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手腕佩戴设备上机器学习连续脉搏率算法的多中心评估

Multicenter Evaluation of Machine-Learning Continuous Pulse Rate Algorithm on Wrist-Worn Device.

作者信息

Chen Weixuan, Cordero Rafael, Lever Taylor Jessie, Pangallo Domenico R, Picard Rosalind W, Cruz Marisa, Regalia Giulia

机构信息

Empatica Inc., Cambridge, MA, USA.

Empatica Srl, Milan, Italy.

出版信息

Digit Biomark. 2024 Dec 12;8(1):218-228. doi: 10.1159/000542615. eCollection 2024 Jan-Dec.

Abstract

INTRODUCTION

Though wrist-worn photoplethysmography (PPG) sensors play an important role in long-term and continuous heart rhythm monitoring, signals measured at the wrist are contaminated by more intense motion artifacts compared to other body locations. Machine learning (ML)-based algorithms can improve long-term pulse rate (PR) tracking but are associated with more stringent regulatory requirements when intended for clinical use. This study aimed to evaluate the accuracy of a digital health technology using wrist-worn PPG sensors and an ML-based algorithm to measure PR continuously.

METHODS

Volunteers were enrolled in three independent clinical trials and concurrently monitored with the investigational device and FDA-cleared electrocardiography (ECG) devices during supervised protocols representative of real-life activities. The primary acceptance threshold was an accuracy root-mean-square (ARMS) ≤3 beats per minute (bpm) or 5 bpm under no-motion and motion conditions, respectively. Bias, mean absolute error (MAE), mean absolute percentage error (MAPE), limits of agreement (LoA), and Pearson and Lin's concordance correlation coefficients (⍴ and CCC) were also computed. Subgroup and outlier analyses were conducted to examine the effect of site, skin tone, age, sex, body mass index (BMI), and health status on PR accuracy.

RESULTS

Collectively, 16,915 paired observations between the device and the reference ECG were analyzed from 157 subjects (male: 49.04%, age mean: 43 years, age range: 19-83 years, BMI mean: 26.4, BMI range: 17.5-52, Fitzpatrick class V-IV: 22.9%, cardiovascular condition: 24%). The PR output attained an accuracy of 1.67 bpm under no-motion ( = 5,621 min) and 4.39 bpm under motion ( = 11,294 min), satisfying the acceptance thresholds. Bias and LoA (lower, upper LoA) were -0.09 (-3.36, 3.17) bpm under no-motion and 0.51 (-8.05, 9.06) bpm under motion. MAE was 0.6 bpm in no-motion and 1.77 bpm in motion, and MAPE was 0.86% in no-motion and 2.05% in motion, with ⍴ and CCC >0.98 in both conditions. ARMS values met the clinical acceptance threshold in all relevant subgroups at each clinical site separately, excluding male subjects under motion conditions (ARMS = 5.41 bpm), with more frequent and larger outliers due to stronger forearm contractions. However, these mostly occurred in isolation and, therefore would not impact the clinical utility or usability of the device for its intended use of retrospective review and trend analysis (⍴ and CCC >0.97 and MAPE = 2.61%).

CONCLUSION

The analytical validation conducted in this study demonstrated clinical-grade accuracy and generalizability of ML-based continuous PR estimations across a full range of physical motions, health conditions, and demographic variables known to confound PPG signals, paving the way for device usage by populations most likely to benefit from continuous PR monitoring.

摘要

引言

尽管腕部佩戴的光电容积脉搏波描记法(PPG)传感器在长期连续心律监测中发挥着重要作用,但与身体其他部位相比,在腕部测量的信号受到更强烈的运动伪影干扰。基于机器学习(ML)的算法可以改善长期心率(PR)跟踪,但用于临床时会面临更严格的监管要求。本研究旨在评估一种使用腕部佩戴的PPG传感器和基于ML的算法来连续测量PR的数字健康技术的准确性。

方法

志愿者参加了三项独立的临床试验,并在代表现实生活活动的监督方案期间,同时使用研究设备和经美国食品药品监督管理局(FDA)批准的心电图(ECG)设备进行监测。主要接受阈值是在静止和运动条件下,准确性均方根(ARMS)分别≤3次/分钟(bpm)或5 bpm。还计算了偏差、平均绝对误差(MAE)、平均绝对百分比误差(MAPE)、一致性界限(LoA)以及Pearson和Lin的一致性相关系数(⍴和CCC)。进行亚组和离群值分析,以检查部位、肤色、年龄、性别、体重指数(BMI)和健康状况对PR准确性的影响。

结果

总共分析了157名受试者(男性:49.04%,平均年龄:43岁,年龄范围:19 - 83岁,平均BMI:26.4,BMI范围:17.5 - 52,Fitzpatrick分类V - IV:22.9%,心血管疾病:24%)的设备与参考ECG之间的16,915对观测值。PR输出在静止状态下(= 5,621分钟)的准确性为1.67 bpm,在运动状态下(= 11,294分钟)为4.39 bpm,满足接受阈值。偏差和LoA(下限、上限LoA)在静止状态下为 - 0.09(-3.36, 3.17)bpm,在运动状态下为0.51(-8.05, 9.06)bpm。MAE在静止状态下为0.6 bpm,在运动状态下为1.77 bpm,MAPE在静止状态下为0.86%,在运动状态下为2.05%,两种状态下⍴和CCC均>0.98。在每个临床部位的所有相关亚组中,ARMS值均达到临床接受阈值,但运动状态下的男性受试者除外(ARMS = 5.41 bpm),由于前臂收缩更强,离群值更频繁且更大。然而,这些大多是孤立出现的,因此不会影响该设备用于回顾性审查和趋势分析的预期用途的临床效用或可用性(⍴和CCC>0.97且MAPE = 2.61%)。

结论

本研究进行的分析验证表明,基于ML的连续PR估计在已知会混淆PPG信号的各种身体运动、健康状况和人口统计学变量范围内具有临床级准确性和可推广性,为最有可能从连续PR监测中受益的人群使用该设备铺平了道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/98ed/11637493/b8f388a21daa/dib-2024-0008-0001-542615_F01.jpg

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