Chen Ke-Wei, Wang Yu-Chen, Liu Meng-Hsuan, Tsai Being-Yuah, Wu Mei-Yao, Hsieh Po-Hsin, Wei Jung-Ting, Shih Edward S C, Shiao Yi-Tzone, Hwang Ming-Jing, Wu Ya-Lun, Hsu Kai-Cheng, Chang Kuan-Cheng
Division of Cardiovascular Medicine, Department of Medicine, China Medical University Hospital, Taichung, Taiwan.
Graduate Institute of Biomedical Sciences, China Medical University, Taichung, Taiwan.
Front Cardiovasc Med. 2022 Oct 14;9:1001982. doi: 10.3389/fcvm.2022.1001982. eCollection 2022.
To implement an all-day online artificial intelligence (AI)-assisted detection of ST-elevation myocardial infarction (STEMI) by prehospital 12-lead electrocardiograms (ECGs) to facilitate patient triage for timely reperfusion therapy.
The proposed AI model combines a convolutional neural network and long short-term memory (CNN-LSTM) to predict STEMI on prehospital 12-lead ECGs obtained from mini-12-lead ECG devices equipped in ambulance vehicles in Central Taiwan. Emergency medical technicians (EMTs) from the 14 AI-implemented fire stations performed the on-site 12-lead ECG examinations using the mini portable device. The 12-lead ECG signals were transmitted to the AI center of China Medical University Hospital to classify the recordings as "STEMI" or "Not STEMI". In 11 non-AI fire stations, the ECG data were transmitted to a secure network and read by available on-line emergency physicians. The response time was defined as the time interval between the ECG transmission and ECG interpretation feedback.
Between July 17, 2021, and March 26, 2022, the AI model classified 362 prehospital 12-lead ECGs obtained from 275 consecutive patients who had called the 119 dispatch centers of fire stations in Central Taiwan for symptoms of chest pain or shortness of breath. The AI's response time to the EMTs in ambulance vehicles was 37.2 ± 11.3 s, which was shorter than the online physicians' response time from 11 other fire stations with no AI implementation (113.2 ± 369.4 s, < 0.001) after analyzing another set of 335 prehospital 12-lead ECGs. The evaluation metrics including accuracy, precision, specificity, recall, area under the receiver operating characteristic curve, and F1 score to assess the overall AI performance in the remote detection of STEMI were 0.992, 0.889, 0.994, 0.941, 0.997, and 0.914, respectively. During the study period, the AI model promptly identified 10 STEMI patients who underwent primary percutaneous coronary intervention (PPCI) with a median contact-to-door time of 18.5 (IQR: 16-20.8) minutes.
Implementation of an all-day real-time AI-assisted remote detection of STEMI on prehospital 12-lead ECGs in the field is feasible with a high diagnostic accuracy rate. This approach may help minimize preventable delays in contact-to-treatment times for STEMI patients who require PPCI.
通过院前12导联心电图(ECG)实现全天在线人工智能(AI)辅助检测ST段抬高型心肌梗死(STEMI),以促进患者分流以便及时进行再灌注治疗。
所提出的AI模型结合了卷积神经网络和长短期记忆网络(CNN-LSTM),用于对从台湾中部救护车上配备的小型12导联ECG设备获取的院前12导联ECG进行STEMI预测。来自14个实施AI的消防站的急救医疗技术员(EMT)使用小型便携式设备进行现场12导联ECG检查。12导联ECG信号被传输到中国医科大学附设医院的AI中心,将记录分类为“STEMI”或“非STEMI”。在11个未实施AI的消防站,ECG数据被传输到安全网络并由在线值班急诊医生解读。响应时间定义为ECG传输与ECG解读反馈之间的时间间隔。
在2021年7月17日至2022年3月26日期间,AI模型对从275例连续拨打台湾中部消防站119调度中心胸痛或呼吸急促症状电话的患者获取的362份院前12导联ECG进行了分类。在分析另一组335份院前12导联ECG后,AI对救护车上EMT的响应时间为37.2±11.3秒,短于其他11个未实施AI的消防站在线医生的响应时间(113.2±369.4秒,P<0.001)。评估AI在STEMI远程检测中的总体性能的指标包括准确率、精确率、特异性、召回率、受试者操作特征曲线下面积和F1分数,分别为0.992、0.889、0.994、0.941、0.997和0.914。在研究期间,AI模型迅速识别出10例接受了直接经皮冠状动脉介入治疗(PPCI)的STEMI患者,中位接触至入院时间为18.5(四分位间距:16 - 20.8)分钟。
在现场对院前12导联ECG实施全天实时AI辅助远程检测STEMI是可行的,诊断准确率高。这种方法可能有助于最大限度减少需要PPCI的STEMI患者在接触至治疗时间方面可避免的延误。