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使用 Kardia Mobile 应用程序和 Apple Watch 4 的单导联心电图诊断准确性:验证研究。

Diagnostic Accuracy of Single-Lead Electrocardiograms Using the Kardia Mobile App and the Apple Watch 4: Validation Study.

作者信息

Klier Kristina, Koch Lucas, Graf Lisa, Schinköthe Timo, Schmidt Annette

机构信息

Institute of Sport Science, University of the Bundeswehr Munich, Neubiberg, Germany.

CANKADO GmbH, Ottobrunn, Germany.

出版信息

JMIR Cardio. 2023 Nov 23;7:e50701. doi: 10.2196/50701.

Abstract

BACKGROUND

To date, the 12-lead electrocardiogram (ECG) is the gold standard for cardiological diagnosis in clinical settings. With the advancements in technology, a growing number of smartphone apps and gadgets for recording, visualizing, and evaluating physical performance as well as health data is available. Although this new smart technology is innovative and time- and cost-efficient, less is known about its diagnostic accuracy and reliability.

OBJECTIVE

This study aimed to examine the agreement between the mobile single-lead ECG measurements of the Kardia Mobile App and the Apple Watch 4 compared to the 12-lead gold standard ECG in healthy adults under laboratory conditions. Furthermore, it assessed whether the measurement error of the devices increases with an increasing heart rate.

METHODS

This study was designed as a prospective quasi-experimental 1-sample measurement, in which no randomization of the sampling was carried out. In total, ECGs at rest from 81 participants (average age 24.89, SD 8.58 years; n=58, 72% male) were recorded and statistically analyzed. Bland-Altman plots were created to graphically illustrate measurement differences. To analyze the agreement between the single-lead ECGs and the 12-lead ECG, Pearson correlation coefficient (r) and Lin concordance correlation coefficient (CCC) were calculated.

RESULTS

The results showed a higher agreement for the Apple Watch (mean deviation QT: 6.85%; QT interval corrected for heart rate using Fridericia formula [QTcF]: 7.43%) than Kardia Mobile (mean deviation QT: 9.53%; QTcF: 9.78%) even if both tend to underestimate QT and QTcF intervals. For Kardia Mobile, the QT and QTcF intervals correlated significantly with the gold standard (r=0.857 and r=0.727; P<.001). CCC corresponded to an almost complete heuristic agreement for the QT interval (0.835), whereas the QTcF interval was in the range of strong agreement (0.682). Further, for the Apple Watch, Pearson correlations were highly significant and in the range of a large effect (r=0.793 and r=0.649; P<.001). CCC corresponded to a strong heuristic agreement for both the QT (0.779) and QTcF (0.615) intervals. A small negative correlation between the measurement error and increasing heart rate could be found of each the devices and the reference.

CONCLUSIONS

Smart technology seems to be a promising and reliable approach for nonclinical health monitoring. Further research is needed to broaden the evidence regarding its validity and usability in different target groups.

摘要

背景

迄今为止,12导联心电图(ECG)是临床心脏病诊断的金标准。随着技术的进步,越来越多用于记录、可视化和评估身体表现以及健康数据的智能手机应用程序和小工具可供使用。尽管这种新的智能技术具有创新性且节省时间和成本,但对其诊断准确性和可靠性的了解却较少。

目的

本研究旨在比较在实验室条件下,Kardia Mobile应用程序和Apple Watch 4的移动单导联心电图测量结果与12导联金标准心电图在健康成年人中的一致性。此外,评估设备的测量误差是否会随着心率的增加而增大。

方法

本研究设计为前瞻性准实验单样本测量,未进行抽样随机化。总共记录了81名参与者(平均年龄24.89岁,标准差8.58岁;n = 58,72%为男性)静息时的心电图,并进行了统计分析。绘制Bland-Altman图以直观展示测量差异。为分析单导联心电图与12导联心电图之间的一致性,计算了Pearson相关系数(r)和Lin一致性相关系数(CCC)。

结果

结果显示,Apple Watch的一致性更高(QT平均偏差:6.85%;使用弗里德里西亚公式校正心率后的QT间期[QTcF]:7.43%),高于Kardia Mobile(QT平均偏差:9.53%;QTcF:9.78%),尽管两者都倾向于低估QT和QTcF间期。对于Kardia Mobile,QT和QTcF间期与金标准显著相关(r = 0.857和r = 0.727;P <.001)。CCC对应于QT间期几乎完全的启发式一致性(0.835),而QTcF间期处于强一致性范围内(0.682)。此外,对于Apple Watch,Pearson相关性高度显著且处于大效应范围内(r = 0.793和r = 0.649;P <.001)。CCC对应于QT(0.779)和QTcF(0.615)间期的强启发式一致性。在每种设备与参考之间,测量误差与心率增加之间存在小的负相关。

结论

智能技术似乎是用于非临床健康监测的一种有前景且可靠的方法。需要进一步研究以扩大关于其在不同目标群体中的有效性和可用性的证据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4215/10704323/5b360ef28e96/cardio_v7i1e50701_fig1.jpg

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