单个可穿戴设备的心率恢复和步态动力学预测衰弱的能力:准实验试点研究。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2024-10-03 DOI:10.2196/58110
Reshma Aziz Merchant, Bernard Loke, Yiong Huak Chan
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引用次数: 0

摘要

背景:衰老是导致跌倒、虚弱和残疾的风险因素。可穿戴设备在人群中筛查身体表现和虚弱程度的实用性是一个新兴的研究领域。迄今为止,能同时测量虚弱程度和体能表现的设备数量有限:本研究旨在评估一种连续数字监测可穿戴设备的准确性和有效性,该设备结合了步态力学和心率恢复测量,可用于检测有跌倒风险的老年人的虚弱程度、不良体能表现和跌倒风险:这是对 156 名年龄≥60 岁、在过去 12 个月中跌倒或接近跌倒的社区老年人进行的一项子研究,这些老年人是为预防跌倒干预研究而招募的。在最初的参与者中,有 22 人同意在脚踝上佩戴可穿戴设备。研究人员发放了一份访谈问卷,其中包括人口统计学、认知、虚弱(FRAIL)、身体功能问题以及社区老年人跌倒风险(FROP-Com)。身体机能包括步速、定时起立行走(TUG)和短期身体机能测试(SPPB)。步态分析仪用于测量步态力学和步伐(FRAIL-功能性:疲劳、阻力和有氧),心率分析仪用于测量心率恢复(FRAIL-非功能性:减肥和慢性病):参与者的平均年龄为 74.6 岁。在 22 名参与者中,9 人(41%)体格健壮,10 人(46%)体弱多病,3 人(14%)体弱多病。此外,22 人中有 8 人(36%)在过去一年中至少摔倒过一次。参与者的平均步速为 0.8 米/秒,平均 SPPB 得分为 8.9 分,平均 TUG 时间为 13.8 秒。步态分析仪对功能领域的敏感性、特异性和曲线下面积(AUC)分别为:SPPB(平衡和步态)1.00、0.84 和 0.92;TUG 时间 0.38、0.89 和 0.64。FROP-Com分别为0.45、0.91和0.68;步态速度分别为0.60、1.00和0.80;TUG分别为1.00、0.94和0.97。心率分析仪对虚弱的非功能性成分显示出更高的有效性,灵敏度为 1.00,特异性为 0.73,AUC 为 0.83:步态和心率分析仪与 FRAIL 量表的功能成分、步态速度和 FROP-Com 之间的一致性非常显著。此外,心率分析仪与 FRAIL 量表的非功能部分之间也有明显的一致性。步态和心率分析仪可用于社区老年人体弱和跌倒的筛查测试,但还需要进一步改进和在人群水平上进行验证。
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Ability of Heart Rate Recovery and Gait Kinetics in a Single Wearable to Predict Frailty: Quasiexperimental Pilot Study.

Background: Aging is a risk factor for falls, frailty, and disability. The utility of wearables to screen for physical performance and frailty at the population level is an emerging research area. To date, there is a limited number of devices that can measure frailty and physical performance simultaneously.

Objective: The aim of this study is to evaluate the accuracy and validity of a continuous digital monitoring wearable device incorporating gait mechanics and heart rate recovery measurements for detecting frailty, poor physical performance, and falls risk in older adults at risk of falls.

Methods: This is a substudy of 156 community-dwelling older adults ≥60 years old with falls or near falls in the past 12 months who were recruited for a fall prevention intervention study. Of the original participants, 22 participants agreed to wear wearables on their ankles. An interview questionnaire involving demographics, cognition, frailty (FRAIL), and physical function questions as well as the Falls Risk for Older People in the Community (FROP-Com) was administered. Physical performance comprised gait speed, timed up and go (TUG), and the Short Physical Performance Battery (SPPB) test. A gait analyzer was used to measure gait mechanics and steps (FRAIL-functional: fatigue, resistance, and aerobic), and a heart rate analyzer was used to measure heart rate recovery (FRAIL-nonfunctional: weight loss and chronic illness).

Results: The participants' mean age was 74.6 years. Of the 22 participants, 9 (41%) were robust, 10 (46%) were prefrail, and 3 (14%) were frail. In addition, 8 of 22 (36%) had at least one fall in the past year. Participants had a mean gait speed of 0.8 m/s, a mean SPPB score of 8.9, and mean TUG time of 13.8 seconds. The sensitivity, specificity, and area under the curve (AUC) for the gait analyzer against the functional domains were 1.00, 0.84, and 0.92, respectively, for SPPB (balance and gait); 0.38, 0.89, and 0.64, respectively, for FRAIL-functional; 0.45, 0.91, and 0.68, respectively, for FROP-Com; 0.60, 1.00, and 0.80, respectively, for gait speed; and 1.00, 0.94, and 0.97, respectively, for TUG. The heart rate analyzer demonstrated superior validity for the nonfunctional components of frailty, with a sensitivity of 1.00, specificity of 0.73, and AUC of 0.83.

Conclusions: Agreement between the gait and heart rate analyzers and the functional components of the FRAIL scale, gait speed, and FROP-Com was significant. In addition, there was significant agreement between the heart rate analyzer and the nonfunctional components of the FRAIL scale. The gait and heart rate analyzers could be used in a screening test for frailty and falls in community-dwelling older adults but require further improvement and validation at the population level.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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