Suppr超能文献

心脏手术后使用可穿戴设备通过机器学习诊断心房颤动:算法开发研究

Diagnosis of Atrial Fibrillation Using Machine Learning With Wearable Devices After Cardiac Surgery: Algorithm Development Study.

作者信息

Hiraoka Daisuke, Inui Tomohiko, Kawakami Eiryo, Oya Megumi, Tsuji Ayumu, Honma Koya, Kawasaki Yohei, Ozawa Yoshihito, Shiko Yuki, Ueda Hideki, Kohno Hiroki, Matsuura Kaoru, Watanabe Michiko, Yakita Yasunori, Matsumiya Goro

机构信息

Department of Cardiovascular Surgery, University of Chiba, Chiba, Japan.

Department of Artificial Intelligence Medicine, Graduate School of Medicine, University of Chiba, Chiba, Japan.

出版信息

JMIR Form Res. 2022 Aug 1;6(8):e35396. doi: 10.2196/35396.

Abstract

BACKGROUND

Some attempts have been made to detect atrial fibrillation (AF) with a wearable device equipped with photoelectric volumetric pulse wave technology, and it is expected to be applied under real clinical conditions.

OBJECTIVE

This study is the second part of a 2-phase study aimed at developing a method for immediate detection of paroxysmal AF, using a wearable device with built-in photoplethysmography (PPG). The objective of this study is to develop an algorithm to immediately diagnose AF by an Apple Watch equipped with a PPG sensor that is worn by patients undergoing cardiac surgery and to use machine learning on the pulse data output from the device.

METHODS

A total of 80 patients who underwent cardiac surgery at a single institution between June 2020 and March 2021 were monitored for postoperative AF, using a telemetry-monitored electrocardiogram (ECG) and an Apple Watch. AF was diagnosed by qualified physicians from telemetry-monitored ECGs and 12-lead ECGs; a diagnostic algorithm was developed using machine learning on the pulse rate data output from the Apple Watch.

RESULTS

One of the 80 patients was excluded from the analysis due to redness caused by wearing the Apple Watch. Of 79 patients, 27 (34.2%) developed AF, and 199 events of AF including brief AF were observed. Of them, 18 events of AF lasting longer than 1 hour were observed, and cross-correlation analysis showed that pulse rate measured by Apple Watch was strongly correlated (cross-correlation functions [CCF]: 0.6-0.8) with 8 events and very strongly correlated (CCF>0.8) with 3 events. The diagnostic accuracy by machine learning was 0.9416 (sensitivity 0.909 and specificity 0.838 at the point closest to the top left) for the area under the receiver operating characteristic curve.

CONCLUSIONS

We were able to safely monitor pulse rate in patients who wore an Apple Watch after cardiac surgery. Although the pulse rate measured by the PPG sensor does not follow the heart rate recorded by telemetry-monitored ECGs in some parts, which may reduce the accuracy of AF diagnosis by machine learning, we have shown the possibility of clinical application of using only the pulse rate collected by the PPG sensor for the early detection of AF.

摘要

背景

已经有人尝试使用配备光电容积脉搏波技术的可穿戴设备来检测房颤(AF),并且有望在实际临床条件下应用。

目的

本研究是一项两阶段研究的第二部分,旨在开发一种使用内置光电容积脉搏波描记法(PPG)的可穿戴设备即时检测阵发性房颤的方法。本研究的目的是开发一种算法,通过配备PPG传感器的苹果手表对接受心脏手术的患者进行即时房颤诊断,并对该设备输出的脉搏数据进行机器学习。

方法

在2020年6月至2021年3月期间,对在单一机构接受心脏手术的80名患者进行术后房颤监测,使用遥测监测心电图(ECG)和苹果手表。由合格的医生根据遥测监测心电图和12导联心电图诊断房颤;利用苹果手表输出的脉搏率数据通过机器学习开发诊断算法。

结果

80名患者中有1名因佩戴苹果手表导致皮肤发红而被排除在分析之外。在79名患者中,27名(34.2%)发生了房颤,共观察到199次房颤事件,包括短暂性房颤。其中,观察到18次持续时间超过1小时的房颤事件,互相关分析显示,苹果手表测量的脉搏率与8次事件强相关(互相关函数[CCF]:0.6 - 0.8),与3次事件极强相关(CCF>0.8)。在接收器操作特征曲线下面积方面,机器学习的诊断准确率为0.9416(在最接近左上角的点处,灵敏度为0.909,特异性为0.838)。

结论

我们能够安全地监测心脏手术后佩戴苹果手表患者的脉搏率。虽然PPG传感器测量的脉搏率在某些方面与遥测监测心电图记录的心率不一致,这可能会降低机器学习诊断房颤的准确性,但我们已经展示了仅使用PPG传感器收集的脉搏率进行房颤早期检测的临床应用可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e0ab/9379796/947ac6f6617b/formative_v6i8e35396_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验