基于辅助传感器的技术驱动自我管理,在早期认知障碍患者中建立复原力

S. Casaccia, R. Bevilacqua, L. Scalise, G. M. Revel, A. Astell, S. Spinsante, L. Rossi
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引用次数: 8

摘要

本文报道了AAL公司的RESILIEN-T项目的技术和工作计划。该项目以辅助技术为重点,旨在通过自我管理,提高认知障碍老年人(PwCI)的自主性、参与社会生活和技能,这些老年人往往被视为研究的“对象”,而不是“合作伙伴”。本研究探讨了现有的ICT解决方案,以提高认知障碍不同阶段PwCl的自我管理能力。研究人员分析了减少疾病进展的传感器、设备和应用程序。为了提高传感器的能力,创新的数据管理,即人工智能和机器学习算法,被认为是从数据中提取重要信息并优化传感器网络。此外,还研究了使最终用户参与发展的方法,以提高最后的产出。该研究提出了一个模块化和集成的平台,用于PwCI自我管理各种活动,包括营养,体育活动,社交生活,认知训练。选择提供一个开放的API来集成来自不同供应商的可穿戴设备和生活方式监控系统,从而提供可定制的模块化产品。考虑到功能衰退是正常衰老过程的一部分,随着认知能力的下降,要个性化三个层次的模块化架构以提高监测的准确性可能具有挑战性。
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Assistive sensor-based technology driven self-management for building resilience among people with early stage cognitive impairment
This paper reports the technologies and workplan of the AAL RESILIEN-T project. Focused on assistive technologies, RESILIEN-T aims to improve, through self-management, the autonomy, participation in social life, and skills, of older Persons with Cognitive Impairment (PwCI) who are too often considered as “objects” of research, rather than “partners”. The study investigates existing ICT solutions to improve the self-management ability of PwCl at different stages of cognitive impairment. Sensors, devices and apps to reduce the progression of the disease are analyzed. To increase sensor capability, innovative data management, i.e. Artificial Intelligence and Machine Learning algorithms, are considered to extract significant information from the data and optimize the sensor network. Moreover, approaches to involve end-users in the development are also investigated to enhance the final outputs. The study proposes a modular and integrated platform for PwCI to self-manage various activities including nutrition, physical activities, social life, cognitive training. The choice of offering an open API to integrate wearable devices and lifestyle monitoring systems from different suppliers makes available a customable and modular product. Considering that functional decline is part of the normal aging process, it might be challenging to individuate three levels of modular architecture to increase the accuracy of the monitoring with the decline of the cognitive capabilities.
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