Interdisciplinary Consortium on Advanced Motion Performance (iCAMP), Department of Surgery, College of Medicine, University of Arizona, Tucson, AZ, USA.
Gerontology. 2017;63(5):479-487. doi: 10.1159/000460292. Epub 2017 Mar 11.
Impairment of physical function is a major indicator of frailty. Functional performance tests have been shown to be useful for identification of frailty in older adults. However, these tests are often not translatable into unsupervised and remote monitoring of frailty status at home and/or community settings.
In this study, we explored daily postural transition quantified using a chest-worn wearable technology to identify frailty in community-dwelling older adults.
Spontaneous daily physical activity was monitored over 24 h in 120 community-dwelling elderly (age: 78 ± 8 years) using an unobtrusive wearable sensor (PAMSys™, BioSensics LLC, Watertown, MA, USA). Participants were classified as non-frail and pre-frail/frail using Fried's criteria. A validated software package was used to identify body postures and postural transition between each independent postural activity such as sit-to-stand, stand-to-sit, stand-to-walk, and walk-to-stand. The transition from walking to sitting was further classified as quick sitting and cautious sitting based on presence/absence of a standing posture pause between sitting and walking. A general linear model univariate test was used for between-group comparison. Pearson's correlation was used to determine the association between sensor-derived parameters and age. Logistic regression model was used to identify independent predictors of frailty.
According to Fried's criteria, 63% of participants were pre-frail/frail. The total number of postural transitions, stand-to-walk, and walk-to-stand were, respectively, 25.2, 30.2, and 30.6% lower in the pre-frail/frail group when compared to the non-frail group (p < 0.05, Cohen's d = 0.73-0.79). Furthermore, the ratio of cautious sitting was significantly higher by 6.2% in pre-frail/frail compared to non-frail (p = 0.025, Cohen's d = 0.22). Total number of postural transitions and the ratio of cautious sitting also showed significant negative and positive correlations with age, respectively (r = -0.51 and 0.29, p < 0.05). After applying a logistic regression model, among tested parameters, walk-to-stand (odds ratio [OR] = 0.997 p = 0.013), quick sitting (OR = 1.036, p = 0.05), and age (OR = 1.073, p = 0.016) were recognized as independent variables to identify frailty status.
This study demonstrated that daily number of specific postural transitions such as walk-to-stand and quick sitting could be used for monitoring frailty status by unsupervised monitoring of daily physical activity. Further study is warranted to explore whether tracking the daily number of specific postural transitions is also sensitive to track change in the status of frailty over time.
身体功能障碍是衰弱的主要指标。功能表现测试已被证明可用于识别老年人的衰弱。然而,这些测试通常不能转化为在家中和/或社区环境中对衰弱状态进行无人监督和远程监测。
本研究探索了使用胸部佩戴式可穿戴技术量化的日常姿势转换,以识别社区居住的老年人的衰弱。
使用无干扰的可穿戴传感器(PAMSys™,BioSensics LLC,沃特敦,MA,美国)监测 120 名社区居住的老年人(年龄:78±8 岁)的 24 小时自发日常体力活动。使用 Fried 的标准将参与者分为非虚弱和虚弱/虚弱。使用经过验证的软件包识别身体姿势和每个独立姿势活动(例如坐立、站立-坐下、站立-行走和行走-站立)之间的姿势转换。从行走转换为坐姿时,进一步根据坐姿和行走之间是否存在站立姿势停顿将坐姿转换分为快速坐姿和谨慎坐姿。使用单变量测试对组间比较进行了一般线性模型。使用 Pearson 相关性确定传感器衍生参数与年龄之间的关联。使用逻辑回归模型确定虚弱的独立预测因子。
根据 Fried 的标准,63%的参与者为虚弱/虚弱。与非虚弱组相比,虚弱/虚弱组的总姿势转换次数、站立-行走和行走-站立分别低 25.2%、30.2%和 30.6%(p<0.05,Cohen's d=0.73-0.79)。此外,与非虚弱组相比,虚弱/虚弱组谨慎坐姿的比例显著高出 6.2%(p=0.025,Cohen's d=0.22)。总姿势转换次数和谨慎坐姿的比例也与年龄呈显著负相关和正相关(r=-0.51 和 0.29,p<0.05)。应用逻辑回归模型后,在测试的参数中,行走-站立(比值比[OR] = 0.997,p=0.013)、快速坐姿(OR=1.036,p=0.05)和年龄(OR=1.073,p=0.016)被认为是识别虚弱状态的独立变量。
本研究表明,通过无人监督的日常体力活动监测,可以使用日常特定姿势转换(如行走-站立和快速坐姿)的数量来监测虚弱状态。需要进一步研究以探讨跟踪特定姿势转换的日常次数是否也能敏感地跟踪随时间推移的虚弱状态的变化。