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一种无电池无线可穿戴传感器系统在识别健康老年人床和椅子离位情况方面的有效性。

Effectiveness of a Batteryless and Wireless Wearable Sensor System for Identifying Bed and Chair Exits in Healthy Older People.

作者信息

Torres Roberto Luis Shinmoto, Visvanathan Renuka, Hoskins Stephen, van den Hengel Anton, Ranasinghe Damith C

机构信息

Auto-ID Lab, The University of Adelaide, North Terrace, Adelaide SA 5005, Australia.

Aged & Extended Care Services, The Queen Elizabeth Hospital, Woodville South SA 5011, Australia.

出版信息

Sensors (Basel). 2016 Apr 15;16(4):546. doi: 10.3390/s16040546.

Abstract

Aging populations are increasing worldwide and strategies to minimize the impact of falls on older people need to be examined. Falls in hospitals are common and current hospital technological implementations use localized sensors on beds and chairs to alert caregivers of unsupervised patient ambulations; however, such systems have high false alarm rates. We investigate the recognition of bed and chair exits in real-time using a wireless wearable sensor worn by healthy older volunteers. Fourteen healthy older participants joined in supervised trials. They wore a batteryless, lightweight and wireless sensor over their attire and performed a set of broadly scripted activities. We developed a movement monitoring approach for the recognition of bed and chair exits based on a machine learning activity predictor. We investigated the effectiveness of our approach in generating bed and chair exit alerts in two possible clinical deployments (Room 1 and Room 2). The system obtained recall results above 93% (Room 2) and 94% (Room 1) for bed and chair exits, respectively. Precision was >78% and 67%, respectively, while F-score was >84% and 77% for bed and chair exits, respectively. This system has potential for real-time monitoring but further research in the final target population of older people is necessary.

摘要

全球老龄化人口正在增加,因此需要研究将跌倒对老年人的影响降至最低的策略。医院内的跌倒很常见,目前医院的技术应用是在病床和椅子上使用局部传感器,以提醒护理人员注意无人监管的患者走动情况;然而,这类系统误报率很高。我们利用健康老年志愿者佩戴的无线可穿戴传感器对床和椅子的离开情况进行实时识别。14名健康老年参与者参加了监督试验。他们在衣服外面佩戴了一个无电池、轻便的无线传感器,并进行了一系列大致设定好的活动。我们基于机器学习活动预测器开发了一种用于识别床和椅子离开情况的运动监测方法。我们研究了我们的方法在两种可能的临床部署(1号房间和2号房间)中生成床和椅子离开警报的有效性。该系统在1号房间和2号房间中,对床和椅子离开情况的召回率分别高于93%(2号房间)和94%(1号房间)。精确率分别大于78%和67%,而F值分别大于84%和77%。该系统具有实时监测的潜力,但有必要在老年人这一最终目标人群中开展进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd8e/4851060/ca48ea47d4af/sensors-16-00546-g001.jpg

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