医学
狼牙棒
放射科
计算机断层摄影术
无线电技术
灌注
多中心研究
心肌灌注成像
灌注扫描
核医学
心脏病学
多探测器计算机断层扫描
医学影像学
磁共振成像
计算机断层血管造影
计算机断层血管造影
内科学
心肌梗塞
作者
Zhiqi Zhong,Dong Li,Shengliang Liu,Runjianya Ling,Ping Chen,Weifang Kong,Mengmeng Zhu,Yilin Tian,Fan Yang,guokun wang,Yarong Yu,Yanming Zhao,Baoying Chen,Zhang Zhang,Yuehua Li,Lili Guo,Yi Xu,Jiayin Zhang
标识
DOI:10.1093/ehjci/jeag044
摘要
AIMS: Accurate prediction of major adverse cardiovascular events (MACE) is crucial for risk stratification in patients with suspected coronary artery disease. CT myocardial perfusion imaging (CT-MPI) provides various parameters, which may help comprehensively characterize perfusion features. This study aimed to develop a combined model, including clinical risk factors, coronary atherosclerotic characteristics, and radiomic features derived from CT-MPI, to predict MACE. METHODS AND RESULTS: 784 patients who underwent coronary CT angiography (CCTA) and CT-MPI from eight hospitals were retrospectively enrolled. Radiomic analysis was performed on eight perfusion parameter maps. Three prediction models were established accordingly: Model 1 (clinical risk factors and coronary atherosclerotic characteristics), Model 2 (incorporating myocardial blood flow values upon Model 1), and Model 3 (integrating radiomic scores upon Model 2). The C-indices for Model 3 in the training, internal validation, and external validation sets were 0.898 (95% confidence interval [CI]: 0.856-0.947), 0.844 (95% CI: 0.780-0.908), and 0.840 (95% CI: 0.791-0.889), respectively, demonstrating significant improvements over Model 1 and Model 2 (all P < 0.05). In the external validation set, Model 3 had the largest time-dependent areas under the curve (AUC) values for 1-, 3-, and 5-year MACE prediction (0.890 [95% CI: 0.831-0.948], 0.880 [95% CI: 0.823-0.938], and 0.837 [95% CI: 0.726-0.949]), compared with Model 1 and Model 2. CONCLUSION: The radiomic features from multiparametric CT-MPI maps simultaneously captured perfusion features associated with MACE at both macrovascular and microvascular levels. The combined model exhibited improved MACE prognostic performance compared with conventional models while maintaining high interpretability.
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