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从黑匣子中读取:现实世界跌倒后休息和恢复期间传感器告诉了我们什么。

Reading from the Black Box: What Sensors Tell Us about Resting and Recovery after Real-World Falls.

机构信息

Department of Clinical Gerontology, Robert-Bosch Hospital, Stuttgart, Germany.

出版信息

Gerontology. 2018;64(1):90-95. doi: 10.1159/000478092. Epub 2017 Aug 22.

Abstract

BACKGROUND

Lying on the floor for a long time after falls, regardless of whether an injury results, remains an unsolved health care problem. In order to develop efficient and acceptable fall detection and reaction approaches, it is relevant to improve the understanding of the circumstances and the characteristics of post-impact responses and the return or failure to return to pre-fall activities. Falls are seldom observed by others; until now, the knowledge about movement kinematics during falls and following impact have been anecdotal.

OBJECTIVE

This study aimed to analyse characteristics of the on-ground and recovery phases after real-world falls. The aim was to compare self-recovered falls (defined as returns to standing from the floor) and non-recovered falls with long lies.

METHODS AND PARTICIPANTS

Data from subjects in different settings and of different populations with high fall risk were included. Real-world falls collected by inertial sensors worn on the lower back were taken from the FARSEEING database if reliable information was available from fall reports and sensor signals. Trunk pitch angle and acceleration were analysed to describe different patterns of recovery movements while standing up from the floor after the impact of a fall.

RESULTS

Falls with successful recovery, where an upright posture was regained, were different from non-recovered falls in terms of resting duration (median 10.5 vs. 34.5 s, p = 0.045). A resting duration longer than 24.5 s (area under the curve = 0.796) after the fall impact was a predictor for the inability to recover to standing. Successful recovery to standing showed lower cumulative angular pitch movement than attempted recovery in fallers that did not return to a standing position (median = 76°, interquartile range 24-170° vs. median = 308°, interquartile range 30-1,209°, p = 0.06).

CONCLUSION

Fall signals with and without successful returns to standing showed different patterns during the phase on the ground. Characteristics of real-world falls provided through inertial sensors are relevant to improve the classification and the sensing of falls. The findings are also important for redesigning emergency response processes after falls in order to better support individuals in case of an unrecovered fall. This is crucial for preventing long lies and other fall-related incidents that require an automated fall alarm.

摘要

背景

摔倒后长时间躺在地上,无论是否受伤,仍然是一个未解决的医疗保健问题。为了开发高效且可接受的跌倒检测和反应方法,提高对跌倒后环境和冲击后反应特征以及恢复或无法恢复到跌倒前活动的理解是很重要的。跌倒很少被他人观察到;直到现在,人们对跌倒过程中的运动动力学以及跌倒后的运动恢复情况的了解也只是一些传闻。

目的

本研究旨在分析真实世界跌倒后在地面上和恢复阶段的特征。目的是比较自我恢复的跌倒(定义为从地面恢复站立)和长时间躺着的非恢复性跌倒。

方法和参与者

本研究纳入了来自不同环境和具有高跌倒风险的不同人群的受试者数据。如果从跌倒报告和传感器信号中获得可靠信息,则从 FARSEEING 数据库中选取惯性传感器佩戴在背部采集到的真实世界跌倒数据。分析躯干俯仰角度和加速度,以描述跌倒后从地面站起来时不同的恢复运动模式。

结果

成功恢复站立的跌倒与无法恢复站立的跌倒在静止时间上存在差异(中位数 10.5 秒与 34.5 秒,p = 0.045)。跌倒后静止时间超过 24.5 秒(曲线下面积 = 0.796)是无法恢复站立的预测因素。与未能恢复站立的跌倒者相比,成功恢复站立的跌倒者,累积俯仰角度运动较小(中位数 = 76°,四分位间距 24°-170° vs. 中位数 = 308°,四分位间距 30°-1209°,p = 0.06)。

结论

具有和不具有成功恢复站立的跌倒信号在地面阶段表现出不同的模式。通过惯性传感器提供的真实世界跌倒特征与跌倒分类和检测相关。这些发现对于重新设计跌倒后的应急响应过程也很重要,以便在无法恢复站立的情况下更好地支持个人。这对于防止长时间躺着和其他需要自动跌倒报警的跌倒相关事件至关重要。

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