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Evaluation of falls risk in community-dwelling older adults using body-worn sensors

机译:使用穿戴式传感器评估社区居住老年人的跌倒风险

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Background: Falls are the most common cause of injury and hospitalization and one of the principal causes of death and disability in older adults worldwide. This study aimed to determine if a method based on body-worn sensor data can prospectively predict falls in community-dwelling older adults, and to compare its falls prediction performance to two standard methods on the same data set. Methods: Data were acquired using body-worn sensors, mounted on the left and right shanks, from 226 community-dwelling older adults (mean age 71.5 ± 6.7 years, 164 female) to quantify gait and lower limb movement while performing the 'Timed Up and Go' (TUG) test in a geriatric research clinic. Participants were contacted by telephone 2 years following their initial assessment to determine if they had fallen. These outcome data were used to create statistical models to predict falls. Results: Results obtained through cross-validation yielded a mean classification accuracy of 79.69% (mean 95% CI: 77.09-82.34) in prospectively identifying participants that fell during the follow-up period. Results were significantly (p < 0.0001) more accurate than those obtained for falls risk estimation using two standard measures of falls risk (manually timed TUG and the Berg balance score, which yielded mean classification accuracies of 59.43% (95% CI: 58.07-60.84) and 64.30% (95% CI: 62.56-66.09), respectively). Conclusion: Results suggest that the quantification of movement during the TUG test using body-worn sensors could lead to a robust method for assessing future falls risk.
机译:背景:跌倒是全世界老年人受伤和住院的最常见原因,也是死亡和致残的主要原因之一。这项研究的目的是确定基于穿戴式传感器数据的方法是否可以前瞻性预测居住在社区的老年人的跌倒,并将其跌倒预测性能与同一数据集上的两种标准方法进行比较。方法:使用安装在左右柄上的身体磨损传感器从226位社区居住的老年人(平均年龄71.5±6.7岁,164位女性)中获取数据,以量化步态和下肢运动,同时执行“定时”老年研究诊所进行Go'(TUG)测试。在对参与者进行初次评估后2年,通过电话与他们联系,以确定他们是否摔倒了。这些结果数据用于创建统计模型以预测跌倒。结果:通过交叉验证获得的结果在前瞻性识别随访期间跌落的受试者中,平均分类准确率达到79.69%(平均95%CI:77.09-82.34)。结果比使用跌倒风险的两种标准度量(手动定时的TUG和Berg平衡评分)获得的跌倒风险估计结果准确(p <0.0001),其平均分类精度为59.43%(95%CI:58.07-60.84) )和64.30%(95%CI:62.56-66.09)。结论:结果表明,在TUG测试中使用人体传感器对运动进行量化可能导致评估未来跌倒风险的可靠方法。

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