Yeh Chi-Hsiao, Tsai Tsung-Hsien, Chen Chun-Hung, Chou Yi-Ju, Mao Chun-Tai, Su Tzu-Pei, Yang Ning-I, Lai Chi-Chun, Chen Chien-Tzung, Sytwu Huey-Kang, Tsai Ting-Fen
Department of Thoracic and Cardiovascular Surgery, Chang Gung Memorial Hospital, Linkou, Taoyuan 333, Taiwan.
Community Medicine Research Center, Chang Gung Memorial Hospital, Keelung 204, Taiwan.
Comput Struct Biotechnol J. 2024 Dec 27;27:278-286. doi: 10.1016/j.csbj.2024.12.032. eCollection 2025.
An AI-assisted algorithm has been developed to improve the detection of significant coronary artery disease (CAD) in high-risk individuals who have normal electrocardiograms (ECGs). This retrospective study analyzed ECGs from patients aged ≥ 18 years who were undergoing coronary angiography to obtain a clinical diagnosis at Chang Gung Memorial Hospital in Taiwan. Utilizing 12-lead ECG datasets, the algorithm integrated features like time intervals, amplitudes, and slope between peaks, a total of 561 features, with the XGBoost model yielding the best performance. The AI-enhanced ECG algorithm demonstrated high sensitivity (0.82-0.84) when detecting CAD in patients with normal ECGs and gave remarkably high prediction rates among those with abnormal ECGs, both with and without ischemia (92 %-95 % and 80 %-83 %, respectively). Notably, the algorithm's top features, mostly related to slope and amplitude differences, are challenging for clinicians to discern manually. Additionally, the study highlights significant sex differences regarding feature prediction and ranking. Comparatively, the AI-enhanced ECG's detection capability matched that of myocardial perfusion scintigraphy, which is a costly nuclear medicine test, and offers a more accessible alternative for identifying significant CAD, especially among patients with atypical ECG readings.
已开发出一种人工智能辅助算法,以改善对心电图(ECG)正常的高危个体中显著冠状动脉疾病(CAD)的检测。这项回顾性研究分析了台湾长庚纪念医院年龄≥18岁且正在接受冠状动脉造影以获得临床诊断的患者的心电图。该算法利用12导联心电图数据集,整合了诸如时间间隔、振幅以及峰值之间的斜率等特征,总共561个特征,其中XGBoost模型表现最佳。人工智能增强的心电图算法在检测心电图正常的患者中的CAD时显示出高灵敏度(0.82 - 0.84),并且在心电图异常的患者中,无论有无缺血,都给出了极高的预测率(分别为92% - 95%和80% - 83%)。值得注意的是,该算法的主要特征大多与斜率和振幅差异有关,临床医生手动辨别具有挑战性。此外,该研究突出了在特征预测和排序方面显著的性别差异。相比之下,人工智能增强的心电图的检测能力与心肌灌注闪烁扫描相当,后者是一种昂贵的核医学检查,并且为识别显著CAD提供了一种更易获得的替代方法,尤其是在心电图读数不典型的患者中。