基于心率的住院老年人运动和活动量表(MAS)的初步可行性和发展。

Vincent Weng-Jy Cheung,Michaël Libotte,Patrick Viet-Quoc Nguyen,Thien-Tuong Minh Vu,Jean-Philippe Émond,Ariel Mundo Ortiz,Philippe Desmarais,Quoc Dinh Nguyen
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引用次数: 0

摘要

活动能力是住院老年人健康状况的重要组成部分。由于缺乏自动化和标准化的测量,在急性和亚急性环境中采用常规活动追踪受到阻碍。智能手表技术和机器学习的进步为使用心率(HR)和HR变异性数据来量化移动性和活动量提供了机会。方法在这项初步研究中,我们招募了30名年龄在65岁及以上的老年人,在三级保健老年病房开发(n = 8)和验证(n = 30)自动化移动和活动量表(MAS)。基于智能手表人力资源数据的12个特征被用于随机森林模型,以预测5种活动水平(0 =睡眠到4 =步行至少中等努力或步行20分钟)。我们检查了平衡和活动能力分层评估(HABAM)、步态速度和功能状态的并发效度,以及虚弱和多重疾病的判别效度。我们评估了患者和护理人员佩戴手表的可接受性。结果参与者平均(SD)年龄为86岁(8岁),女性18人(60%),平均随访8.3(5.2)天。平均(SD) HABAM评分为36(18),步态速度为0.53 (0.26)m/s。在整个队列中,平均(SD) MAS评分为1.2(1.0),一天中最活跃的10个小时为2.1(0.7)。MAS评分与HABAM (r= 0.43 [95%CI= 0.07,0.69])和功能状态(r=-0.31 [95%CI=-0.60,0.06])有中度相关性,但与步态速度无相关性(r= 0.02 [95%CI=-0.39,0.42])。MAS评分与虚弱或多病无关联。佩戴智能手表是可以接受的。结论基于智能手表的HR数据可以量化住院老年人每小时的移动性和活动量,促进自动化和实时监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary Feasibility and Development of a Heart Rate-Based Mobility and Activity Scale for Hospitalized Older Adults (MAS).
BACKGROUND Mobility is a critical component of health status in hospitalized older adults. Adoption of routine mobility tracking in acute and subacute settings is hampered by lack of automated and standardized measurements. Advances in smartwatch technology and machine learning provide the opportunity to use heart rate (HR) and HR variability data to quantify mobility and activity. METHODS In this pilot study, we recruited 30 older adults aged 65 years and older in a tertiary care geriatric ward to develop (n = 8) and validate (n = 30) the automated Mobility and Activity Scale (MAS). Twelve features based on smartwatch HR data were used in a random forest model to predict 5 activity levels (0 = sleep to 4 = walking with at least a moderate effort or > 20 minutes). We examined concurrent validity with Hierarchical Assessment of Balance and Mobility (HABAM), gait speed, and functional status, as well as discriminant validity with frailty and multimorbidity. We assessed acceptability of watch wearing for patients and care staff. RESULTS Participants' mean (SD) age was 86 years (8), 18 (60%) were female, and mean follow-up was 8.3 (5.2) days. Mean (SD) HABAM score was 36 (18) and gait speed was 0.53 (0.26) m/s. Across the cohort, mean (SD) MAS score was 1.2 (1.0) overall and 2.1 (0.7) for 10 most active hours of the day. MAS scores were moderately correlated with HABAM (r = 0.43 [95%CI = 0.07,0.69]) and functional status (r=-0.31 [95%CI=-0.60,0.06]), but not with gait speed (r = 0.02 [95%CI=-0.39,0.42]). MAS scores had no association with frailty or multimorbidity. Smartwatch wearing was acceptable. CONCLUSIONS Smartwatch-derived HR data may quantity hourly mobility and activity of hospitalized older adults and facilitate automated and real-time monitoring.
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