Liang Hongqin, Wen Feng, Kong Li, Li Yue, Jing Feihua, Sun Zhiguo, Zhang Jucai, Zhang Haipeng, Meng Shan, Wang Jian
Department of Radiology, 7T Magnetic Resonance Imaging Translational Medical Center, Department of Radiology, Southwest Hospital, Army Medical University (Third Military Medical University), Chongqing, China.
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Med Phys. 2025 Jul;52(7):e17803. doi: 10.1002/mp.17803. Epub 2025 Apr 1.
Coronary artery fractional flow reserve derived from coronary computed tomography angiography (CTA) is increasingly favored due to its non-invasive nature.
We aim to validate the ability of a novel on-site analysis model for computed tomography derived fractional flow reserve (CT FFR) using deep learning and level set algorithms to identify lesion-specific ischemic coronary artery disease (CAD).
A retrospective analysis was conducted on 198 vessels from 171 patients from four medical centers who underwent CTA and invasive fractional flow reserve (FFR) examinations. Using invasive FFR and invasive coronary angiography (ICA) as reference standards, a new model based on deep learning and level set algorithm, as well as an artificial intelligence (AI) platform based on deep learning, were used to compare CT FFR values and stenosis rates.
Compared with the ai platform, the new model has a single-vessel accuracy of 85.9% [95% confidence interval (95% CI) 80-90), higher than the AI platform's 66.7% (95% CI: 59.6-73.1). The sensitivity is 82.8% (95% CI: 72.8-89.7), specificity is 88.3% (95% CI: 80.5-93.4), and the area under the curve (AUC) is 0.9 (95% CI: 0.85-0.94). The stenosis rate measured by model was much higher than ICA (r = 0.84, p < 0.0001). Using the standard FFR threshold of 0.8, the new model accurately identified 24 vessels with FFR values between 0.75 and 0.8. The AI platform exhibits significant differences in accuracy within different stenosis ranges (p = 0.022).
The novel CT FFR algorithm based on a combination of deep learning and level set algorithms to optimize coronary artery 3D reconstruction may have a potential value in fully automatic on-site analysis of specific coronary ischemia.
基于冠状动脉计算机断层扫描血管造影(CTA)的冠状动脉血流储备分数因其非侵入性而越来越受到青睐。
我们旨在验证一种使用深度学习和水平集算法的新型计算机断层扫描衍生血流储备分数(CT FFR)现场分析模型识别病变特异性缺血性冠状动脉疾病(CAD)的能力。
对来自四个医疗中心的171例患者的198条血管进行回顾性分析,这些患者均接受了CTA和有创血流储备分数(FFR)检查。以有创FFR和有创冠状动脉造影(ICA)作为参考标准,使用基于深度学习和水平集算法的新模型以及基于深度学习的人工智能(AI)平台来比较CT FFR值和狭窄率。
与AI平台相比,新模型的单支血管准确率为85.9%[95%置信区间(95%CI)80 - 90],高于AI平台的66.7%(95%CI:59.6 - 73.1)。敏感性为82.8%(95%CI:72.8 - 89.7),特异性为88.3%(95%CI:80.5 - 93.4),曲线下面积(AUC)为0.9(95%CI:0.85 - 0.94)。模型测量的狭窄率远高于ICA(r = 0.84,p < 0.0001)。使用标准FFR阈值0.8,新模型准确识别出24条FFR值在0.75至0.8之间的血管。AI平台在不同狭窄范围内的准确率存在显著差异(p = 0.022)。
基于深度学习和水平集算法相结合以优化冠状动脉三维重建的新型CT FFR算法在特定冠状动脉缺血的全自动现场分析中可能具有潜在价值