.817), respectively. The deep-learning-based stenosis estimation models showed promising results for predicting stenosis. Compared to previous work, our approach demonstrates performance increase, includes all 16 segments, does not exclude revascularized patients, is externally tested, and is simpler using fewer steps.
冠状动脉造影术中对狭窄的初步评估通常通过视觉评估进行。与血流储备分数和定量冠状动脉造影相比,视觉评估的准确性有限,而后两者耗时更长且成本更高。应用深度学习可能会实现更快、更准确的狭窄评估。我们开发了一种深度学习模型,将电影环分类为左冠状动脉或右冠状动脉(LCA/RCA)或“其他”。数据通过人工标注获得。利用这些分类,自动识别和整理血运重建术前的电影环。分别针对LCA和RCA开发了深度学习模型,以使用这些识别出的电影环来估计狭窄程度。在19414例患者和332582个电影环的队列中,我们为13480例患者识别出电影环用于模型开发,5056个用于内部测试。外部测试使用了来自608例患者的自动识别电影环。对于显著狭窄的识别(直径狭窄的视觉评估>70%),我们的模型在内部测试中获得的受试者操作特征曲线下面积(ROC-AUC)为0.903(95%CI:0.900-0.906)。在外部测试集上,针对视觉评估、三维定量冠状动脉造影和血流储备分数(≤0.80)对性能进行了评估,获得的ROC AUC值分别为0.833(95%CI:0.814-0.852)、0.798(95%CI:0.741-0.842)和0.780(95%CI:0.743-0.817)。基于深度学习的狭窄估计模型在预测狭窄方面显示出有前景的结果。与之前的工作相比,我们的方法表现出性能提升,涵盖所有16个节段,不排除血运重建患者,经过外部测试,且步骤更少更简单。