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基于视觉的与痴呆患者跌倒相关的步态特征评估。

Vision-Based Assessment of Gait Features Associated With Falls in People With Dementia.

机构信息

Toronto Rehabilitation Institute, University Health Network, Ontario, Canada.

Vector Institute for Artificial Intelligence, Toronto, Ontario, Canada.

出版信息

J Gerontol A Biol Sci Med Sci. 2020 May 22;75(6):1148-1153. doi: 10.1093/gerona/glz187.

Abstract

BACKGROUND

Gait impairments contribute to falls in people with dementia. In this study, we used a vision-based system to record episodes of walking over a 2-week period as participants moved naturally around their environment, and from these calculated spatiotemporal, stability, symmetry, and acceleration gait features. The aim of this study was to determine whether features of gait extracted from a vision-based system are associated with falls, and which of these features are most strongly associated with falling.

METHODS

Fifty-two people with dementia admitted to a specialized dementia unit participated in this study. Thirty different features describing baseline gait were extracted from Kinect recordings of natural gait over a 2-week period. Baseline clinical and demographic measures were collected, and falls were tracked throughout the participants' admission.

RESULTS

A total of 1,744 gait episodes were recorded (mean 33.5 ± 23.0 per participant) over a 2-week baseline period. There were a total of 78 falls during the study period (range 0-10). In single variable analyses, the estimated lateral margin of stability, step width, and step time variability were significantly associated with the number of falls during admission. In a multivariate model controlling for clinical and demographic variables, the estimated lateral margin of stability (p = .01) was remained associated with number of falls.

CONCLUSIONS

Information about gait can be extracted from vision-based recordings of natural walking. In particular, the lateral margin of stability, a measure of lateral gait stability, is an important marker of short-term falls risk.

摘要

背景

步态障碍可导致痴呆患者跌倒。本研究中,我们使用基于视觉的系统在 2 周的时间内记录参与者在自然环境中行走的片段,并从中计算出时空、稳定性、对称性和加速度步态特征。本研究旨在确定从基于视觉的系统中提取的步态特征是否与跌倒有关,以及哪些特征与跌倒的关联性最强。

方法

52 名被诊断为痴呆的患者参与了这项研究。在 2 周的基线期内,从 Kinect 对自然行走的记录中提取了 30 种不同的描述基线步态的特征。收集了基线临床和人口统计学指标,并在参与者住院期间跟踪跌倒情况。

结果

在 2 周的基线期内,共记录了 1744 个步态片段(平均每个参与者 33.5 ± 23.0)。研究期间共有 78 例跌倒(0-10 例)。在单变量分析中,估计的横向稳定性边缘、步宽和步时变异性与住院期间的跌倒次数显著相关。在控制临床和人口统计学变量的多变量模型中,估计的横向稳定性边缘(p =.01)与跌倒次数仍然相关。

结论

可以从自然行走的基于视觉的记录中提取有关步态的信息。特别是,侧向步态稳定性的衡量指标——侧向稳定性边缘,是短期跌倒风险的重要标志物。

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