Programa de Pós-Graduação Interunidades em Bioengenharia - Universidade de São Paulo, São Carlos, SP 13566-590, Brazil; DGero - Universidade Federal de São Carlos, São Carlos, SP, Brazil.
DGero - Universidade Federal de São Carlos, São Carlos, SP, Brazil.
Exp Gerontol. 2021 Jan;143:111139. doi: 10.1016/j.exger.2020.111139. Epub 2020 Nov 13.
Acceleration sensors are a viable option for monitoring gait patterns and its application on monitoring falls and risk of falling. However the literature still lacks prospective studies to investigate such risk before the occurrence of falls.
To investigate features extracted from accelerometer signals with the purpose of predicting future falls in individuals with no recent history of falls.
In this study we investigate the risk of fall in active and healthy community-dwelling living older persons with no recent history of falls, using a single accelerometer and variants of the Timed Up and Go (TUG) test. A prospective study was conducted with 74 healthy non-fallers older persons. After collecting acceleration data from the participants at the baseline, the occurrence of falls (outcome) was monitored quarterly during one year. A set of frequency features were extracted from the signal and their ability to predict falls was evaluated.
The best individual feature result shows an accuracy of 0.75, sensitivity of 0.71 and specificity of 0.76. A fusion of the three best features increases the sensitivity to 0.86. On the other hand, the cut-off points of the TUG seconds, often used to assess fall risk, did not demonstrate adequate sensitivity.
The results confirms previous evidence that accelerometer features can better estimate fall risk, and support potential applications that try to infer falls risk in less restricted scenarios, even in a sample stratified by age and gender composed of active and healthy community-dwelling living older persons.
加速度传感器是监测步态模式的一种可行选择,其在监测跌倒和跌倒风险方面也有应用。然而,文献中仍然缺乏前瞻性研究来调查跌倒发生前的这种风险。
研究从加速度计信号中提取的特征,目的是预测无近期跌倒史的个体未来跌倒的风险。
本研究使用单个加速度计和计时起立行走(TUG)测试的变体,调查无近期跌倒史的活跃且健康的社区居住老年人跌倒的风险。对 74 名健康无近期跌倒史的老年人进行了前瞻性研究。在基线时从参与者处收集加速度数据后,在一年期间每季度监测跌倒(结局)的发生情况。从信号中提取了一组频率特征,并评估其预测跌倒的能力。
最佳个体特征的结果显示准确率为 0.75、灵敏度为 0.71 和特异性为 0.76。三个最佳特征的融合将灵敏度提高到 0.86。另一方面,常用于评估跌倒风险的 TUG 秒的截止值并没有表现出足够的灵敏度。
研究结果证实了先前的证据,即加速度计特征可以更好地估计跌倒风险,并支持试图在限制较少的情况下推断跌倒风险的潜在应用,即使是在由活跃且健康的社区居住老年人组成的按年龄和性别分层的样本中也是如此。