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NONCADO: A System to Prevent Falls by Encouraging Healthy Habits in Elderly People

机译:NONCADO:通过鼓励老年人的健康习惯预防跌倒的系统

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Falls in the elderly are a known problem, leading to hospitalization, impaired life quality, and social costs. Falls are associated to multiple risk factors, related to the subject's health, lifestyle, and living environment. Living alone makes it difficult to detect a patient's decline, which increases the fall risk. In this paper, we present NONCADO, a project funded by the Lombardy Region (Italy), aimed at developing a system for preventing falls in the elderly living alone, by integrating data from a network of sensors (both wearable and environmental). The collected data are analyzed by a decision support system (DSS) that exploits advanced temporal data analysis techniques to detect behaviors known to increase the individual risk (e.g. moving within the house with inadequate lighting, or performing not enough physical activity). A daily report listing the detected risky behaviors is produced and delivered through a mobile app. Since we address long-term monitoring, it's important to detect as well the changes in a subject's habits that may increase fall risk. Such changes are summarized in a weekly report. A preliminary feasibility evaluation of the system was performed during a 2-weeks pilot study involving 16 patients treated at the Casa di Cura Privata del Policlinico hospital, in Milan, Italy. Patients were asked to perform 5 activities, and the system's ability to correctly detect them was assessed. The study results were encouraging, as the system reached an overall accuracy of 90%.
机译:老年人跌倒是一个已知问题,会导致住院,生活质量受损和社会成本下降。跌倒与多种风险因素相关,与受试者的健康,生活方式和居住环境有关。独自生活使病人难以察觉下降,从而增加了跌倒的风险。在本文中,我们介绍了由伦巴第大区(意大利)资助的NONCADO项目,该项目旨在通过集成传感器网络(可穿戴和环境传感器)的数据,开发一种预防独居老人跌倒的系统。决策支持系统(DSS)对收集到的数据进行分析,决策支持系统(DSS)利用先进的时间数据分析技术来检测已知会增加个人风险的行为(例如,在光线不足的情况下在房屋内移动或进行不充分的体育锻炼)。列出并检测到的危险行为的每日报告通过移动应用程序生成并传递。由于我们着眼于长期监控,因此还必须检测到可能会增加跌倒风险的受试者习惯变化,这一点很重要。此类更改在每周报告中进行了总结。在为期2周的试验研究中,对该系统进行了初步的可行性评估,该试验涉及16名在意大利米兰的Casa di Cura Privata del Policlinico医院接受治疗的患者。要求患者进行5次活动,并评估系统正确检测到他们的能力。研究结果令人鼓舞,因为该系统的总体准确度达到90%。

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