养老院的机器人:帮助护士检测和预防跌倒。

Advances in geriatric medicine and research Pub Date : 2024-01-01 Epub Date: 2025-01-03 DOI:10.20900/agmr20250001
Yuval Malinsky, Lynn McNicoll, Stefan Gravenstein
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引用次数: 0

摘要

跌倒是老年人发病和死亡的主要原因,尤其是在养老院的居民中。老年痴呆患者比无痴呆患者更容易跌倒。此外,一半的养老院居民有中度到重度的认知障碍。虽然只有不到5%的老年人住在养老院,但他们占这一年龄组跌倒死亡人数的20%。此外,78%跌倒的老年人需要帮助才能从地板上站起来。跌倒的后果,如长时间躺在地板上,会对健康产生严重和长期的影响。养老院工作人员的严重短缺,特别是在夜班、夜班和周末轮班期间,可能会延迟对跌倒的发现和反应。有各种各样的系统用于检测跌倒并提醒工作人员,包括使用可穿戴设备、环境传感器和摄像头(视觉)以及融合系统的系统。它们各有优缺点。在nia资助的SBIR拨款中,我们正在开发和测试一种摔倒检测和预防系统的可行性,该系统解决了以前系统的缺点。我们的方法是部署一种自主导航机器人,该机器人配备了红外摄像头和机器学习软件,旨在检测摔倒的风险,并自行摔倒。机器人将在夜班和夜班期间巡视住客房间,并提醒工作人员,让他们评估机器人摄像机显示的跌倒风险或跌倒警报,并确定住客是否确实已经跌倒或有跌倒的风险,并采取适当的行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robots in Nursing Homes: Helping Nurses Detect and Prevent Falls.

Falls are a leading cause of morbidity and mortality in older adults, especially among nursing home residents. Falls occur more commonly among older adults with dementia than among those without dementia. Moreover, half of nursing home residents have moderate to severe cognitive impairment. While less than 5% of older adults live in nursing homes, they account for 20% of deaths from falls in this age group. In addition, 78% of older adults who fall need help in getting up from the floor. The consequences of falling, such as prolonged lying on the floor, can produce severe and prolonged health effects. The acute shortage of staff in nursing homes, especially during evening, night and weekend shifts, can delay the detection and response to falls. There are various systems designed to detect falls and alert staff, including those utilizing wearable devices, ambience sensors and cameras (vision) as well as fusion systems. They each have their advantages and drawbacks. In this NIA-funded SBIR grant, we are developing and testing the feasibility of a fall detection and prevention system that addresses the drawbacks of previous systems. We anchor our approach on the deployment of an autonomously navigating robot equipped with a mounted infrared camera and machine learning software designed to detect the risk of falls and falls themselves. The robot will patrol resident rooms during evening and night shifts and alert the staff, allowing them to evaluate the fall risk or fall alert presented by the robot video camera and determine whether indeed a resident has fallen or is at risk of falling, and take appropriate action.

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