Heterogeneous sensor network for the measurement of dementia progression and well-being: preliminary study

N. Morresi, P. Koowattanataworn, G. Amabili, Chih-Chun Lin, Yeh-Liang Hsu, R. Bevilacqua, H. Nap, G. M. Revel, S. Casaccia
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引用次数: 1

Abstract

This paper presents the development of a sensor network for measuring the well-being of people with dementia (PwD) and assessing the progression of the disease throughout the overall course of the dementia. To gain an insight into the overall well-being of a PwD, sensors can provide information about multiple aspects, such as the level of social, cognitive and physical activities and abilities. The proposed measurement system is minimally invasive and can be adapted to different built environments and allows to monitor human behavior under multiple aspects such as lifestyle monitoring, sleep analysis, social interaction, and human localization. The core technology of the chosen sensor network is made of a GPS tracker, a lifestyle monitoring sensor network, a social tablet and a smart mattress for sleep monitoring. These sensors collect data that built a heterogeneous dataset, that can be used in combination with artificial intelligence (AI) algorithms that can be trained to predict PwD well-being and extract more useful information, such as the progression of the dementia disease. The proposed solution is intended to reduce and support the workload of formal carers, since the progression of the dementia decreases PwD well-being, increases the caregiver burden and possibly decreases the quality of care.
测量痴呆进展和幸福感的异构传感器网络:初步研究
本文介绍了一种传感器网络的发展,用于测量痴呆症患者(PwD)的福祉,并在痴呆症的整个过程中评估疾病的进展。为了深入了解残疾人士的整体健康状况,传感器可以提供多个方面的信息,例如社交、认知和身体活动和能力的水平。所提出的测量系统是微创的,可以适应不同的建筑环境,并允许在多个方面监测人类行为,如生活方式监测、睡眠分析、社会互动和人类定位。所选传感器网络的核心技术由GPS跟踪器、生活方式监测传感器网络、社交平板电脑和用于睡眠监测的智能床垫组成。这些传感器收集的数据建立了一个异构数据集,可以与人工智能(AI)算法结合使用,人工智能(AI)算法可以被训练来预测PwD的健康状况,并提取更有用的信息,比如痴呆症的进展。拟议的解决方案旨在减少和支持正规护理人员的工作量,因为痴呆症的进展会降低残疾人的福祉,增加护理人员的负担,并可能降低护理质量。
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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