Department of Biomedical Engineering and Mechanics, Virginia Tech, Blacksburg, VA, United States; Bone and Joint Institute at Hartford Hospital, Hartford, CT, United States.
Department of Biomedical Engineering and Mechanics, Virginia Tech, Blacksburg, VA, United States; Department of Orthopaedic Surgery, Virginia Tech Carilion School of Medicine, Roanoke, VA, United States.
Gait Posture. 2021 Jun;87:59-64. doi: 10.1016/j.gaitpost.2021.04.017. Epub 2021 Apr 18.
Previous studies have demonstrated differences in gait speed and ground reaction forces (GRF) based on age as well as sex during lab-based testing. With advancements in wearable technology, it may be possible to assess differences in loading parameters in non-lab settings using portable data collection methods.
The purpose of this study is to determine if wearable sensors (loadsol®) are valid for assessing peak force, impulse and loading rate (LR) in older adults and determine if the insole can detect sex and age differences in these parameters during walking.
Twenty young (22.2 ± 2.9 years) and 23 older adults (68.1 ± 5.8 years) walked at a self-selected speed on a flat, inclined and declined instrumented treadmill (randomized order). Force data was simultaneously collected from the treadmill (1440 Hz) and insoles (100 Hz) during each condition. To assess validity, an ICC(3,k) and a Bland-Altman plot was generated for each variable and condition in the older adults. To determine age and gender differences, an ANCOVA (covary: walking speed) was completed for each variable.
All ICCs were greater than 0.88 for vGRF, impulse and loading rate. The Bland-Altman plots report a bias of less than 2% for vGRF, -8 to -15 % for impulse and -5 to 2% for loading rate. The ANCOVA results indicate that the loadsol® has the ability to detect differences between age groups in peak vGRF in the flat, declined and inclined conditions which are in agreement with the differences the force plates detected. Similarly, the loadsol® and force plates agreed with age-based differences in the flat and inclined condition, but the loadsol® missed the declined LR difference.
The ability to collect data in nontraditional settings has the potential to broaden the research questions investigated, explore clinical applications and increase the generalizability.
基于实验室测试,先前的研究已经证明了年龄和性别对步态速度和地面反力(GRF)的差异。随着可穿戴技术的进步,使用便携式数据采集方法,在非实验室环境中评估加载参数的差异可能成为可能。
本研究的目的是确定可穿戴传感器(loadsol®)是否可用于评估老年人的峰值力、冲量和加载率(LR),并确定鞋垫是否可以在行走过程中检测到这些参数的性别和年龄差异。
20 名年轻(22.2 ± 2.9 岁)和 23 名老年人(68.1 ± 5.8 岁)在平坦、倾斜和倾斜的仪器化跑步机上以自选择速度行走(随机顺序)。在每个条件下,力数据同时从跑步机(1440 Hz)和鞋垫(100 Hz)收集。为了评估有效性,为每个变量和条件在老年人中生成了 ICC(3,k)和 Bland-Altman 图。为了确定年龄和性别差异,针对每个变量完成了协方差分析(协变量:行走速度)。
所有 ICC 对于 vGRF、冲量和加载率均大于 0.88。Bland-Altman 图报告 vGRF 的偏差小于 2%,冲量的偏差为-8 至-15%,加载率的偏差为-5 至 2%。ANCOVA 结果表明,loadsol®能够检测到平坦、倾斜和倾斜条件下的年龄组之间的峰值 vGRF 差异,这与力板检测到的差异一致。同样,loadsol®和力板与基于年龄的平坦和倾斜条件的差异一致,但 loadsol®错过了倾斜的 LR 差异。
在非传统环境中收集数据的能力有可能拓宽研究问题的范围,探索临床应用并提高普遍性。