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Designing an Internet-of-Things (IoT) and sensor-based in-home monitoring system for assisting diabetes patients: iterative learning from two case studies

机译:设计物联网和基于传感器的家庭监控系统以协助糖尿病患者:两个案例研究的迭代学习

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The ageing of the global population is creating a crisis in chronic disease management. In the USA, 29 million people (or 9.3% of the population) suffer from the chronic disease of diabetes; according to the WHO, globally around 200 million people are diabetic. Left unchecked, diabetes can lead to acute and long-term complications and ultimately death. Diabetes prevalence tends to be the highest among those aged 65 and older (nearly 20.6%), a population which often lacks the cognitive resources to deal with the daily self-management regimens. In this paper, we discuss the design and implementation of an Internet-of-Things (IoT) and wireless sensor system which patients use in their own homes to capture daily activity, an important component in diabetes management. Following Fogg's 2009 persuasion theory, we mine the activity data and provide motivational messages to the subjects with the intention of changing their activity and dietary behaviour. We introduce a novel idea called "persuasive sensing" and report results from two home implementations that show exciting promise. With the captured home monitoring data, we also develop analytic models that can predict blood glucose levels for the next day with an accuracy of 94%. We conclude with lessons learned from these two home case studies and explore design principles for creating novel IoT systems.
机译:全球人口的老龄化正在引发慢性病管理危机。在美国,有2900万人(占人口的9.3%)患有糖尿病的慢性病。根据世界卫生组织的数据,全球约有2亿糖尿病患者。如果不加以控制,糖尿病会导致急性和长期并发症,并最终导致死亡。在65岁及以上的人群中,糖尿病患病率最高(将近20.6%),该人群通常缺乏应对日常自我管理方案的认知资源。在本文中,我们讨论了物联网(IoT)和无线传感器系统的设计和实现,患者可以在家中使用它来捕获日常活动,这是糖尿病管理中的重要组成部分。遵循Fogg的2009年说服理论,我们挖掘活动数据并向受试者提供激励性信息,以期改变其活动和饮食行为。我们介绍了一种新颖的想法,即“说服感测”,并报告了两个令人振奋的前景的家庭实施结果。利用捕获的家庭监控数据,我们还开发了可以预测第二天血糖水平的分析模型,其准确性为94%。最后,我们将从这两个家庭案例研究中吸取教训,并探讨创建新颖的物联网系统的设计原则。

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