Smartwatch ECG and artificial intelligence in detecting acute coronary syndrome compared to traditional 12-lead ECG

IF 2.5 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS IJC Heart and Vasculature Pub Date : 2024-12-01 DOI:10.1016/j.ijcha.2024.101573
Jina Choi , Joonghee Kim , Carmen Spaccarotella , Giovanni Esposito , Il-Young Oh , Youngjin Cho , Ciro Indolfi
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Abstract

Background

Acute coronary syndromes (ACS) require prompt diagnosis through initial electrocardiograms (ECG), but ECG machines are not always accessible. Meanwhile, smartwatches offering ECG functionality have become widespread. This study evaluates the feasibility of an image-based ECG analysis artificial intelligence (AI) system with smartwatch-based multichannel, asynchronous ECG for diagnosing ACS.

Methods

Fifty-six patients with ACS and 15 healthy participants were included, and their standard 12-lead and smartwatch-based 9-lead ECGs were analyzed. The ACS group was categorized into ACS with acute total occlusion (ACS-O(+), culprit stenosis ≥ 99 %, n = 44) and ACS without occlusion (ACS-O(−), culprit stenosis 70 % to < 99 %, n = 12) based on coronary angiography. A deep learning-based AI-ECG tool interpreting 2-dimensional ECG images generated probability scores for ST-elevation myocardial infarction (qSTEMI), ACS (qACS), and myocardial injury (qMI: troponin I > 0.1 ng/mL).

Results

The AI-driven qSTEMI, qACS, and qMI demonstrated correlation coefficients of 0.882, 0.874, and 0.872 between standard and smartwatch ECGs (all P < 0.001). The qACS score effectively distinguished ACS-O(±) from control, with AUROC for both ECGs (0.991 for standard and 0.987 for smartwatch, P = 0.745). The AUROC of qSTEMI in identifying ACS-O(+) from control was 0.989 and 0.982 with 12-lead and smartwatch (P = 0.617). Discriminating ACS-O(+) from ACS-O(−) or control presented a slight challenge, with an AUROC for qSTEMI of 0.855 for 12-lead and 0.880 for smartwatch ECGs (P = 0.352).

Conclusion

AI-ECG scores from standard and smartwatch-based ECGs showed high concordance with comparable diagnostic performance in differentiating ACS-O(+) and ACS-O(−). With increasing accessibility smartwatch accessibility, they may hold promise for aiding ACS diagnosis, regardless of location.
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与传统12导联心电图相比,智能手表心电图和人工智能在检测急性冠状动脉综合征中的应用
背景:急性冠状动脉综合征(ACS)需要通过初始心电图(ECG)及时诊断,但心电图机并不总是可用的。与此同时,具有ECG功能的智能手表已经普及。本研究评估了基于图像的心电分析人工智能(AI)系统与基于智能手表的多通道异步心电诊断ACS的可行性。方法对56例ACS患者和15例健康对照者的标准12导联心电图和基于智能手表的9导联心电图进行分析。ACS组分为急性全闭塞ACS (ACS- o(+),罪魁祸首狭窄≥99%,n = 44)和无闭塞ACS (ACS- o(-),罪魁祸首狭窄70% ~ <;99%, n = 12)基于冠状动脉造影。基于深度学习的AI-ECG工具解释二维ECG图像,生成st段抬高型心肌梗死(qSTEMI)、ACS (qACS)和心肌损伤(qMI:肌钙蛋白I >;0.1 ng / mL)。结果人工智能驱动的qSTEMI、qACS和qMI与标准心电图和智能手表心电图的相关系数分别为0.882、0.874和0.872 (P <;0.001)。qACS评分有效区分ACS-O(±)与对照组,两组心电图的AUROC(标准组0.991,智能手表组0.987,P = 0.745)。qSTEMI鉴别ACS-O(+)的AUROC分别为0.989和0.982 (P = 0.617)。区分ACS-O(+)与ACS-O(-)或对照组比较困难,12导联的qSTEMI AUROC为0.855,智能手表心电图的AUROC为0.880 (P = 0.352)。结论ai - ecg评分与基于智能手表的ecg评分在鉴别ACS-O(+)和ACS-O(-)方面具有高度一致性。随着智能手表的可访问性越来越高,它们可能有望帮助ACS诊断,无论位置如何。
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来源期刊
IJC Heart and Vasculature
IJC Heart and Vasculature Medicine-Cardiology and Cardiovascular Medicine
CiteScore
4.90
自引率
10.30%
发文量
216
审稿时长
56 days
期刊介绍: IJC Heart & Vasculature is an online-only, open-access journal dedicated to publishing original articles and reviews (also Editorials and Letters to the Editor) which report on structural and functional cardiovascular pathology, with an emphasis on imaging and disease pathophysiology. Articles must be authentic, educational, clinically relevant, and original in their content and scientific approach. IJC Heart & Vasculature requires the highest standards of scientific integrity in order to promote reliable, reproducible and verifiable research findings. All authors are advised to consult the Principles of Ethical Publishing in the International Journal of Cardiology before submitting a manuscript. Submission of a manuscript to this journal gives the publisher the right to publish that paper if it is accepted. Manuscripts may be edited to improve clarity and expression.
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