An augmented reality-based method to assess precordial electrocardiogram leads: a feasibility trial.

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European heart journal. Digital health Pub Date : 2023-07-27 eCollection Date: 2023-10-01 DOI:10.1093/ehjdh/ztad046
Peter Daniel Serfözö, Robin Sandkühler, Bibiana Blümke, Emil Matthisson, Jana Meier, Jolein Odermatt, Patrick Badertscher, Christian Sticherling, Ivo Strebel, Philippe C Cattin, Jens Eckstein
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Abstract

Aims: It has been demonstrated that several cardiac pathologies, including myocardial ischaemia, can be detected using smartwatch electrocardiograms (ECGs). Correct placement of bipolar chest leads remains a major challenge in the outpatient population.

Methods and results: In this feasibility trial, we propose an augmented reality-based smartphone app that guides the user to place the smartwatch in predefined positions on the chest using the front camera of a smartphone. A machine-learning model using MobileNet_v2 as the backbone was trained to detect the bipolar lead positions V1-V6 and visually project them onto the user's chest. Following the smartwatch recordings, a conventional 10 s, 12-lead ECG was recorded for comparison purposes. All 50 patients participating in the study were able to conduct a 9-lead smartwatch ECG using the app and assistance from the study team. Twelve patients were able to record all the limb and chest leads using the app without additional support. Bipolar chest leads recorded with smartwatch ECGs were assigned to standard unipolar Wilson leads by blinded cardiologists based on visual characteristics. In every lead, at least 86% of the ECGs were assigned correctly, indicating the remarkable similarity of the smartwatch to standard ECG recordings.

Conclusion: We have introduced an augmented reality-based method to independently record multichannel smartwatch ECGs in an outpatient setting.

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一种基于增强现实的评估心前区心电图导联的方法:可行性试验。
目的:已经证明,可以使用智能手表心电图(ECG)检测包括心肌缺血在内的几种心脏病理。正确放置双极性胸部导线仍然是门诊人群面临的主要挑战。方法和结果:在这项可行性试验中,我们提出了一种基于增强现实的智能手机应用程序,该应用程序引导用户使用智能手机的前置摄像头将智能手表放置在胸部的预定义位置。使用MobileNet_v2作为骨干的机器学习模型被训练来检测双极导联位置V1-V6,并将其视觉投影到用户的胸部上。在智能手表记录之后,为了进行比较,记录了传统的10秒12导联心电图。所有50名参与研究的患者都能够使用该应用程序和研究团队的帮助进行9导联智能手表心电图。12名患者能够在没有额外支持的情况下使用该应用程序记录所有肢体和胸部导联。用智能手表心电图记录的双极性胸部导联由失明的心脏病专家根据视觉特征分配到标准单极Wilson导联。在每个导联中,至少86%的心电图被正确分配,这表明智能手表与标准心电图记录非常相似。结论:我们介绍了一种基于增强现实的方法,可以在门诊环境中独立记录多通道智能手表心电图。
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