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使用可穿戴传感器的工具化连线测验:用于确定身体虚弱表型的应用。

Instrumented Trail-Making Task: Application of Wearable Sensor to Determine Physical Frailty Phenotypes.

机构信息

Interdisciplinary Consortium on Advanced Motion Performance (iCAMP), Michael E. DeBakey Department of Surgery, Baylor College of Medicine, Houston, Texas, USA.

VA HSR&D, Center for Innovations in Quality, Effectiveness and Safety, Michael E. DeBakey VA Medical Center, Houston, Texas, USA.

出版信息

Gerontology. 2019;65(2):186-197. doi: 10.1159/000493263. Epub 2018 Oct 25.

Abstract

BACKGROUND

The physical frailty assessment tools that are currently available are often time consuming to use with limited feasibility.

OBJECTIVE

To address these limitations, an instrumented trail-making task (iTMT) platform was developed using wearable technology to automate quantification of frailty phenotypes without the need of a frailty walking test.

METHODS

Sixty-one older adults (age = 72.8 ± 9.9 years, body mass index [BMI] = 27.4 ± 4.9 kg/m2) were recruited. According to the Fried Frailty Criteria, 39% of participants were determined as robust and 61% as non-robust (pre-frail or frail). In addition, 17 young subjects (age = 29.0 ± 7.2 years, BMI = 26.2 ± 4.6 kg/m2) were recruited to determine the healthy benchmark. The iTMT included reaching 5 indexed circles (including numbers 1-to-3 and letters A&B placed in random orders), which virtually appeared on a computer-screen, by rotating one's ankle-joint while standing. By using an ankle-worn inertial sensor, 3D ankle-rotation was estimated and mapped into navigation of a computer-cursor in real-time (100 Hz), allowing subjects to navigate the computer-cursor to perform the iTMT. The ankle-sensor was also used for quantifying ankle-rotation velocity (representing slowness), its decline during the test (representing exhaustion), and ankle-velocity variability (representing movement inefficiency), as well as the power (representing weakness) generated during the test. Comparative assessments included Fried frailty phenotypes and gait assessment.

RESULTS

All subjects were able to complete the iTMT, with an average completion time of 125 ± 85 s. The iTMT-derived parameters were able to identify the presence and absence of slowness, exhaustion, weakness, and inactivity phenotypes (Cohen's d effect size = 0.90-1.40). The iTMT Velocity was significantly different between groups (d = 0.62-1.47). Significant correlation was observed between the iTMT Velocity and gait speed (r = 0.684 p < 0.001). The iTMT-derived parameters and age together enabled significant distinguishing of non-robust cases with area under curve of 0.834, sensitivity of 83%, and specificity of 67%.

CONCLUSION

This study demonstrated a non-gait-based wearable platform to objectively quantify frailty phenotypes and determine physical frailty, using a quick and practical test. This platform may address the hurdles of conventional physical frailty phenotypes methods by replacing the conventional frailty walking test with an automated and objective process that reduces the time of assessment and is more practical for those with mobility limitations.

摘要

背景

目前可用的身体虚弱评估工具使用起来往往很耗时,可行性有限。

目的

为了解决这些局限性,我们开发了一种使用可穿戴技术的仪器化连线测试(iTMT)平台,无需进行虚弱行走测试即可自动量化虚弱表型。

方法

招募了 61 名老年人(年龄=72.8±9.9 岁,体重指数 [BMI]=27.4±4.9kg/m2)。根据弗里德虚弱标准,39%的参与者被确定为健壮,61%为非健壮(虚弱前期或虚弱)。此外,还招募了 17 名年轻受试者(年龄=29.0±7.2 岁,BMI=26.2±4.6kg/m2)来确定健康基准。iTMT 包括通过站立时旋转踝关节,触及 5 个索引圆(包括随机排列的数字 1-3 和字母 A&B)。通过佩戴在脚踝上的惯性传感器,估计 3D 踝关节旋转,并实时映射到计算机光标导航(100Hz),允许受试者导航计算机光标以执行 iTMT。脚踝传感器还用于量化踝关节旋转速度(代表缓慢)、测试过程中的下降速度(代表疲劳)、踝关节速度变异性(代表运动效率低下)以及测试过程中产生的力量(代表虚弱)。比较评估包括弗里德虚弱表型和步态评估。

结果

所有受试者均能够完成 iTMT,平均完成时间为 125±85s。iTMT 衍生参数能够识别出缓慢、疲劳、虚弱和不活动表型的存在和缺失(Cohen's d 效应量=0.90-1.40)。iTMT 速度在组间存在显著差异(d=0.62-1.47)。iTMT 速度与步态速度之间存在显著相关性(r=0.684,p<0.001)。iTMT 衍生参数和年龄共同使非健壮病例的曲线下面积达到 0.834,灵敏度为 83%,特异性为 67%。

结论

本研究展示了一种基于非步态的可穿戴平台,可使用快速实用的测试客观地量化虚弱表型并确定身体虚弱程度。该平台通过用自动化和客观的过程取代传统的虚弱行走测试,减少评估时间,并且对那些行动受限的人更实用,从而解决了传统身体虚弱表型方法的障碍。

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