Internet of Things (IoT) Based Patient Fall Prediction and Monitoring System

Devin Heng, Ethan Santos, Timothy Kheang, Kevin Nguyen, Hariharan Duraisamy, S. Raju, K. George
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引用次数: 1

Abstract

A large portion of death from an external cause in a hospital setting or care facility is caused by patient getting injured or hurt by falling down due to either disability or medication or by accident. A fall could lead to sustaining severe injuries and fatalities in some rare cases. It is highly unfortunate to get a call from the hospital stating that their family member has been injured by falling down. Elderly people are prone to fall more when compared to others and are also more likely to be fatal. In case of a fall, first aid should be provided immediately so that the fall does not cause fatal consequences. There are very few existing hospitals that can treat elderly people with intensive care and be proactive in tending to the patients. There are also limited technology that can help with detecting the fall. In most cases they turn out to be tardy as there would already have been consequences from the fall. In order to overcome this scenario, we may need special devices and gadgets. Instead of fall detection, determining the fall before it occurs and preventing it, will reduce the cost of treatment, the repercussions involved from the fall and also not make the fall lethal. This paper suggests the techniques of fall prevention that can abate the fall significantly in advance.
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基于物联网(IoT)的患者跌倒预测和监测系统
在医院环境或护理机构中,外因死亡的很大一部分是由于病人因残疾或药物或意外事故而受伤或摔倒造成的。在极少数情况下,跌倒可能导致持续严重伤害和死亡。接到医院的电话,说他们的家人摔倒受伤了,这是非常不幸的。与其他人相比,老年人更容易摔倒,也更容易致命。在跌倒的情况下,应立即提供急救,以免造成致命的后果。很少有现有的医院能够对老年人进行重症监护,并积极照顾病人。也有有限的技术可以帮助检测跌倒。在大多数情况下,他们被证明是迟到的,因为已经有了跌倒的后果。为了克服这种情况,我们可能需要特殊的设备和小工具。而不是检测跌倒,在跌倒发生之前确定并预防它,将减少治疗费用,跌倒所涉及的后果,也不会使跌倒致命。本文提出了预防跌倒的技术,可以明显地提前减少跌倒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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