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通过无线传感器鞋垫系统对社区居住老年人跌倒风险评估指标进行同步验证:一项试点研究。

Concurrent validation of an index to estimate fall risk in community dwelling seniors through a wireless sensor insole system: A pilot study.

作者信息

Di Rosa Mirko, Hausdorff Jeff M, Stara Vera, Rossi Lorena, Glynn Liam, Casey Monica, Burkard Stefan, Cherubini Antonio

机构信息

Scientific Direction, National Institute of Health and Science on Aging - I.N.R.C.A., Ancona, Italy.

Center for Study of Movement, Cognition and Mobility, Department of Neurology, Tel Aviv Sourasky Medical Center; Rush Alzheimer's Disease Center and Department of Orthopaedic Surgery, Rush University Medical Center; Sagol School of Neuroscience and Department of Physical Therapy, Sackler Faculty of Medicine, Tel Aviv University.

出版信息

Gait Posture. 2017 Jun;55:6-11. doi: 10.1016/j.gaitpost.2017.03.037. Epub 2017 Apr 4.

Abstract

Falls are a major health problem for older adults with immediate effects, such as fractures and head injuries, and longer term effects including fear of falling, loss of independence, and disability. The goals of the WIISEL project were to develop an unobtrusive, self-learning and wearable system aimed at assessing gait impairments and fall risk of older adults in the home setting; assessing activity and mobility in daily living conditions; identifying decline in mobility performance and detecting falls in the home setting. The WIISEL system was based on a pair of electronic insoles, able to transfer data to a commercially available smartphone, which was used to wirelessly collect data in real time from the insoles and transfer it to a backend computer server via mobile internet connection and then onwards to a gait analysis tool. Risk of falls was calculated by the system using a novel Fall Risk Index (FRI) based on multiple gait parameters and gait pattern recognition. The system was tested by twenty-nine older users and data collected by the insoles were compared with standardized functional tests with a concurrent validity approach. The results showed that the FRI captures the risk of falls with accuracy that is similar to that of conventional performance-based tests of fall risk. These preliminary findings support the idea that theWIISEL system can be a useful research tool and may have clinical utility for long-term monitoring of fall risk at home and in the community setting.

摘要

跌倒对于老年人来说是一个重大的健康问题,会产生诸如骨折和头部受伤等直接影响,以及包括害怕跌倒、失去独立性和残疾等长期影响。WIISEL项目的目标是开发一种不引人注意、自我学习且可穿戴的系统,旨在评估老年人在家中环境下的步态损伤和跌倒风险;评估日常生活条件下的活动和行动能力;识别行动能力的下降并检测在家中环境下的跌倒情况。WIISEL系统基于一双电子鞋垫,能够将数据传输到市售智能手机,该手机用于通过移动互联网连接实时无线收集来自鞋垫的数据,并将其传输到后端计算机服务器,然后再传输到步态分析工具。系统使用基于多个步态参数和步态模式识别的新型跌倒风险指数(FRI)来计算跌倒风险。该系统由29名老年用户进行了测试,并采用同时效度方法将鞋垫收集的数据与标准化功能测试进行了比较。结果表明,FRI捕捉跌倒风险的准确性与传统的基于表现的跌倒风险测试相似。这些初步发现支持了这样一种观点,即WIISEL系统可以成为一种有用的研究工具,并且可能在家庭和社区环境中对跌倒风险的长期监测具有临床应用价值。

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