Sun Runchen, Zhu Xiangqian, Lin Shen, Shi Mengnan, Yu Xuexin, Liu Chang, Yue Yaoguan, Zeng Juntong, Zhao Yan, Wang Xiaoqi, Lian Xiaocong, Jin Xin, Zheng Zhe, Ji Xiangyang
National Clinical Research Center of Cardiovascular Diseases, Fuwai Hospital, National Center for Cardiovascular Diseases, Beijing, People's Republic of China.
State Key Laboratory of Cardiovascular Disease, Fuwai Hospital, National Center for Cardiovascular Diseases, Beijing, People's Republic of China.
Int J Cardiol Heart Vasc. 2025 Aug 15;60:101772. doi: 10.1016/j.ijcha.2025.101772. eCollection 2025 Oct.
Current coronary artery disease (CAD) guidelines recommend to rule-out or rule-in patients for further examination by assessing a pretest probability (PTP) ≤ 5 % or ≥ 15 %. We developed and validated a deep-learning algorithm for rule-in or rule-out based on electrocardiogram (ECG) without myocardial ischemia evidence.
Between October 2019 and June 2022, data from two centers (Fuwai Hospital [Beijing] and Yunnan Fuwai Hospital) of CAD-suspected patients undergoing either coronary angiography or coronary computed tomography were used. Data from the Fuwai Hospital (Beijing) were used to train (randomly 90 %) and internally validate (randomly 10 %) a deep-learning algorithm to detect CAD (≥ 70 % stenosis) based on 12-lead ECGs. An algorithm-based decision-making protocol was established for rule-out or rule-in based on a predefined threshold allowing for a 95 % negative predictive value (NPV). Data from the Yunnan Fuwai Hospital were used to externally validate the performance of the decision-making protocol. The CAD prevalence was calculated in patients who were recommended to rule-in or rule-out.
In internal validation set, area under the receiver operating characteristic curve (AUC) was 0.81 and the CAD prevalence of patients who were recommended rule-out and rule-in were 5 % (40/790) and 23 % (527/2253), respectively. In external validation set, the CAD prevalence of patients who were recommended rule-out and rule-in were 0 % (0/661) and 15 % (255/1699), respectively.
Our algorithm based on ECG without myocardial ischemia evidence performed good in CAD detection. An algorithm-based decision-making protocol could achieve the guideline-recommended performance in guiding rule-out or rule-in for further examination.
当前冠状动脉疾病(CAD)指南建议,通过评估预检概率(PTP)≤5%或≥15%来排除或纳入患者进行进一步检查。我们开发并验证了一种基于心电图(ECG)且无心肌缺血证据的深度学习算法,用于排除或纳入诊断。
2019年10月至2022年6月期间,使用了来自两个中心(北京阜外医院和云南阜外医院)疑似CAD患者的数据,这些患者均接受了冠状动脉造影或冠状动脉计算机断层扫描。北京阜外医院的数据用于训练(随机抽取90%)和内部验证(随机抽取10%)一种基于12导联心电图检测CAD(≥70%狭窄)的深度学习算法。基于预定义阈值建立了一种基于算法的决策方案,以实现95%的阴性预测值(NPV)来进行排除或纳入诊断。云南阜外医院的数据用于外部验证该决策方案的性能。计算了被建议排除或纳入诊断的患者中的CAD患病率。
在内部验证集中,受试者操作特征曲线(AUC)下面积为0.81,被建议排除和纳入诊断的患者中CAD患病率分别为5%(40/790)和23%(527/2253)。在外部验证集中,被建议排除和纳入诊断的患者中CAD患病率分别为0%(0/661)和15%(255/1699)。
我们基于无心肌缺血证据的心电图算法在CAD检测中表现良好。基于算法的决策方案在指导排除或纳入进一步检查方面可达到指南推荐的性能。